Results for 'recommender system'

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  1. Recommender systems and their ethical challenges.Silvia Milano, Mariarosaria Taddeo & Luciano Floridi - 2020 - AI and Society (4):957-967.
    This article presents the first, systematic analysis of the ethical challenges posed by recommender systems through a literature review. The article identifies six areas of concern, and maps them onto a proposed taxonomy of different kinds of ethical impact. The analysis uncovers a gap in the literature: currently user-centred approaches do not consider the interests of a variety of other stakeholders—as opposed to just the receivers of a recommendation—in assessing the ethical impacts of a recommender system.
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  2.  13
    Recommender Systems: Legal and Ethical Issues.Sergio Genovesi, Katharina Kaesling & Scott Robbins (eds.) - 2023 - Springer Verlag.
    This open access contributed volume examines the ethical and legal foundations of (future) policies on recommender systems and offers a transdisciplinary approach to tackle important issues related to their development, use and integration into online eco-systems. This volume scrutinizes the values driving automated recommendations - what is important for an individual receiving the recommendation, the company on which that platform was received, and society at large might diverge. The volume addresses concerns about manipulation of individuals and risks for personal (...)
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  3.  64
    Recommendation Systems as Technologies of the Self: Algorithmic Control and the Formation of Music Taste.Nedim Karakayali, Burc Kostem & Idil Galip - 2018 - Theory, Culture and Society 35 (2):3-24.
    The article brings to light the use of recommender systems as technologies of the self, complementing the observations in current literature regarding their employment as technologies of ‘soft’ power. User practices on the music recommendation website last.fm reveal that many users do not only utilize the website to receive guidance about music products but also to examine and transform an aspect of their self, i.e. their ‘music taste’. The capacity of assisting users in self-cultivation practices, however, is not unique (...)
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  4.  22
    Recommender systems for mental health apps: advantages and ethical challenges.Lee Valentine, Simon D’Alfonso & Reeva Lederman - forthcoming - AI and Society.
    Recommender systems assist users in receiving preferred or relevant services and information. Using such technology could be instrumental in addressing the lack of relevance digital mental health apps have to the user, a leading cause of low engagement. However, the use of recommender systems for digital mental health apps, particularly those driven by personal data and artificial intelligence, presents a range of ethical considerations. This paper focuses on considerations particular to the juncture of recommender systems and digital (...)
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  5.  14
    Friend Recommender System for Social Networks Based on Stacking Technique and Evolutionary Algorithm.Aida Ghorbani, Amir Daneshvar, Ladan Riazi & Reza Radfar - 2022 - Complexity 2022:1-11.
    In recent years, social networks have made significant progress and the number of people who use them to communicate is increasing day by day. The vast amount of information available on social networks has led to the importance of using friend recommender systems to discover knowledge about future communications. It is challenging to choose the best machine learning approach to address the recommender system issue since there are several strategies with various benefits and drawbacks. In light of (...)
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  6.  53
    AI-powered recommender systems and the preservation of personal autonomy.Juan Ignacio del Valle & Francisco Lara - forthcoming - AI and Society:1-13.
    Recommender Systems (RecSys) have been around since the early days of the Internet, helping users navigate the vast ocean of information and the increasingly available options that have been available for us ever since. The range of tasks for which one could use a RecSys is expanding as the technical capabilities grow, with the disruption of Machine Learning representing a tipping point in this domain, as in many others. However, the increase of the technical capabilities of AI-powered RecSys did (...)
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  7.  4
    Personalized recommendation system based on social tags in the era of Internet of Things.Jianshun Liu, Wenkai Ma, Gui Li & Jie Dong - 2022 - Journal of Intelligent Systems 31 (1):681-689.
    With the rapid development of the Internet, recommendation systems have received widespread attention as an effective way to solve information overload. Social tagging technology can both reflect users’ interests and describe the characteristics of the items themselves, making group recommendation thus becoming a recommendation technology in urgent demand nowadays. In traditional tag-based recommendation systems, the general processing method is to calculate the similarity and then rank the recommended items according to the similarity. Without considering the influence of continuous user behavior, (...)
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  8. Recommender systems for literature selection: A competition of decision making and memory models.L. Van Maanen & J. N. Marewski - 2009 - In N. A. Taatgen & H. van Rijn (eds.), Proceedings of the 31st Annual Conference of the Cognitive Science Society.
     
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  9. Technologically scaffolded atypical cognition: The case of YouTube’s recommender system.Mark Alfano, Amir Ebrahimi Fard, J. Adam Carter, Peter Clutton & Colin Klein - 2020 - Synthese (1-2):1-24.
    YouTube has been implicated in the transformation of users into extremists and conspiracy theorists. The alleged mechanism for this radicalizing process is YouTube’s recommender system, which is optimized to amplify and promote clips that users are likely to watch through to the end. YouTube optimizes for watch-through for economic reasons: people who watch a video through to the end are likely to then watch the next recommended video as well, which means that more advertisements can be served to (...)
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  10.  25
    A case-based reasoning recommender system for sustainable smart city development.Bokolo Anthony Jnr - 2021 - AI and Society 36 (1):159-183.
    With the deployment of information and communication technologies and the needs of data and information sharing within cities, smart city aims to provide value-added services to improve citizens’ quality of life. But, currently city planners/developers are faced with inadequate contextual information on the dimensions of smart city required to achieve a sustainable society. Therefore, in achieving sustainable society, there is need for stakeholders to make strategic decisions on how to implement smart city initiatives. Besides, it is required to specify the (...)
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  11.  35
    A multi-agent legal recommender system.Lucas Drumond & Rosario Girardi - 2008 - Artificial Intelligence and Law 16 (2):175-207.
    Infonorma is a multi-agent system that provides its users with recommendations of legal normative instruments they might be interested in. The Filter agent of Infonorma classifies normative instruments represented as Semantic Web documents into legal branches and performs content-based similarity analysis. This agent, as well as the entire Infonorma system, was modeled under the guidelines of MAAEM, a software development methodology for multi-agent application engineering. This article describes the Infonorma requirements specification, the architectural design solution for those requirements, (...)
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  12.  25
    Clustering Algorithms in Hybrid Recommender System on MovieLens Data.Urszula Kuzelewska - 2014 - Studies in Logic, Grammar and Rhetoric 37 (1):125-139.
    Decisions are taken by humans very often during professional as well as leisure activities. It is particularly evident during surfing the Internet: selecting web sites to explore, choosing needed information in search engine results or deciding which product to buy in an on-line store. Recommender systems are electronic applications, the aim of which is to support humans in this decision making process. They are widely used in many applications: adaptive WWW servers, e-learning, music and video preferences, internet stores etc. (...)
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  13. Ethical aspects of multi-stakeholder recommendation systems.Silvia Milano, Mariarosaria Taddeo & Luciano Floridi - 2021 - The Information Society 37 (1):35–⁠45.
    This article analyses the ethical aspects of multistakeholder recommendation systems (RSs). Following the most common approach in the literature, we assume a consequentialist framework to introduce the main concepts of multistakeholder recommendation. We then consider three research questions: who are the stakeholders in a RS? How are their interests taken into account when formulating a recommendation? And, what is the scientific paradigm underlying RSs? Our main finding is that multistakeholder RSs (MRSs) are designed and theorised, methodologically, according to neoclassical welfare (...)
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  14.  33
    Enhancing Countries’ Fitness with Recommender Systems on the International Trade Network.Hao Liao, Xiao-Min Huang, Xing-Tong Wu, Ming-Kai Liu, Alexandre Vidmer, Ming-Yang Zhou & Yi-Cheng Zhang - 2018 - Complexity 2018:1-12.
    Prediction is one of the major challenges in complex systems. The prediction methods have shown to be effective predictors of the evolution of networks. These methods can help policy makers to solve practical problems successfully and make better strategy for the future. In this work, we focus on exporting countries’ data of the International Trade Network. A recommendation system is then used to identify the products that correspond to the production capacity of each individual country but are somehow overlooked (...)
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  15.  50
    Technologically scaffolded atypical cognition: the case of YouTube’s recommender system.Mark Alfano, Amir Ebrahimi Fard, J. Adam Carter, Peter Clutton & Colin Klein - 2020 - Synthese 199 (1):835-858.
    YouTube has been implicated in the transformation of users into extremists and conspiracy theorists. The alleged mechanism for this radicalizing process is YouTube’s recommender system, which is optimized to amplify and promote clips that users are likely to watch through to the end. YouTube optimizes for watch-through for economic reasons: people who watch a video through to the end are likely to then watch the next recommended video as well, which means that more advertisements can be served to (...)
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  16.  18
    A Website Recommender System Based on an Analysis of the User's Access Log.P. Bedi, H. Kaur, B. Gupta, J. Talreja & M. Sood - 2009 - Journal of Intelligent Systems 18 (4):333-352.
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  17.  3
    Alors: An algorithm recommender system.Mustafa Mısır & Michèle Sebag - 2017 - Artificial Intelligence 244:291-314.
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  18.  52
    Artificial Intelligence and Autonomy: On the Ethical Dimension of Recommender Systems.Sofia Bonicalzi, Mario De Caro & Benedetta Giovanola - 2023 - Topoi 42 (3):819-832.
    Feasting on a plethora of social media platforms, news aggregators, and online marketplaces, recommender systems (RSs) are spreading pervasively throughout our daily online activities. Over the years, a host of ethical issues have been associated with the diffusion of RSs and the tracking and monitoring of users’ data. Here, we focus on the impact RSs may have on personal autonomy as the most elusive among the often-cited sources of grievance and public outcry. On the grounds of a philosophically nuanced (...)
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  19.  13
    Risk analysis and prediction in welfare institutions using a recommender system.Maayan Zhitomirsky-Geffet & Avital Zadok - 2018 - AI and Society 33 (4):511-525.
    Recommender systems are recently developed computer-assisted tools that support social and informational needs of various communities and help users exploit huge amounts of data for making optimal decisions. In this study, we present a new recommender system for assessment and risk prediction in child welfare institutions in Israel. The system exploits a large diachronic repository of manually completed questionnaires on functioning of welfare institutions and proposes two different rule-based computational models. The system accepts users’ requests (...)
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  20.  82
    Affinity Propagation-Based Hybrid Personalized Recommender System.Iqbal Qasim, Mujtaba Awan, Sikandar Ali, Shumaila Khan, Mogeeb A. A. Mosleh, Ahmed Alsanad, Hizbullah Khattak & Mahmood Alam - 2022 - Complexity 2022:1-12.
    A personalized recommender system is broadly accepted as a helpful tool to handle the information overload issue while recommending a related piece of information. This work proposes a hybrid personalized recommender system based on affinity propagation, namely, APHPRS. Affinity propagation is a semisupervised machine learning algorithm used to cluster items based on similarities among them. In our approach, we first calculate the cluster quality and density and then combine their outputs to generate a new ranking score (...)
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  21.  8
    An adaptive RNN algorithm to detect shilling attacks for online products in hybrid recommender system.Veer Sain Dixit & Akanksha Bansal Chopra - 2022 - Journal of Intelligent Systems 31 (1):1133-1149.
    Recommender system depends on the thoughts of numerous users to predict the favourites of potential consumers. RS is vulnerable to malicious information. Unsuitable products can be offered to the user by injecting a few unscrupulous “shilling” profiles like push and nuke attacks into the RS. Injection of these attacks results in the wrong recommendation for a product. The aim of this research is to develop a framework that can be widely utilized to make excellent recommendations for sales growth. (...)
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  22.  13
    The Right to be an Exception to Predictions: a Moral Defense of Diversity in Recommendation Systems.Eleonora Viganò - 2023 - Philosophy and Technology 36 (3):1-25.
    Recommendation systems (RSs) predict what the user likes and recommend it to them. While at the onset of RSs, the latter was designed to maximize the recommendation accuracy (i.e., accuracy was their only goal), nowadays many RSs models include diversity in recommendations (which thus is a further goal of RSs). In the computer science community, the introduction of diversity in RSs is justified mainly through economic reasons: diversity increases user satisfaction and, in niche markets, profits.I contend that, first, the economic (...)
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  23.  39
    Presenting a hybrid model in social networks recommendation system architecture development.Abolfazl Zare, Mohammad Reza Motadel & Aliakbar Jalali - 2020 - AI and Society 35 (2):469-483.
    There are many studies conducted on recommendation systems, most of which are focused on recommending items to users and vice versa. Nowadays, social networks are complicated due to carrying vast arrays of data about individuals and organizations. In today’s competitive environment, companies face two significant problems: supplying resources and attracting new customers. Even the concept of supply-chain management in a virtual environment is changed. In this article, we propose a new and innovative combination approach to recommend organizational people in social (...)
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  24.  4
    A Time-Aware Hybrid Approach for Intelligent Recommendation Systems for Individual and Group Users.Zhao Huang & Pavel Stakhiyevich - 2021 - Complexity 2021:1-19.
    Although personal and group recommendation systems have been quickly developed recently, challenges and limitations still exist. In particular, users constantly explore new items and change their preferences throughout time, which causes difficulties in building accurate user profiles and providing precise recommendation outcomes. In this context, this study addresses the time awareness of the user preferences and proposes a hybrid recommendation approach for both individual and group recommendations to better meet the user preference changes and thus improve the recommendation performance. The (...)
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  25.  54
    Exploration on Scientific Research Data-Targeted Intelligent Recommendation System Using Machine Learning Under the Background of Sustainable Development.Ruoqi Wang, Shaozhong Zhang, Lin Qi & Jingfeng Huang - 2022 - Frontiers in Psychology 13.
    The purpose is to provide researchers with reliable Scientific Research Data from the massive amounts of research data to establish a sustainable Scientific Research environment. Specifically, the present work proposes establishing an Intelligent Recommendation System based on Machine Learning algorithm and SRD. Firstly, the IRS is established over ML technology. Then, based on user Psychology and Collaborative Filtering recommendation algorithm, a hybrid algorithm [namely, Content-Based Recommendation-Collaborative Filtering ] is established to improve the utilization efficiency of SRD and Sustainable Development (...)
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  26.  8
    A Smart Privacy-Preserving Learning Method by Fake Gradients to Protect Users Items in Recommender Systems.Guixun Luo, Zhiyuan Zhang, Zhenjiang Zhang, Yun Liu & Lifu Wang - 2020 - Complexity 2020:1-10.
    In this paper, we study the problem of protecting privacy in recommender systems. We focus on protecting the items rated by users and propose a novel privacy-preserving matrix factorization algorithm. In our algorithm, the user will submit a fake gradient to make the central server not able to distinguish which items are selected by the user. We make the Kullback–Leibler distance between the real and fake gradient distributions to be small thus hard to be distinguished. Using theories and experiments, (...)
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  27.  12
    Social influence for societal interest: a pro-ethical framework for improving human decision making through multi-stakeholder recommender systems.Matteo Fabbri - 2023 - AI and Society 38 (2):995-1002.
    In the contemporary digital age, recommender systems (RSs) play a fundamental role in managing information on online platforms: from social media to e-commerce, from travels to cultural consumptions, automated recommendations influence the everyday choices of users at an unprecedented scale. RSs are trained on users’ data to make targeted suggestions to individuals according to their expected preference, but their ultimate impact concerns all the multiple stakeholders involved in the recommendation process. Therefore, whilst RSs are useful to reduce information overload, (...)
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  28.  23
    Designed to Seduce: Epistemically Retrograde Ideation and YouTube's Recommender System.Fabio Tollon - 2021 - International Journal of Technoethics 2 (12):60-71.
    Up to 70% of all watch time on YouTube is due to the suggested content of its recommender system. This system has been found, by virtue of its design, to be promoting conspiratorial content. In this paper, I first critique the value neutrality thesis regarding technology, showing it to be philosophically untenable. This means that technological artefacts can influence what people come to value (or perhaps even embody values themselves) and change the moral evaluation of an action. (...)
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  29. Trusting in others’ biases: Fostering guarded trust in collaborative filtering and recommender systems.Jo Ann Oravec - 2004 - Knowledge, Technology & Policy 17 (3):106-123.
    Collaborative filtering is being used within organizations and in community contexts for knowledge management and decision support as well as the facilitation of interactions among individuals. This article analyzes rhetorical and technical efforts to establish trust in the constructions of individual opinions, reputations, and tastes provided by these systems. These initiatives have some important parallels with early efforts to support quantitative opinion polling and construct the notion of “public opinion.” The article explores specific ways to increase trust in these systems, (...)
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  30.  32
    A social network-based approach to expert recommendation system.Elnaz Davoodi, Mohsen Afsharchi & Keivan Kianmehr - 2012 - In Emilio Corchado, Vaclav Snasel, Ajith Abraham, Michał Woźniak, Manuel Grana & Sung-Bae Cho (eds.), Hybrid Artificial Intelligent Systems. Springer. pp. 91--102.
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  31.  3
    Erratum to “A Hierarchical Attention Recommender System Based on Cross-Domain Social Networks”.Rongmei Zhao, Xi Xiong, Xia Zu, Shenggen Ju, Zhongzhi Li & Binyong Li - 2021 - Complexity 2021:1-1.
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  32.  4
    Learning pseudo-tags to augment sparse tagging in hybrid music recommender systems.Ben Horsburgh, Susan Craw & Stewart Massie - 2015 - Artificial Intelligence 219 (C):25-39.
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  33. Recommended questions on the road towards a scientific explanation of the periodic system of chemical elements with the help of the concepts of quantum physics.W. H. Eugen Schwarz - 2006 - Foundations of Chemistry 9 (2):139-188.
    Periodic tables (PTs) are the ‘ultimate paper tools’ of general and inorganic chemistry. There are three fields of open questions concerning the relation between PTs and physics: (i) the relation between the chemical facts and the concept of a periodic system (PS) of chemical elements (CEs) as represented by PTs; (ii) the internal structure of the PS; (iii)␣The relation between the PS and atomistic quantum chemistry. The main open questions refer to (i). The fuzziness of the concepts of chemical (...)
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  34. Systems Perspective of Amazon Mechanical Turk for Organizational Research: Review and Recommendations.Melissa G. Keith, Louis Tay & Peter D. Harms - 2017 - Frontiers in Psychology 8.
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  35. Concept systems and ontologies: Recommendations for basic terminology.Gunnar O. Klein & Barry Smith - 2010 - Transactions of the Japanese Society for Artificial Intelligence 25 (3):433-441.
    This is the third draft of a paper that aims to clarify the apparent contradictions in the views presented in certain standards and other specifications of health informatics systems, contradictions which come to light when the latter are evaluated from the perspective of realist philosophy. One of the origins of this document was Klein’s discussion paper of 2005-07-02 entitled “Conceptology vs Reality” and the responses from Smith, as well as the several hours of discussions during the 2005 MIE meeting in (...)
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  36.  14
    Communication-Based Book Recommendation in Computational Social Systems.Long Zuo, Shuo Xiong, Xin Qi, Zheng Wen & Yiwen Tang - 2021 - Complexity 2021:1-10.
    This paper considers current personalized recommendation approaches based on computational social systems and then discusses their advantages and application environments. The most widely used recommendation algorithm, personalized advice based on collaborative filtering, is selected as the primary research focus. Some improvements in its application performance are analyzed. First, for the calculation of user similarity, the introduction of computational social system attributes can help to determine users’ neighbors more accurately. Second, computational social system strategies can be adopted to penalize (...)
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  37.  13
    Changes in Recommendation Rating Systems, Analyst Optimism, and Investor Response.Yen-Jung Tseng & Mark Wilson - 2020 - Journal of Business Ethics 166 (2):369-401.
    We study whether changes in analyst recommendation ratings systems encouraged by the implementation of NASD 2711 in 2002 are associated with improved objectivity and independence in analyst recommendations. Using recommendations issued during windows surrounding major investment banking events, we show that reductions in analyst optimism following the reforms concentrate in the recommendations of analysts whose employer adopted a three-tier rating system at the time of the reforms, and that this effect is generally stronger for analysts whom the underlying incentives (...)
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  38.  10
    Antibiotic prophylaxis for systemic diseases in dental treatment, recommended or not recommended: A survey among dental students.Prabhu Subramani & Sswedheni Ujjayanthi - 2017 - Journal of Education and Ethics in Dentistry 7 (1):3.
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  39. Generic Intelligent Systems-Agent Systems-Automatic Classification for Grouping Designs in Fashion Design Recommendation Agent System.Kyung-Yong Jung - 2006 - In O. Stock & M. Schaerf (eds.), Lecture Notes in Computer Science. Springer Verlag. pp. 4251--310.
  40.  7
    Learning Performance in Adaptive Learning Systems: A Case Study of Web Programming Learning Recommendations.Hsiao-Chi Ling & Hsiu-Sen Chiang - 2022 - Frontiers in Psychology 13.
    Students often face challenges while learning computer programming because programming languages’ logic and visual presentations differ from human thought processes. If the course content does not closely match learners’ skill level, the learner cannot follow the learning process, resulting in frustration, low learning motivation, or abandonment. This research proposes a web programming learning recommendation system to provide students with personalized guidance and step-by-step learning planning. The system contains front-end and back-end web development instructions. It can create personalized learning (...)
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  41.  13
    Computing taste: algorithms and the makers of music recommendation.Nick Seaver - 2022 - Chicago: University of Chicago Press.
    For the people who make them, music recommender systems hold a utopian promise: they can broaden listeners' horizons and help obscure musicians find audiences, taking advantage of the enormous catalogs offered by companies like Spotify, Apple Music, and their kin. But for critics, recommender systems have come to epitomize the potential harms of algorithms: they seem to reduce expressive culture to numbers, they normalize ever-broadening data collection, and they profile their users for commercial ends, tearing the social fabric (...)
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  42.  66
    Evidence‐based clinical guidelines: a new system to better determine true strength of recommendation.Edward Roddy, Weiya Zhang, Michael Doherty, Nigel K. Arden, Julie Barlow, Fraser Birrell, Alison Carr, Kuntal Chakravarty, John Dickson, Elaine Hay, Gillian Hosie, Michael Hurley, Kelsey M. Jordan, Christopher McCarthy, Marion McMurdo, Simon Mockett, Sheila O’Reilly, George Peat, Adrian Pendleton & Selwyn Richards - 2006 - Journal of Evaluation in Clinical Practice 12 (3):347-352.
  43.  8
    Course Recommendations in Online Education Based on Collaborative Filtering Recommendation Algorithm.Jing Li & Zhou Ye - 2020 - Complexity 2020:1-10.
    In this paper, a personalized online education platform based on a collaborative filtering algorithm is designed by applying the recommendation algorithm in the recommendation system to the online education platform using a cross-platform compatible HTML5 and high-performance framework hybrid programming approach. The server-side development adopts a mature B/S architecture and the popular development model, while the mobile terminal uses HTML5 and framework to implement the function of recommending personalized courses for users using collaborative filtering and recommendation algorithms. By improving (...)
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  44.  8
    Impact of Sleep Deprivation on Emotional Regulation and the Immune System of Healthcare Workers as a Risk Factor for COVID 19: Practical Recommendations From a Task Force of the Latin American Association of Sleep Psychology.Katie Moraes de Almondes, Hernán Andrés Marín Agudelo & Ulises Jiménez-Correa - 2021 - Frontiers in Psychology 12.
    Healthcare workers who are on the front line of coronavirus disease 2019 and are also undergoing shift schedules face long work hours with few pauses, experience desynchronization of their circadian rhythm, and an imbalance between work hours effort and reward in saving lives, resulting in an impact on work capacity, aggravated by the lack of personal protective equipment, few resources and precarious infrastructure, and fear of contracting the virus and contaminating family members. Some consequences are sleep deprivation, chronic insomnia, stress-related (...)
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  45.  12
    Personalized Recommendation Model of High-Quality Education Resources for College Students Based on Data Mining.Chaohua Fang & Qiuyun Lu - 2021 - Complexity 2021:1-11.
    With the rapid development of information technology and data science, as well as the innovative concept of “Internet+” education, personalized e-learning has received widespread attention in school education and family education. The development of education informatization has led to a rapid increase in the number of online learning users and an explosion in the number of learning resources, which makes learners face the dilemma of “information overload” and “learning lost” in the learning process. In the personalized learning resource recommendation (...), the most critical thing is the construction of the learner model. Currently, most learner models generally have a lack of scientific focus that they have a single method of obtaining dimensions, feature attributes, and low computational complexity. These problems may lead to disagreement between the learner’s learning ability and the difficulty of the recommended learning resources and may lead to the cognitive overload or disorientation of learners in the learning process. The purpose of this paper is to construct a learner model to support the above problems and to strongly support individual learning resources recommendation by learning the resource model which effectively reduces the problem of cold start and sparsity in the recommended process. In this paper, we analyze the behavioral data of learners in the learning process and extract three features of learner’s cognitive ability, knowledge level, and preference for learning of learner model analysis. Among them, the preference model of the learner is constructed using the ontology, and the semantic relation between the knowledge is better understood, and the interest of the student learning is discovered. (shrink)
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  46.  12
    A unified framework of active transfer learning for cross-system recommendation.Lili Zhao, Sinno Jialin Pan & Qiang Yang - 2017 - Artificial Intelligence 245 (C):38-55.
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  47.  14
    Ethical Challenges to Cell-Based Interventions for the Central Nervous System: Some Recommendations for Clinical Trials and Practice.P. H. Schwartz & M. W. Kalichman - 2009 - American Journal of Bioethics 9 (5):41-43.
  48.  13
    Achieving Human Computer Symbiosis: □A Practitioners Perspective and Recommendations on Achieving Effective Human-Systems Integration by Augmenting Cognition.Dylan Schmorrow - 2018 - Frontiers in Human Neuroscience 12.
  49.  25
    Automated news recommendation in front of adversarial examples and the technical limits of transparency in algorithmic accountability.Antonin Descampe, Clément Massart, Simon Poelman, François-Xavier Standaert & Olivier Standaert - 2022 - AI and Society 37 (1):67-80.
    Algorithmic decision making is used in an increasing number of fields. Letting automated processes take decisions raises the question of their accountability. In the field of computational journalism, the algorithmic accountability framework proposed by Diakopoulos formalizes this challenge by considering algorithms as objects of human creation, with the goal of revealing the intent embedded into their implementation. A consequence of this definition is that ensuring accountability essentially boils down to a transparency question: given the appropriate reverse-engineering tools, it should be (...)
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    Recommendations for the development of a competitive advantage based on RRI.Aurelija Novelskaitė, Clémentine Antier, Raminta Pučėtaitė, Andrew Adams, Kutoma Wakunuma, Tilimbe Jiya, Louisa Grabner, Lars Lorenz, Inés Sánchez de Madariaga, Inés Novella, Vincent Blok & Edurne A. Inigo - unknown
    This report analyses the relationship between RRI-like practices and competitive advantage. RRI frameworks have traditionally been less oriented towards their application in competitive environments; hence resulting in limitations to the applicability of some of its main tenets in industry and in the context of the development of a national competitive advantage. Aiming to close this gap and identify how a competitive advantage based on engagement in RRI-like practices across world regions may be developed, a systematic literature review, a survey and (...)
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