{"id":1179,"date":"2022-07-01T18:02:09","date_gmt":"2022-07-01T18:02:09","guid":{"rendered":"https:\/\/www.um.org\/umap2022\/?page_id=1179"},"modified":"2022-07-01T19:50:13","modified_gmt":"2022-07-01T19:50:13","slug":"acm-opentoc-adjunct-proceedings","status":"publish","type":"page","link":"https:\/\/www.um.org\/umap2022\/acm-opentoc-adjunct-proceedings\/","title":{"rendered":"ACM OpenToc Adjunct Proceedings"},"content":{"rendered":"\n
\u00a0<\/p>\n Recommender systems can produce item recommendations tailored to user preferences and assist user decision making in several real-world applications. Context-aware recommender systems can be built and developed to adapt the recommendations to different contextual situations, since user preferences may vary from contexts to contexts (e.g., time, location, companion, etc.). Recently, the deep learning and neural network techniques have been applied to help build better recommendation models. In this paper, we extend and propose a general neural contextual matrix factorization framework, evaluate and compare a family of these neural contextual matrix factorization models for context-aware recommendations. Particularly, we exploit and analyze the impact on the performance of context-aware recommendations by considering two factors \u2013 the component(s) where contexts can be fused into, and the embedding mode utilized to represent context situations.<\/p>\n<\/div>\n<\/div>\n In this paper, we present a strategy to introduce natural language preference elicitation in a virtual assistant for the movie domain. Our approach allows users to express preferences on objective movie features (e.g., actors, directors, etc.) that are extracted from a structured knowledge base, as well as on subjective features that are collected by mining movie reviews. The effectiveness of the approach was evaluated in a user study (N=103), where our strategy was integrated in a virtual assistant that acquires users\u2019 preferences expressed in form of natural language statements and generates a suitable movie recommendation. Results showed that users experience some difficulties in expressing their preferences in terms of subjective features. However, when people succeed in expressing their preferences by also using subjective properties, this generally leads to better recommendations.<\/p>\n<\/div>\n<\/div>\n Information Retrieval (IR) systems provide users with a magnitude of information. Complex information needs of users result normally in entire online search sessions that can not be reduced to a singular query. During such sessions complex search activities are executed that comprise several aspects of the users search behavior. One crucial aspect is the users reading activity. To advance towards more adaptive IR systems which recognize the desired interests, we focus on a user model designed for automatic reading detection. This might serve as a measurement for the user investment towards a particular web-page, which should correlate with its relevance. In this work, we propose an entire pipeline from data representation to model prediction. We comparatively evaluate 9 models for automatic reading detection to achieve an accuracy of 79.23% (or 20.77% error-rate). By using such models, we argue that we are able to analyze aspects of the users search behavior and to draw conclusions about their underlying search activity.<\/p>\n<\/div>\n<\/div>\n Context-aware recommender systems were proposed and built to adapt the recommendations to different context situations. With the development of deep learning based recommendation techniques, the neural network models have also been utilized to improve the quality of the context-aware recommendations. Recently, we released the DeepCARSKit library which is an open-source and deep learning based library for context-aware recommendations. It provides a unified platform for implementing and evaluating context-aware recommendation models based on neural networks. This paper provides a short summary of the DeepCARSKit library, and delivers a user guide to help better use and evaluate the library.<\/p>\n<\/div>\n<\/div>\n Due to domain-specific challenges such as short item lifetimes and continuous cold-start issues, news recommender systems rely more on content-based methods to deduce reliable user models and make personalized recommendations. Research has shown that alongside the content of an item, the way it is presented to the users also plays a critical role. In this work, we focus on the effect of incorporating expressed emotions within news articles on recommendation performance. We propose a neural news recommendation model that disentangles semantic and emotional modeling of news articles and users. While we exploit the textual content for the semantic representation, we extract and combine emotions of different information levels for the emotional representation. Offline experiments on a real-world dataset show that our approach outperforms non-emotion-aware solutions significantly. Finally, we provide a future outline, where we plan to investigate a) the online performance and b) the explainability\/explorability of our approach.<\/p>\n<\/div>\n<\/div>\n Even though the Internet and social media are usually safe and enjoyable, communication through social media also bears risks. For more than ten years, there have been concerns regarding the manipulation of public opinion through the social Web. In particular, misinformation spreading has proven effective in influencing people, their beliefs and behaviors, from swaying opinions on elections to having direct consequences on health during the COVID-19 pandemic. Most techniques in the literature focus on identifying the individual pieces of misinformation or fake news based on a set of stylistic, content-derived features, user profiles or sharing statistics. Recently, those methods have been extended to identify spreaders. However, they are not enough to effectively detect either fake content or the users spreading it. In this context, this paper presents an initial proof of concept of a deep learning model for identifying fake news spreaders in social media, focusing not only on the characteristics of the shared content but also on user interactions and the resulting content propagation tree structures. Although preliminary, an experimental evaluation over COVID-related data showed promising results, significantly outperforming other alternatives in the literature.<\/p>\n<\/div>\n<\/div>\n Recommender systems have recently been criticized for promoting bias and trapping users into filter bubbles. This phenomenon not only limits potential user interactions but also threatens the broadness of content consumption. In a music recommender, for example, this situation can limit user perspective as music allows people to develop cultural knowledge and empathy. As a fundamental characteristic of users\u2019 content consumption is its diversity, it is necessary to break the bubbles and recommend potentially relevant and diverse songs from outside the influence of such bubbles. To address this problem, we present MRecuri (Music RECommender for filter bUbble diveRsIfication), a music recommendation technique to foster the diversity and novelty of recommendations. A preliminary evaluation over Last.fm listening data showed the potential of MRecuri to increase the diversity and novelty of recommendations compared with state-of-the-art techniques.<\/p>\n<\/div>\n<\/div>\n Sport climbing has recently gained large popularity among tourists as a recreational activity. Many people are interested to climb the most beautiful rock climbing places around the world. This has pushed the creation of a large number of climbing routes, to accommodate more and more enthusiasts. However, climbers are not facilitated in their search of routes to climb with any advanced tool, especially in outdoor climbing: they are only provided with either printed or electronic guidebooks, which cannot generate recommendations based on the user\u2019s preferences. Well-tailored climbing routes recommendations have a potential interest for all the involved stakeholders: the users and the companies providing the route information in the form of websites, or guidebooks. To this end, we propose a Content-based Climbing Recommender System prototype. An initial usability study based on the Software Usability Scale (SUS) proves the first version of the prototype to be well-designed (obtained SUS score of 71.6), and the updated version of a system addressing usability problems received an excellent evaluation score (SUS score is 89.3).<\/p>\n<\/div>\n<\/div>\n This paper explores the issues of optimizing the user experience in a complex, VR-based anti-bullying educational environment. The prototype software is aimed at training early school aged children and uses natural language processing (NLP) to create a more immersive and realistic educational user experience for different gender and age groups.<\/p>\n<\/div>\n<\/div>\n We introduce a novel system for personalized recommendations to conference attendees, to highlight the papers in the program that best match the attendee\u2019s interests. To this end, we extend traditional structure-agnostic recommender system techniques through the use of deep learning, to exploit the rich semantic and topological information given by the abstracts of the papers and the citation relationship. The ultimate goal is twofold: i) to help attendees single out from a rich program the papers they most likely would like to see presented, and ii) to perform a tailored advertisement of an upcoming event to past attendees by catching their attention with specific contributions in the program of the conference.<\/p>\n<\/div>\n<\/div>\n Robots will eventually enter our daily lives and assist with a variety of tasks. Especially in the household domain, robots may become indispensable helpers by overtaking tedious tasks, e.g. keeping the place tidy. Their effectiveness and efficiency, however, depend on their ability to adapt to our needs, routines, and personal characteristics. Otherwise, they may not be accepted and trusted in our private domain. For enabling adaptation, the interaction between a human and a robot needs to be personalised. Therefore, the robot needs to collect personal information from the user. However, it is unclear how such sensitive data can be collected in an understandable way without losing a user\u2019s trust in the system. In this paper, we present a conversational approach for explicitly collecting personal user information using natural dialogue. For creating a sound interactive personalisation, we have developed an engaging dialogue strategy. In an online study, the engaging strategy was compared to a baseline dialogue strategy for interactive personalization. Overall, using dialogue for interactive personalization has generally shown positive user reception.<\/p>\n<\/div>\n<\/div>\n Deep generative models have emerged as one of the most actively researched topics in artificial intelligence. An area that draws increasing attention is the automatic generation of music, with various applications including systems that support and inspire the process of music composition. For these assistive systems, in order to be successful and accepted by users, it is imperative to give the user agency and express their personal style in the process of composition.<\/p>\n In this paper, we demonstrate ReStyle-MusicVAE, a system for human-AI co-creation in music composition. More specifically, ReStyle-MusicVAE combines the automatic melody generation and variation approach of MusicVAE and adds semantic control dimensions to further steer the process. To this end, expert-annotated melody lines created for music production are used to define stylistic anchors, which serve as semantic references for interpolation. We present an easy-to-use web app built on top of the Magenta.js JavaScript library and pre-trained MusicVAE checkpoints.<\/p>\n<\/div>\n<\/div>\n Data-driven persona generation can benefit from stakeholder inputs while offloading the complexities of high-dimensional datasets. To this end, we present Survey2Persona (S2P), an interactive web interface for real-time persona generation from survey data. The users of the web interface\u2014the designers\u2014can upload survey data and have the interface automatically generate personas. Researchers and practitioners can use S2P to explore different respondent types in their survey datasets in a privacy-preserving manner, which is akin to making the analytical journey more productive, enjoyable, and human-centered. We make the system publicly available and provide argumentation about its novelty and value for user modeling and human-computer interaction communities.<\/p>\n<\/div>\n<\/div>\n Today, online shops offer a variety of components to support users in finding suitable items, ranging from filters and recommendations to conversational advisors and natural language chatbots. All these methods differ in terms of cognitive load and interaction effort, and, in particular, in their suitability for the specific user. However, it is often difficult for users to determine which method to use to reach their goal. Moreover, as the settings are not propagated between the methods, there is a lack of support for switching components. In this paper, we study the reasons for using the different components in more detail and present an initial proposal for a multi-method approach that provides a more seamless experience, allowing users to freely and flexibly choose from all available methods at any time.<\/p>\n<\/div>\n<\/div>\n American local newspapers have been experiencing a large loss of reader retention and business within the past 15 years due to the proliferation of online news sources and social media. This has led to a disturbing trend where local journalism and local news outlets are being forced out of business often leaving whole communities without a key source of credible information. This trend has a potentially broad societal impact as these key anchors of local trust and democracy are slowly becoming extinct. Local media companies are starting to shift from an advertising-supported business model to one based on subscriptions to mitigate their financial crises. But with strong competition from a variety of online news sources, these companies need to increase user engagement by providing significant added value. Providing more personalized content in the local context may be one way that these companies can succeed in this effort. Recommender system technologies are the primary enabling mechanisms for delivering such personalized content. However, using standard machine learning models that focus on users\u2019 global preferences is not appropriate in this context because the local preferences of users exhibit some specific characteristics which do not necessarily match their long-term or global preferences in the news. The overall goal of this research is to develop predictive models that more effectively derive user engagement through automatic personalization. Effective recommender systems may be among the tools that can help reverse the current decline of interest in local news sources. Our research explores approaches to learning localized models from user interaction data with news articles, particularly in news categories where there is intense local interest and there is a significant difference between users\u2019 global and local news preferences. Specifically, we propose using such localized models in a session-based recommender system where the system can switch between users\u2019 global and local preference models automatically when warranted. We report experiments performed on a news dataset from a local newspaper show that these local models, particularly the Life-and-Culture news category, do indeed provide more accuracy and effectiveness for personalization which, in turn, may lead to more user engagement with local news content.<\/p>\n<\/div>\n<\/div>\n Recently, Twitter has become the social network of choice for sharing and spreading information to a multitude of users through posts called \u2018tweets\u2019. Users can easily re-share these posts to other users through \u2018retweets\u2019, which allow information to cascade to many more users, increasing its outreach. Clearly, being able to know the extent to which a post can be retweeted has great value in advertising, influencing and other such campaigns. In this paper we propose ViralBERT, which can be used to predict the virality of tweets using content- and user-based features. We employ a method of concatenating numerical features such as hashtags and follower numbers to tweet text, and utilise two BERT modules: one for semantic representation of the combined text and numerical features, and another module purely for sentiment analysis of text, as both the information within text and it\u2019s ability to elicit an emotional response play a part in retweet proneness. We collect a dataset of 330k tweets to train ViralBERT and validate the efficacy of our model using baselines from current studies in this field. Our experiments show that our approach outperforms these baselines, with a 13% increase in both F1 Score and Accuracy compared to the best performing baseline method. We then undergo an ablation study to investigate the importance of chosen features, finding that text sentiment and follower counts, and to a lesser extent mentions and following counts, are the strongest features for the model, and that hashtag counts are detrimental to the model.<\/p>\n<\/div>\n<\/div>\n In the communities of UMAP, RecSys, and similar venues, fairness of recommender systems has primarily been addressed from the perspective of computer science and artificial intelligence, e.g., \u00a0by devising computational bias and fairness metrics or elaborating debiasing algorithms. In contrast, we advocate taking a multiperspective and multidisciplinary viewpoint to complement this technical perspective. This involves considering the variety of stakeholders in the value chain of recommender systems as well as interweaving expertise from various disciplines, in particular, computer science, law, ethics, sociology, and psychology (e.g., \u00a0studying discrepancies between computational metrics of bias and fairness and their actual human perception, and considering the legal and regulatory context recommender systems are embedded in).<\/p>\n<\/div>\n<\/div>\n Web platforms, such as a video-on-demand services or eCommerce sites, are routinely using Recommender System (RS) to help their users in choosing which item to consume or buy. It is therefore important to understand how the exposure to recommendations can influence the users\u2019 choices and, consequently, the RS\u2019s performance. Important metrics to consider are related to the quality and distribution of the chosen items. This important research focus calls for novel evaluation approaches. A relevant and emerging line of research is based on the simulation of users\u2019 choice behaviour when exposed to recommendations. Simulation-based studies have shown to be useful tools for understanding how an RS performs and its users behave, now and in the future, under various conditions. This paper offers a broad perspective on the field and discusses the potential of simulations in unlocking certain types of analysis that are infeasible by other means. We also discuss the limitations of the current simulation studies.<\/p>\n<\/div>\n<\/div>\n The Fourth International Workshop on Adaptive and Personalized Privacy and Security (APPS 2022) aims to bring together researchers and practitioners working on diverse topics related to understanding and improving the usability of privacy and security software and systems, by applying user modeling, adaptation and personalization principles. The fourth edition of the workshop includes interdisciplinary contributions from Austria, Belgium, Cyprus, Germany, United Kingdom, and the United States of America, that introduce new and disruptive ideas, suggest novel solutions, and present research results about various aspects (theory, applications, tools) for bringing user modeling, adaptation and personalization principles into privacy and security systems. This summary gives a brief overview of APPS 2022, held both virtually and physically from Barcelona, Spain, in conjunction with the 30th ACM Conference on User Modeling, Adaptation and Personalization (ACM UMAP 2022).<\/p>\n<\/div>\n<\/div>\n Mobile devices are augmented with advanced computing and sensing capabilities. Due to mobility, they are surrounded by dynamically changing environmental conditions. The immense context information flowing from their environment has paved the way for improved user experience. As users are central to the mobile computing paradigm, context information typically contains sensitive personal data, including user location. Users may need varying levels of privacy at different places and times. Since, as human beings, we are not capable of handling continuously flowing data, it is essential to automatically configure device privacy settings across changing contexts. In this paper, we propose a Context-Adaptive and Personalized Privacy-Preserving System (CAPPPS). It adapts to the changes in location, date, and time as the user context. The system adjusts privacy parameters for mobile device location concerning user privacy requirements while using a location-based system (LBS). We adopt a differential privacy approach to perturb user locations. We evaluated the effectiveness of CAPPPS using actual user trajectories. Results show that CAPPPS is effective for providing adaptive and personalized location privacy based on privacy parameters for changing user context.<\/p>\n<\/div>\n<\/div>\n The combination of our need for efficient mobility systems coupled with cyber-physical systems has brought about the evolution of Mobility-as-a-Service (MaaS), integrating transport services to provide one-stop access through a custom interface. Our interactions with these MaaS systems lead to a surfeit of data generation and consumption. And for MaaS growth to be sustained, users\u2019 trust in the system, especially in their data privacy, needs to be addressed. In this paper, we use LINDDUN privacy analysis framework to elicit privacy requirements of MaaS systems. We show how User-Dependent Analysis, i.e. modularizing complete use cases to different usage contexts and analysing these usages, can help guide us to discern that usage\u2019s privacy requirements, which can be enacted by relevant MaaS participants.<\/p>\n<\/div>\n<\/div>\n Human-Robot Interaction (HRI) is a field of study dedicated to understanding, designing, and evaluating robotic systems for use by, or with, humans. In HRI there is a consensus about the design and implementation of robotic systems that should be able to adapt their behavior based on user actions and behavior. The robot should adapt to emotions, personalities, and it should also have a memory of past interactions with the user to become believable. This is of particular importance in the field of social robotics and social HRI. The aim of this workshop is to bring together researchers and practitioners who are working on various aspects of social robotics and adaptive interaction. The workshop leads to a multidisciplinary research agenda that will inform future research directions and hopefully, forge some research collaborations.<\/p>\n<\/div>\n<\/div>\n Endowing social robots with the ability to learn and predict the user\u2019s activities during the day is one of the main aims of research in the field of ambient assisted living. Social robots should support older adults with daily activity and, at the same time, they should contribute to emotional wellness by considering affective factors in everyday situations. The main goal of this research is to investigate whether it is possible to learn relations between the user\u2019s affective state and daily routines, made by activities, with the aid of a social robot, Pepper in this case. To this aim, we use the WoMan system able to incrementally learn daily routines and the context in which activities take place. WoMan will be used as a back-end module of the Daily Diary application running on the Pepper robot to collect data concerning daily activities and their relation to emotions and mood. Results of this phase of the research will be used to assess the validity of the approach in ambient assisted living houses for seniors to make the social robot able to provide not only proactive service assistance but also an affective empathic experience.<\/p>\n<\/div>\n<\/div>\n Recently, it has been considering robotics to face world population aging. According to the WHO, in 2050 there will be about 2.1 billion people over 60 years old worldwide causing a persistent growing need of assistance and a shortage of manpower for delivering congruous assistance. Therefore, seniors\u2019 QoL is continuously threatened. Socially Assistive Robotics proposes itself as a solution. To improve SARs acceptability, it is necessary to tailor the system’s characteristics with respect to the target needs and issues through the analysis of previous and current studies in the HRI field. Through the examination of the state of the art of social robotics in elderly care, past case studies and paper research about SARs\u2019 efficiency, it has been proposed two potential solution examples for two different scenarios, applying two different SARs: Pepper and Nao robots.<\/p>\n<\/div>\n<\/div>\n Personalization and adaptation are key aspects of designing and developing effective and acceptable social robot tutors. They allow to tailor interactions towards individual needs and preferences, improve engagement and sense of familiarity over time, and facilitate trust between the user and the robot. To foster the development of autonomous adaptive social robots, we present a tutoring framework that recognizes new or previously met pupils and adapts the training experience through feedback about real-time performance and the tailoring of exercises and interaction based on users\u2019 past encounters. The framework is suitable for multiparty scenarios, allowing for deployment in real-world tutoring contexts unfolding in groups.<\/p>\n A preliminary evaluation of the framework during pilot studies and demonstration events in yoga-based training and game scenarios showed that our framework could be adapted to different contexts and populations, including children and adolescents. The robot\u2019s ability to recognize people and personalize its behavior based on the performance of previous sessions was appreciated by participants, who reported the feeling of being followed and cared for by the robot. Overall, the framework can support autonomous robot-led training by allowing monitoring of both daily performance and improvements over multiple encounters. It also lends itself to further expansion to more complex behaviors, with the organic and modular inclusion of more advanced social capabilities, such as redirecting the robot\u2019s attention to different learners or estimating participant engagement.<\/p>\n<\/div>\n<\/div>\n In this paper we present an educational robot called Wolly, designed to engage children in an affective and social interaction. Indeed, we are now focusing on its role as an educational and affective robot capable of being controlled by coding instructions and at the same time interacting verbally and affectively with children by recognizing their emotions and remembering their interests, and adapting its behavior accordingly.<\/p>\n<\/div>\n<\/div>\n This paper describes our proposal for enriching personalized social moments and dialogues between human and robot in the context of the Sugar, Salt & Pepper laboratory. The lab focused on the use of the Pepper robot in a therapeutic context to promote autonomies and functional acquisitions in highly functioning (Asperger) children with autism. This paper is focused on a post-hoc work aimed at improving the robot’s autonomous dialogue strategies. In particular we are integrating the robot’s dialogue with a knowledge base to have the robot able to move and reason on an ontology, and thus enriching its dialogue’s strategies. For instance, the taxonomic structure of the ontology could allow Pepper to drive the focus of the conversation to related topics or to more general or specific topics, and, in general, it could improve its capability to manage the conversation and disambiguate the input from the user.<\/p>\n<\/div>\n<\/div>\n The ability to personalize behaviors is essential for a robot to develop and maintain a long-lasting bond with a user in human-oriented applications, such as a service domain. Service robots must be capable of deducing what actions would be most desirable and best serve the needs and requirements of any interacting users. However, the personalization of a service robot in real-world human-robot interaction (HRI) requires the development of sophisticated mechanisms for identifying differences within the focused group of users, creating a relative user model representation, and finally, devising the varieties of the robot\u2019s behaviors. In this work, we briefly present the multiple methodologies developed for an autonomous bartender robot to personalize its behaviors upon the customers\u2019 moods, attention behaviors, purchasing preferences, personal preferences for interaction, and previous interaction strategies. We expect that the robot would need to serve and interact with multiple customers at the time, as it usually happens in human bartending scenarios. For this reason, our robot has been endowed with the ability to engage multiple users by alternating its attention between them, and personalizing enjoyable interactions through small talk (e.g., welcoming and conversing about topics of general interest related to recent news).<\/p>\n<\/div>\n<\/div>\n Adaptive and personalized systems have become pervasive technologies, gradually playing an increasingly important role in our daily lives. Indeed, we are now used to interacting with algorithms that help us in several scenarios, ranging from services that suggest us music or movies to personal assistants able to proactively support us in complex decision-making tasks. As the importance of such technologies in our everyday lives grows, it is fundamental that the internal mechanisms that guide these algorithms are as clear as possible. The workshop aims to provide a forum for discussing problems, challenges, and innovative research approaches in this area by investigating the role of transparency and explainability in the recent methodologies for building user models or developing personalized and adaptive systems.<\/p>\n<\/div>\n<\/div>\n In this paper, we present a framework that supports providing user-specific explanations of AI systems. This is achieved by proposing a particular approach for modeling a user which enables a decision procedure to reason about how much detail to provide in an explanation. We also clarify the circumstances under which it is best not to provide an explanation at all, as one novel aspect of our design. While transparency of black box AI systems is an important aim for ethical AI, efforts to date are often one-size-fits-all. Our position is that more attention should be paid towards offering explanations that are context-specific, and our model takes an important step forward towards achieving that aim.<\/p>\n<\/div>\n<\/div>\n Recommender systems have gained widespread adoption in many web applications. Modern internet users experience daily interactions with recommender systems. Consequently, users, through these interactive experiences, have developed an inherent understanding of how recommender systems work, what their objectives are, and how the user might manipulate them. We describe this understanding as the Theory of the Recommender. In this paper, we explore the users\u2019 perception and understanding of the recommender system in an empirical study using a grounded theory methodology. To that end, we draw on the cognitive theory of mind to propose a comprehensive theoretical framework that explains the users\u2019 interpretation of the recommender system\u2019s knowledge, reasoning, motivation, beliefs and attitudes. Our findings, based on individual in-depth interviews, suggest that users possess a sophisticated understanding of the recommender system\u2019s behavior. Identifying the user\u2019s understanding is a necessary step in evaluating their impact and improving recommender systems accordingly. Finally, we discuss the potential implications of such user knowledge on recommendation performance.<\/p>\n<\/div>\n<\/div>\n In this paper, we shed light on explaining user models for transparent recommendation while considering user personal characteristics. To this end, we developed a transparent Recommendation and Interest Modeling Application (RIMA) that provides interactive, layered explanations of the user model with three levels of detail (basic, intermediate, advanced) to meet the demands of different types of end-users. We conducted a within-subject study (N=31) to investigate the relationship between personal characteristics and the explanation level of detail, and the effects of these two variables on the perception of the explainable recommender system with regard to different explanation goals. Based on the study results, we provided some suggestions to support the effective design of user model explanations for transparent recommendation.<\/p>\n<\/div>\n<\/div>\n The phenomenon of hate messages on the web is unfortunately in continuous expansion and evolution. Even if the big companies that offer their users a social network service have expressly included in their terms of services rules against hate messages, they are still produced at a huge rate. Therefore, moderators are often employed to monitor these platforms and use their critical skills to decide if the content is offensive or not. Unfortunately, this censorship process is complex and costly in terms of human resources. The system we propose in this work is a system that supports moderators by providing them a set of candidate elements to censor with annexed explanations in natural language. It will then be a task of the human operator to understand if to proceed with the censorship and eventually supply feedback to the result of the classification algorithm to extend its data set of examples and improve its future performances. The proposed system has been designed to merge information coming from data, syntactic tags and a manually annotated lexicon. The messages are then processed through deep learning approaches based on both transformer and deep neural network architecture. The output is consequently supported by an explanation in a human-like form. The model has been evaluated on three state-of-the-art datasets showing excellent effectiveness and clear and understandable explanations.<\/p>\n<\/div>\n<\/div>\n Online debates allow for large-scale participation by users with different opinions, values, and backgrounds. While this is beneficial for democratic discourse, such debates often tend to be cognitively demanding due to the high quantity and low quality of non-expert contributions. High cognitive demand, in turn, can make users vulnerable to cognitive biases such as confirmation bias, hindering well-informed attitude forming. To facilitate interaction with online debates, counter confirmation bias, and nudge users towards engagement with online debate, we propose (1) summaries of the arguments made in the debate and (2) personalized persuasive suggestions to motivate users to engage with the debate summaries. We tested the effect of four different versions of the debate display (without summary, with summary and neutral suggestion, with summary and personalized persuasive suggestion, with summary and random persuasive suggestion) on participants\u2019 attitude-opposing argument recall with a preregistered user study (N = 212). The user study results show no evidence for an effect of either the summary or the personalized persuasive suggestions on participants\u2019 attitude-opposing argument recall. Further, we did not observe confirmation bias in participants\u2019 argument recall, regardless of the debate display. We discuss these observations in light of additionally collected exploratory data, which provides some pointers towards possible causes for the lack of significant findings. Motivated by these considerations, we propose two new hypotheses and ideas for improving relevant properties of the study design for follow-up studies.<\/p>\n<\/div>\n<\/div>\n We report a diary study of the explanations for the recommendations to characterize the social features in these explanations recorded by five participants over two months. The study reveals several social explanation categories (e.g., personal opinions and personal experiences) and their relationship with user contexts (e.g., location, relevant experience) and recommender attributes (e.g., integrity, expertise) illustrated in a network diagram. Specifically, personal opinions and experiences are two prominent social explanations, mainly associated with user contexts (e.g., users\u2019 preferences and users\u2019 experiences) and several recommender attributes (e.g., politeness, benevolence, and experience). Finally, we discuss several design implications for social explanations and anticipate the value of our findings regarding designing personalized social explanations in recommender systems that aim to build rapport with users, such as conversational recommender systems.<\/p>\n<\/div>\n<\/div>\n Despite the indisputable personal and societal benefits of regular physical activity, a large portion of the population does not follow the recommended guidelines, harming their health and wellness. The World Health Organization has called upon governments, practitioners, and researchers to accelerate action to address the global prevalence of physical inactivity. To this end, an emerging wave of research in ubiquitous computing has been exploring the potential of interactive self-tracking technology in encouraging positive health behavior change. Numerous findings indicate the benefits of personalization and inclusive design regarding increasing the motivational appeal and overall effectiveness of behavior change systems, with the ultimate goal of empowering and facilitating people to achieve their goals. However, most interventions still adopt a \u201cone-size-fits-all\u201d approach to their design, assuming equal effectiveness for all system features in spite of individual and collective user differences. To this end, we analyze a corpus of 12 years of research in self-tracking technology for health behavior change, focusing on physical activity, to identify those design elements that have proven most effective in inciting desirable behavior across diverse population segments. We then provide actionable recommendations for designing and evaluating behavior change self-tracking technology based on age, gender, occupation, fitness, and health condition. Finally, we engage in a critical commentary on the diversity of the domain and discuss ethical concerns surrounding tailored interventions and directions for moving forward.<\/p>\n<\/div>\n<\/div>\n Modern societies face many challenges, one of them is the rise of affective polarization over the last 4 decades. In an attempt to understand its reasons, many researchers have questioned the role of Social Media in general, and Recommender Systems (RS) in particular, on the emergence of these extreme behaviors. Diversity in News Recommender Systems (NRS) was quickly perceived as a major issue for the preservation of a healthy democratic debate. However, after more than 15 years of research in Artificial Intelligence on the subject, the understanding of the real impact of diversity in recommendations remains limited. Through a case analysis on the well-known MIND dataset, we propose a critique of the diversity-aware recommendation and evaluation approaches, and provide some take-home messages related to the need of adapted datasets, diversity metrics and analytical methodologies.<\/p>\n<\/div>\n<\/div>\n The pursuit of algorithmic fairness requires that we think differently about the idea of the \u201cuser\u201d in personalized systems, such as recommender systems. The conventional definition of the user in such systems focuses on the receiver of recommendations, the individual to whom a particular personalization output is directed. Fairness, especially provider-side fairness, requires that we consider a broader array of system users and stakeholders, whose needs, interests and preferences may need to be modeled. In this paper, we describe a framework in which the interests of providers and other stakeholders are represented as agents. These agents participate in the production of recommendations through a two-stage social choice mechanism. This approach has the benefit of being able to represent a wide variety of fairness concepts and to extend to multiple fairness concerns.<\/p>\n<\/div>\n<\/div>\n Fairness-aware machine learning (ML) technology has been developed to remove discriminatory bias, e.g., bias on race and gender. However, there are trade-offs between the metrics of accuracy and fairness in ML models, and different stakeholders prioritize these metrics differently. Hence, to form an agreement on prioritization, workshop approaches encouraging dialogue among stakeholders have been explored. However, it is practically difficult for multiple stakeholders to have conversations at the same place and time. We examined a method of extracting the prioritization of several stakeholders regarding certain metrics using an online survey. We randomly divided 739 crowdsourced participants into 4 stakeholder groups and asked them to rank 5 randomly selected ML models in terms of their metric prioritization. Through this survey, we calculated the prioritization of metrics of each stakeholder group and whether the information on three other stakeholders affects another stakeholder\u2019s prioritization of metrics. With our method, the prioritization of each stakeholder successfully met the requirements of their role. However, metric prioritization is not affected by information on the other stakeholders. Furthermore, demographics and attitudes towards decision making scenarios affect each stakeholder\u2019s metric prioritization differently.<\/p>\n<\/div>\n<\/div>\n Full Citation in the ACM Digital Library<\/a><\/div>\n
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SESSION: Late-breaking Results and Demos<\/h2>\n
A Family of Neural Contextual Matrix Factorization Models for Context-Aware Recommendations<\/a><\/h3>\nYong Zheng, Gonzalo Florez Arias<\/div>\n
A Virtual Assistant for the Movie Domain Exploiting Natural Language Preference Elicitation Strategies<\/a><\/h3>\nAlessandro Francesco Maria Martina, Cataldo Musto, Andrea Iovine, Marco de Gemmis, Fedelucio Narducci, Giovanni Semeraro<\/div>\n
Automatic Reading Detection during Online Search Sessions<\/a><\/h3>\nJohannes Schwerdt, Andreas N\u00fcrnberger<\/div>\n
DeepCARSKit: A Demo and User Guide<\/a><\/h3>\nYong Zheng<\/div>\n
Exploring Expressed Emotions for Neural News Recommendation<\/a><\/h3>\nMete Sertkan, Julia Neidhardt<\/div>\n
Following the Trail of Fake News Spreaders in Social Media: A Deep Learning Model<\/a><\/h3>\nAntonela Tommasel, Juan Manuel Rodriguez, Filippo Menczer<\/div>\n
Haven\u2019t I just Listened to This?: Exploring Diversity in Music Recommendations<\/a><\/h3>\nAntonela Tommasel, Juan Manuel Rodriguez, Daniela Godoy<\/div>\n
Map and Content-Based Climbing Recommender System<\/a><\/h3>\nIustina Alekseevna Ivanova, Attaullah Buriro, Francesco Ricci<\/div>\n
Optimizing the User Experience in VR-based Anti-Bullying Education<\/a><\/h3>\nLubomir Ivanov<\/div>\n
Recommending Relevant Papers to Conference Participants: a Deep Learning Driven Content-based Approach<\/a><\/h3>\nFederico Rios, Paolo Rizzo, Francesco Puddu, Federico Romeo, Andrea Lentini, Giuseppe Asaro, Filippo Rescalli, Cristiana Bolchini, Paolo Cremonesi<\/div>\n
Responsible Interactive Personalisation for Human-Robot Cooperation<\/a><\/h3>\nMatthias Kraus, Viktoria Dettenhofer, Wolfgang Minker<\/div>\n
ReStyle-MusicVAE: Enhancing User Control of Deep Generative Music Models with Expert Labeled Anchors<\/a><\/h3>\nDamjan Prvulovic, Richard Vogl, Peter Knees<\/div>\n
Survey2Persona: Rendering Survey Responses as Personas<\/a><\/h3>\nJoni Salminen, Bernard Jansen, Soon-Gyo Jung<\/div>\n
Towards Multi-Method Support for Product Search and Recommending<\/a><\/h3>\nTimm Kleemann, Benedikt Loepp, J\u00fcrgen Ziegler<\/div>\n
Using Recommender Systems to Help Revitalize Local News<\/a><\/h3>\nPayam Pourashraf, Bamshad Mobasher<\/div>\n
ViralBERT: A User Focused BERT-Based Approach to Virality Prediction<\/a><\/h3>\nRikaz Rameez, Hossein A. Rahmani, Emine Yilmaz<\/div>\n
SESSION: Theory, Opinion, and Reflection<\/h2>\n
Multiperspective and Multidisciplinary Treatment of Fairness in Recommender Systems Research<\/a><\/h3>\nMarkus Schedl, Navid Rekabsaz, Elisabeth Lex, Tessa Grosz, Elisabeth Greif<\/div>\n
Simulating Users\u2019 Interactions with Recommender Systems<\/a><\/h3>\nNaieme Hazrati, Francesco Ricci<\/div>\n
SESSION: 4th International Workshop on Adaptive and Personalized Privacy and Security (APPS 2022)<\/h2>\n
APPS 2022: Fourth International Workshop on Adaptive and Personalized Privacy and Securit<\/a><\/h3>\nArgyris Constantinides, Marios Belk, Christos Fidas, Juliana Bowles, Andreas Pitsillides<\/div>\n
Context Adaptive Personalized Privacy for Location-based Systems<\/a><\/h3>\nNuray Baltaci Akhuseyinoglu, Kamil Akhuseyinoglu<\/div>\n
User Configurable Privacy Requirements Elicitation in Cyber-Physical Systems<\/a><\/h3>\nTope Omitola, Niko Tsakalakis, Gary Wills, Richard Gomer, Ben Waterson, Tom Cherret, Sophie STALLA-BOURDILLON<\/div>\n
SESSION: 3rd International Workshop on Adapted intEraction with SociAl Robots (cAESAR’22)<\/h2>\n
3rd Workshop on Adapted intEraction with SociAl Robots<\/a><\/h3>\nBerardina Nadja 0000-0002-2689-137X De Carolis, Cristina 0000-0003-0049-6213 Gena, Antonio Lieto, Silvia 0000-0002-2689-137X Rossi, Alessandra 0000-0002-1056-3398 Sciutti<\/div>\n
Ambient Assisted Living and Social Robots: Towards Learning Relations between User\u2019s Daily Routines and Mood<\/a><\/h3>\nBerardina de Carolis, Stefano Ferilli, Nicola Macchiarulo<\/div>\n
Employing Socially Assistive Robots in Elderly Care<\/a><\/h3>\nDaniel Macis, Sara Perilli, Cristina Gena<\/div>\n
Towards an HRI Tutoring Framework for Long-term Personalization and Real-time Adaptation<\/a><\/h3>\nGiulia Belgiovine, Jonas Gonzalez-Billandon, Giulio Sandini, Francesco Rea, Alessandra Sciutti<\/div>\n
Wolly: an affective and adaptive educational robot<\/a><\/h3>\nCristina Gena, Alberto Lillo, Claudio Mattutino, Enrico Mosca<\/div>\n
Ontologies and Open Data for Enriching Personalized Social Moments in Human Robot Interaction<\/a><\/h3>\nCristina Gena, Rossana Damiano, Claudio Mattutino, Alessandro Mazzei, Stefania Brighenti, Matteo Nazzario, Andrea Meirone, Camilla Quarato, Elisabetta Miraglio, Giulia Ricciardiello, Francesco Petriglia, Federica Liscio, Giuseppe Piccinni, Loredana Mazzotta, Cesare Pecone, Valeria Ricci<\/div>\n
Personalized Human-Robot Interaction with a Robot Bartender<\/a><\/h3>\nNitha Elizabeth John, Alessandra Rossi, Silvia Rossi<\/div>\n
SESSION: 3rd International Workshop on Explainable User Models and Personalized Systems (ExUM’22)<\/h2>\n
Workshop on Explainable User Models and Personalised Systems (ExUM)<\/a><\/h3>\nCataldo Musto, Amra Delic, Oana Inel, Marco Polignano, Amon Rapp, Giovanni Semeraro, J\u00fcrgen Ziegler<\/div>\n
Creating a User Model to Support User-specific Explanations of AI Systems<\/a><\/h3>\nOwen Chambers, Robin Cohen, Maura R. Grossman, Queenie Chen<\/div>\n
Does the User Have A Theory of the Recommender? A Grounded Theory Study<\/a><\/h3>\nMohammed Muheeb Ghori, Arman Dehpanah, Jonathan Gemmell, Hamed Qahri-Saremi, Bamshad Mobasher<\/div>\n
Explaining User Models with Different Levels of Detail for Transparent Recommendation: A User Study<\/a><\/h3>\nMouadh Guesmi, Mohamed Amine Chatti, Laura Vorgerd, Thao Ngo, Shoeb Joarder, Qurat Ul Ain, Arham Muslim<\/div>\n
Lexicon Enriched Hybrid Hate Speech Detection with Human-Centered Explanations<\/a><\/h3>\nMarco Polignano, Giuseppe Colavito, Cataldo Musto, Marco de Gemmis, Giovanni Semeraro<\/div>\n
Towards Healthy Engagement with Online Debates: An Investigation of Debate Summaries and Personalized Persuasive Suggestions<\/a><\/h3>\nAlisa Rieger, Qurat-Ul-Ain Shaheen, Carles Sierra, Mariet Theune, Nava Tintarev<\/div>\n
A Diary Study of Social Explanations for Recommendations in Daily Life<\/a><\/h3>\nZhirun Zhang, Yucheng Jin, Li Chen<\/div>\n
SESSION: 5th International Workshop on Fairness in User Modeling, Adaptation and Personalization (FairUMAP’22)<\/h2>\n
5th Workshop on Fairness in User Modeling, Adaptation, and Personalization (FairUMAP 2022)<\/a><\/h3>\nStyliani Kleanthous, Bamshad Mobasher, Tsvika Kuflik, Bettina Berendt, Robin Burke, Jahna Otterbacher, Nasim Sonboli, Avital Shulner Tal\n
12 Years of Self-tracking for Promoting Physical Activity from a User Diversity Perspective: Taking Stock & Thinking Ahead<\/a><\/h3>\nSofia Yfantidou, Pavlos Sermpezis, Athena Vakali<\/div>\n
Being Diverse is Not Enough: Rethinking Diversity Evaluation to Meet Challenges of News Recommender Systems<\/a><\/h3>\nCelina Treuillier, Sylvain Castagnos, Evan Dufraisse, Armelle Brun<\/div>\n
Multi-agent Social Choice for Dynamic Fairness-aware Recommendation<\/a><\/h3>\nRobin Burke, Nicholas Mattei, Vladislav Grozin, Amy Voida, Nasim Sonboli<\/div>\n
Toward a decision process of the best machine learning model for multi-stakeholders: a crowdsourcing survey method<\/a><\/h3>\nTakuya Yokota, Yuri Nakao<\/div>\n
Towards Fair Multi-Stakeholder Recommender Systems<\/a><\/h3>\nFrancois Buet-Golfouse, Islam Utyagulov<\/div>\n