Global and country-specific mainstreaminess measures: Definitions, analysis, and usage for improving personalized music recommendation systems
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[1] Vasudeva Varma,et al. Music Information Retrieval: Recent Developments and Applications , 2014 .
[2] M. Delsing,et al. Intergenerational Continuity of Taste: Parental and Adolescent Music Preferences , 2011 .
[3] Thomas Schäfer,et al. Can personality traits predict musical style preferences? A meta-analysis , 2017 .
[4] Dmitry Bogdanov,et al. How Much Metadata Do We Need in Music Recommendation? A Subjective Evaluation Using Preference Sets , 2011, ISMIR.
[5] R. Brown,et al. Music preferences and personality among Japanese university students. , 2012, International journal of psychology : Journal international de psychologie.
[6] Tao Mei,et al. Just-for-Me: An Adaptive Personalization System for Location-Aware Social Music Recommendation , 2014, ICMR.
[7] Elena Karahanna,et al. Peer-Based Recommendations in Online B2C E-Commerce: Comparing Collaborative Personalization and Social Network-Based Personalization , 2012, 2012 45th Hawaii International Conference on System Sciences.
[8] Giorgio Battistelli,et al. Kullback-Leibler average, consensus on probability densities, and distributed state estimation with guaranteed stability , 2014, Autom..
[9] Òscar Celma,et al. Music Recommendation and Discovery - The Long Tail, Long Fail, and Long Play in the Digital Music Space , 2010 .
[10] Gregory D. Abowd,et al. Towards a Better Understanding of Context and Context-Awareness , 1999, HUC.
[11] Peter Knees,et al. Prediction of User Demographics from Music Listening Habits , 2017, CBMI.
[12] Franca Garzotto,et al. Recommending without short head , 2014, WWW '14 Companion.
[13] David S. Rosenblum,et al. Context-aware mobile music recommendation for daily activities , 2012, ACM Multimedia.
[14] Xiao Hu,et al. Cross-cultural similarities and differences in music mood perception , 2014 .
[15] Zhenyu Wang,et al. A Music Recommendation Algorithm Based on Hybrid Collaborative Filtering Technique , 2015, SMP.
[16] Markus Schedl,et al. Online Music Listening Culture of Kids and Adolescents: Listening Analysis and Music Recommendation Tailored to the Young , 2019, ArXiv.
[17] J. Avery,et al. The long tail. , 1995, Journal of the Tennessee Medical Association.
[18] Markus Schedl,et al. Music Information Retrieval: Recent Developments and Applications , 2014, Found. Trends Inf. Retr..
[19] David Bawden,et al. The dark side of information: overload, anxiety and other paradoxes and pathologies , 2009, J. Inf. Sci..
[20] M. L. Jones. Hofstede - Culturally questionable? , 2007 .
[21] Catherine J. Stevens,et al. Music Perception and Cognition: A Review of Recent Cross-Cultural Research , 2012, Top. Cogn. Sci..
[22] P. Mayring. Qualitative content analysis: theoretical foundation, basic procedures and software solution , 2014 .
[23] Christine Bauer,et al. Music Recommender Systems Challenges and Opportunities for Non-Superstar Artists , 2017, Bled eConference.
[24] H. Jeffreys. An invariant form for the prior probability in estimation problems , 1946, Proceedings of the Royal Society of London. Series A. Mathematical and Physical Sciences.
[25] M. Kendall. The treatment of ties in ranking problems. , 1945, Biometrika.
[26] Steven M. Demorest,et al. Cultural constraints on music perception and cognition. , 2009, Progress in brain research.
[27] Pedro Cano,et al. From hits to niches?: or how popular artists can bias music recommendation and discovery , 2008, NETFLIX '08.
[28] Daniel G. Brown,et al. On Cultural, Textual and Experiential Aspects of Music Mood , 2014, ISMIR.
[29] Michael Seman,et al. The Production and Consumption of Music in the Digital Age , 2018 .
[30] Mark Sandler,et al. Learning Latent Semantic Models for Music from Social Tags , 2008 .
[31] JungAe Yang,et al. Effects of Popularity-Based News Recommendations (“Most-Viewed”) on Users' Exposure to Online News , 2016 .
[32] Markus Schedl,et al. Local and global scaling reduce hubs in space , 2012, J. Mach. Learn. Res..
[33] Thomas Hess,et al. The Value of a Recommendation: The Role of Social Ties in Social Recommender Systems , 2014, 2014 47th Hawaii International Conference on System Sciences.
[34] Terence Magno,et al. A Comparison of Signal Based Music Recommendation to Genre Labels, Collaborative Filtering, Musicological Analysis, Human Recommendation and Random Baseline , 2008, ISMIR.
[35] Katayoun Farrahi,et al. On the Influence of User Characteristics on Music Recommendation Algorithms , 2015, ECIR.
[36] Arun Sundararajan,et al. Recommendation Networks and the Long Tail of Electronic Commerce , 2010, MIS Q..
[37] Peter Knees,et al. An intelligent drum machine for electronic dance music production and performance , 2017, NIME.
[38] Paul Lamere,et al. Generating transparent, steerable recommendations from textual descriptions of items , 2009, RecSys '09.
[39] Yehuda Koren,et al. Matrix Factorization Techniques for Recommender Systems , 2009, Computer.
[40] Huaiyu Zhu. On Information and Sufficiency , 1997 .
[41] Ichiro Fujinaga,et al. Automatic Music Recommendation Systems: Do Demographic, Profiling, and Contextual Features Improve Their Performance? , 2016, ISMIR.
[42] Christine Bauer,et al. Introducing Global and Regional Mainstreaminess for Improving Personalized Music Recommendation , 2017, MoMM.
[43] Anselm L. Strauss,et al. Qualitative Analysis For Social Scientists , 1987 .
[44] C. Spearman. The proof and measurement of association between two things. , 2015, International journal of epidemiology.
[45] Christine Bauer,et al. A Cross-Country Investigation of User Connection Patterns in Online Social Networks , 2019, HICSS.
[46] Gediminas Adomavicius,et al. Context-aware recommender systems , 2008, RecSys '08.
[47] Michael R. Lyu,et al. Improving Recommender Systems by Incorporating Social Contextual Information , 2011, TOIS.
[48] Daniel Hallencreutz,et al. Competitiveness, Local Production Systems and Global Commodity Chains in the Music Industry: Entering the US Market , 2007 .
[49] A. Strauss,et al. Grounded theory , 2017 .
[50] Tim Pohle,et al. Dynamic Playlist Generation Based on Skipping Behavior , 2005, ISMIR.
[51] Markus Schedl,et al. Investigating country-specific music preferences and music recommendation algorithms with the LFM-1b dataset , 2017, International Journal of Multimedia Information Retrieval.
[52] Greg Linden,et al. Amazon . com Recommendations Item-to-Item Collaborative Filtering , 2001 .
[53] Paul Lamere,et al. Social Tagging and Music Information Retrieval , 2008 .
[54] John Rust,et al. Age trends in musical preferences in adulthood: 2. Sources of social influences as determinants of preferences , 2018 .
[55] Christine Bauer,et al. What do we really talk about when we talk about context in pervasive computing: a review and exploratory analysis , 2017, iiWAS.
[56] Ann Colley,et al. Young People's Musical Taste: Relationship With Gender and Gender‐Related Traits1 , 2008 .
[57] B. McSweeney. Hofstede’s Model of National Cultural Differences and their Consequences: A Triumph of Faith - a Failure of Analysis , 2002 .
[58] José I. Rojas-Méndez,et al. Identity, culture, dispositions and behavior: A cross-national examination of globalization and culture change , 2016 .
[59] M. Kendall. A NEW MEASURE OF RANK CORRELATION , 1938 .
[60] Emilia Gómez,et al. Semantic audio content-based music recommendation and visualization based on user preference examples , 2013, Inf. Process. Manag..
[61] Gert R. G. Lanckriet,et al. Combining audio content and social context for semantic music discovery , 2009, SIGIR.
[62] P. Bliese. Within-group agreement, non-independence, and reliability: Implications for data aggregation and analysis. , 2000 .
[63] Young Min Baek,et al. Relationship Between Cultural Distance and Cross-Cultural Music Video Consumption on YouTube , 2015 .
[64] R. Bhagat. Culture's Consequences: Comparing Values, Behaviors, Institutions, and Organizations Across Nations , 2002 .
[65] Peter Knees,et al. Exploring the music similarity space on the web , 2011, TOIS.
[66] Christine Bauer,et al. On the Importance of Considering Country-specific Aspects on the Online-Market: An Example of Music Recommendation Considering Country-Specific Mainstream , 2018, HICSS.
[67] H. Joe. Relative Entropy Measures of Multivariate Dependence , 1989 .
[68] Peter Knees,et al. Music Recommender Systems , 2015, Recommender Systems Handbook.
[69] Man K. Xu,et al. Music through the ages: Trends in musical engagement and preferences from adolescence through middle adulthood. , 2013, Journal of personality and social psychology.
[70] Gediminas Adomavicius,et al. Toward the next generation of recommender systems: a survey of the state-of-the-art and possible extensions , 2005, IEEE Transactions on Knowledge and Data Engineering.
[71] Markus Schedl,et al. The LFM-1b Dataset for Music Retrieval and Recommendation , 2016, ICMR.
[72] Marc Leman,et al. Content-Based Music Information Retrieval: Current Directions and Future Challenges , 2008, Proceedings of the IEEE.
[73] G. Madison,et al. Repeated Listening Increases the Liking for Music Regardless of Its Complexity: Implications for the Appreciation and Aesthetics of Music , 2017, Front. Neurosci..
[74] Ricardo Dias,et al. Improving Music Recommendation in Session-Based Collaborative Filtering by Using Temporal Context , 2013, 2013 IEEE 25th International Conference on Tools with Artificial Intelligence.
[75] Markus Schedl,et al. Tailoring Music Recommendations to Users by Considering Diversity, Mainstreaminess, and Novelty , 2015, SIGIR.
[76] S. Gosling,et al. PERSONALITY PROCESSES AND INDIVIDUAL DIFFERENCES The Do Re Mi’s of Everyday Life: The Structure and Personality Correlates of Music Preferences , 2003 .
[77] Yehuda Koren,et al. Advances in Collaborative Filtering , 2011, Recommender Systems Handbook.
[78] Christine Bauer,et al. A consolidated view of context for intelligent systems , 2017, J. Ambient Intell. Smart Environ..
[79] Mohan S. Kankanhalli,et al. Exploring User-Specific Information in Music Retrieval , 2017, SIGIR.
[80] Ronald Fischer,et al. How Shared Preferences in Music Create Bonds Between People , 2011, Personality & social psychology bulletin.
[81] Josep Lluís de la Rosa i Esteva,et al. A Taxonomy of Recommender Agents on the Internet , 2003, Artificial Intelligence Review.
[82] Markus Schedl,et al. Genre-based Analysis of Social Media Data on Music Listening Behavior: Are Fans of Classical Music Really Averse to Social Media? , 2014, WISMM '14.
[83] Francesco Ricci,et al. Recommending music for places of interest in a mobile travel guide , 2011, RecSys '11.
[84] Yehuda Koren,et al. Factorization meets the neighborhood: a multifaceted collaborative filtering model , 2008, KDD.
[85] Bracha Shapira,et al. Recommender Systems Handbook , 2015, Springer US.
[86] Malcolm Slaney,et al. Web-Scale Multimedia Analysis: Does Content Matter? , 2011, IEEE MultiMedia.
[87] Christine Bauer,et al. Distance- and Rank-based Music Mainstreaminess Measurement , 2017, UMAP.
[88] Paul Rutten,et al. Local popular music on the national and international markets , 1991 .
[89] Yuan-Chun Jiang,et al. Diversified Recommendation Incorporating Item Content Information Based on MOEA/D , 2016, 2016 49th Hawaii International Conference on System Sciences (HICSS).
[90] Jialie Shen,et al. On Effective Location-Aware Music Recommendation , 2016, ACM Trans. Inf. Syst..
[91] Markus Schedl,et al. Ameliorating Music Recommendation: Integrating Music Content, Music Context, and User Context for Improved Music Retrieval and Recommendation , 2013, MoMM '13.
[92] Oliver Budzinski,et al. Do preferences for pop music converge across countries? – Empirical evidence from the Eurovision Song Contest , 2017 .
[93] Audrey Laplante,et al. Improving Music Recommender Systems: What Can We Learn from Research on Music Tastes? , 2014, ISMIR.
[94] Don H. Johnson,et al. Symmetrizing the Kullback-Leibler Distance , 2001 .
[95] Valerie J. Trifts,et al. Consumer Decision Making in Online Shopping Environments: The Effects of Interactive Decision Aids , 2000 .
[96] Priscilla S. Markwood,et al. The Long Tail: Why the Future of Business is Selling Less of More , 2006 .
[97] Peter Knees,et al. Automatically Adapting the Structure of Audio Similarity Spaces , 2006 .
[98] Hyung Jun Ahn,et al. Utilizing Popularity Characteristics for Product Recommendation , 2006, Int. J. Electron. Commer..
[99] Delbert Dueck,et al. Clustering by Passing Messages Between Data Points , 2007, Science.
[100] P. Lachenbruch. Statistical Power Analysis for the Behavioral Sciences (2nd ed.) , 1989 .
[101] Hamed Zamani,et al. Current challenges and visions in music recommender systems research , 2017, International Journal of Multimedia Information Retrieval.
[102] Bruce Ferwerda,et al. Large-Scale Analysis of Group-Specific Music Genre Taste from Collaborative Tags , 2017, 2017 IEEE International Symposium on Multimedia (ISM).