English  |  正體中文  |  简体中文  |  Post-Print筆數 : 27 |  Items with full text/Total items : 112704/143671 (78%)
Visitors : 49721840      Online Users : 709
RC Version 6.0 © Powered By DSPACE, MIT. Enhanced by NTU Library IR team.
Scope Tips:
  • please add "double quotation mark" for query phrases to get precise results
  • please goto advance search for comprehansive author search
  • Adv. Search
    HomeLoginUploadHelpAboutAdminister Goto mobile version
    政大機構典藏 > 商學院 > 資訊管理學系 > 學位論文 >  Item 140.119/141038
    Please use this identifier to cite or link to this item: https://nccur.lib.nccu.edu.tw/handle/140.119/141038


    Title: 基於時序與風格的語音節目推薦系統研究
    An investigation of spoken program recommendation systems based on time and style
    Authors: 蘇品維
    Su, Pin-Wei
    Contributors: 杜雨儒
    Tu,Yu-Ju
    蘇品維
    Su,Pin-Wei
    Keywords: 推薦系統
    冷啟動問題
    Podcast
    機器學習
    時間
    敘事風格
    : Recommendation systems
    Cold-start problem
    Podcast
    Machine Learning
    Listening Time
    Speaking Style
    Date: 2022
    Issue Date: 2022-08-01 17:22:56 (UTC+8)
    Abstract: 因為網際網路以及串流技術的蓬勃發展,在相關的市場上開始衍伸出許多新媒體服務,例如:影音串流(YouTube) 語音節目(Podcast)。其中又因為語音節目的一些自身的特性,以及在台灣市場當中發生了在短時間內湧入大量新用戶以及新產品的問題,使得在語音節目平台中建置推薦系統顯得相當困難,特別是在推薦新產品或是推薦產品給新用戶的議題上。換句話說,要如何推薦適合的語音節目給新的使用者 或是如何推薦新的語音節目給使用者等議題顯得十分重要且具有挑戰性。這些議題在過去的研究中這些問題也被稱作「冷啟動問題」。
    而過去對於語音節目推薦上的相關研究十分稀少。而本研究基於在過去少量的語音節目推薦文獻上所使用之文字描述和類別的特性,結合兩個特有的特性—「時序」與語音節目的「敘事風格」,並搭配混合推薦的方法,去解決在語音節目上所發生的冷啟動問題。本研究也透過網路爬蟲的方式蒐集 APPLE Podcast 的評分資料作為推薦系統的訓練資料。除了線下測試外,也實作出推薦系統介面實際讓使用者進行使用者測試。根據我們的線下測試以及使用者測試之結果可以得知在時序與風格屬性的幫助下,在整體以及新使用者的推薦效果都有顯著的提升。
    With the rapid development of the Internet and streaming technology, many new media services have begun to spread to related markets, such as video streaming (YouTube) and spoken program services (podcasts). Due to the characteristics of spoken programs and the influx of new users and products in the Taiwan market in a short time, it is challenging to build a recommendation system in the spoken program platform, especially on the issues of recommending new items or recommending items to new users. In other words, the challenges of recommending suitable spoken programs to new users or recommending new spoken programs to users remain open research questions. These issues are called “cold-start problems” in past studies. Related research on spoken program recommendations was scarce in the past. The present study, based on the characteristics of text descriptions and categories used in a few recommended literatures of spoken programs in the past, combined two unique characteristics—listening time and speaking styles of spoken programs—in a hybrid recommendation method to solve the cold-start problems in spoken programs. The study also collected the rating data of Apple Podcasts through the web crawler, and podcast ratings were used as training data for the recommendation system. In addition to offline testing, we implemented a recommended system interface for users to conduct user testing. According to the results of our offline and user tests, with the addition of time and speaking styles, the performance of the recommendation in overall and new users was significantly improved.
    Reference: 1. An, H. S. 2017. "Breaking the Pop Music Market in the Us: Effects of Online PrePurchase Influences and Acculturation of Asian Consumers on Their Responses
    to Asian Artists’ Contemporary Pop Music," Proceedings of the Northeast
    Business & Economics Association).
    2. Arif, I., Aslam, W., and Siddiqui, H. 2020. "Influence of Brand Related UserGenerated Content through Facebook on Consumer Behaviour: A StimulusOrganism-Response Framework," International Journal of Electronic Business
    (15:2), pp. 109-132.
    3. Ayata, D., Yaslan, Y., and Kamasak, M. E. 2018. "Emotion Based Music
    Recommendation System Using Wearable Physiological Sensors," IEEE
    transactions on consumer electronics (64:2), pp. 196-203.
    4. Bai, T., Wen, J.-R., Zhang, J., and Zhao, W. X. 2017. "A Neural Collaborative
    Filtering Model with Interaction-Based Neighborhood," Proceedings of the 2017
    ACM on Conference on Information and Knowledge Management, pp. 1979-1982.
    5. Balabanović, M., and Shoham, Y. 1997. "Fab: Content-Based, Collaborative
    Recommendation," Commun. ACM (40:3), pp. 66–72.
    6. Beel, J., Langer, S., Genzmehr, M., and Nürnberger, A. 2013. "Introducing
    Docear`s Research Paper Recommender System," Proceedings of the 13th
    ACM/IEEE-CS joint conference on Digital libraries, pp. 459-460.
    7. Belk, R. W. 1974. "An Exploratory Assessment of Situational Effects in Buyer
    Behavior," Journal of marketing research (11:2), pp. 156-163.
    8. Benton, G., Fazelnia, G., Wang, A., and Carterette, B. 2020. "Trajectory Based
    Podcast Recommendation," arXiv preprint arXiv:2009.03859).
    9. Bobadilla, J., Ortega, F., Hernando, A., and Bernal, J. 2012. "A Collaborative
    Filtering Approach to Mitigate the New User Cold Start Problem," Knowledgebased systems (26), pp. 225-238.
    10. Burke, R. 2002. "Hybrid Recommender Systems: Survey and Experiments," User
    modeling and user-adapted interaction (12:4), pp. 331-370.
    11. Cai, J.-J., Tang, J., Chen, Q.-G., Hu, Y., Wang, X., and Huang, S.-J. 2019. "MultiView Active Learning for Video Recommendation," IJCAI, pp. 2053-2059.
    12. Chen, C.-M., and Sun, Y.-C. 2012. "Assessing the Effects of Different Multimedia
    Materials on Emotions and Learning Performance for Visual and Verbal Style
    Learners," Computers & Education (59:4), pp. 1273-1285.
    13. Chen, H.-H., Chung, C.-A., Huang, H.-C., and Tsui, W. 2017. "Common Pitfalls
    in Training and Evaluating Recommender Systems," ACM SIGKDD Explorations
    Newsletter (19:1), pp. 37-45.
    14. Choi, S.-M., Jang, K., Lee, T.-D., Khreishah, A., and Noh, W. 2020. "Alleviating
    Item-Side Cold-Start Problems in Recommender Systems Using Weak
    Supervision," IEEE Access (8), pp. 167747-167756.
    15. Collins, A., Tkaczyk, D., Aizawa, A., and Beel, J. 2018. "Position Bias in
    Recommender Systems for Digital Libraries," International Conference on
    Information: Springer, pp. 335-344.
    16. Common-Wealth-Magazine ,2021. Complete investigation report of "2021 Listening to
    Economic Survey" https://www.cw.com.tw/article/5115003?template=transformers (Last
    access date 2022/07)
    77
    17. Darshna, P. 2018. "Music Recommendation Based on Content and Collaborative
    Approach & Reducing Cold Start Problem," 2018 2nd International Conference
    on Inventive Systems and Control (ICISC): IEEE, pp. 1033-1037.
    18. Das, D., Sahoo, L., and Datta, S. 2017. "A Survey on Recommendation System,"
    International Journal of Computer Applications (160:7).
    19. Deng, S., Wang, D., Li, X., and Xu, G. 2015. "Exploring User Emotion in
    Microblogs for Music Recommendation," Expert Systems with Applications
    (42:23), pp. 9284-9293.
    20. Díaz-Morales, J. F., Escribano, C., and Jankowski, K. S. 2015. "Chronotype and
    Time-of-Day Effects on Mood During School Day," Chronobiology international
    (32:1), pp. 37-42.
    21. Felício, C. Z., Paixão, K. V., Barcelos, C. A., and Preux, P. 2017. "A Multi-Armed
    Bandit Model Selection for Cold-Start User Recommendation," Proceedings of
    the 25th Conference on User Modeling, Adaptation and Personalization, pp. 32-
    40.
    22. Gunawan, A. A., and Suhartono, D. 2019. "Music Recommender System Based
    on Genre Using Convolutional Recurrent Neural Networks," Procedia Computer
    Science (157), pp. 99-109.
    23. Guo, G., Zhang, J., and Yorke-Smith, N. 2015. "Trustsvd: Collaborative Filtering
    with Both the Explicit and Implicit Influence of User Trust and of Item Ratings,"
    Proceedings of the AAAI Conference on Artificial Intelligence.
    24. He, X., Du, X., Wang, X., Tian, F., Tang, J., and Chua, T.-S. 2018. "Outer ProductBased Neural Collaborative Filtering," arXiv preprint arXiv:1808.03912).
    25. He, X., Liao, L., Zhang, H., Nie, L., Hu, X., and Chua, T.-S. 2017. "Neural
    Collaborative Filtering," Proceedings of the 26th international conference on
    world wide web, pp. 173-182.
    26. Herce-Zelaya, J., Porcel, C., Bernabé-Moreno, J., Tejeda-Lorente, A., and
    Herrera-Viedma, E. 2020. "New Technique to Alleviate the Cold Start Problem in
    Recommender Systems Using Information from Social Media and Random
    Decision Forests," Information Sciences (536), pp. 156-170.
    27. Herlocker, J. L., Konstan, J. A., Borchers, A., and Riedl, J. 1999. "An Algorithmic
    Framework for Performing Collaborative Filtering," Proceedings of the 22nd
    annual international ACM SIGIR conference on Research and development in
    information retrieval, pp. 230-237.
    28. Hidalgo, M. P., Caumo, W., Posser, M., Coccaro, S. B., Camozzato, A. L., and
    Chaves, M. L. F. 2009. "Relationship between Depressive Mood and Chronotype
    in Healthy Subjects," Psychiatry and clinical neurosciences (63:3), pp. 283-290.
    29. Hu, Y., and Ogihara, M. 2011. "Nextone Player: A Music Recommendation
    System Based on User Behavior," ISMIR, pp. 103-108.
    30. Hyung, Z., Lee, K., and Lee, K. 2014. "Music Recommendation Using Text
    Analysis on Song Requests to Radio Stations," Expert Systems with Applications
    (41:5), pp. 2608-2618.
    31. Inside ,2020. Show you Podcast- 2020 Taiwan Podcast Industry Report for the
    First Half of the Year https://www.inside.com.tw/article/20391-2020-podcastreport (Last access date 2022/07)
    32. Ismailoglu, F. 2021. "Aggregating User Preferences in Group Recommender
    Systems: A Crowdsourcing Approach," Decision Support Systems), p. 113663.
    33. Jelodar, H., Wang, Y., Rabbani, M., Ahmadi, S. B. B., Boukela, L., Zhao, R., and
    Larik, R. S. A. 2021. "A Nlp Framework Based on Meaningful Latent-Topic
    78
    Detection and Sentiment Analysis Via Fuzzy Lattice Reasoning on Youtube
    Comments," Multimedia Tools and Applications (80:3), pp. 4155-4181.
    34. Joo, Y. S., and Kim, S.-K. 2020. "Scent Emotion Evaluation Experiment for
    Multimedia Application," 2020 IEEE International Conference on Consumer
    Electronics-Asia (ICCE-Asia): IEEE, pp. 1-4.
    35. Kaji, N., and Kobayashi, H. 2017. "Incremental Skip-Gram Model with Negative
    Sampling," arXiv preprint arXiv:1704.03956).
    36. Kim, H.-N., Ha, I., Lee, K.-S., Jo, G.-S., and El-Saddik, A. 2011. "Collaborative
    User Modeling for Enhanced Content Filtering in Recommender Systems,"
    Decision Support Systems (51:4), pp. 772-781.
    37. Kudielka, B. M., Schommer, N. C., Hellhammer, D. H., and Kirschbaum, C. 2004.
    "Acute Hpa Axis Responses, Heart Rate, and Mood Changes to Psychosocial
    Stress (Tsst) in Humans at Different Times of Day," Psychoneuroendocrinology
    (29:8), pp. 983-992.
    38. Kumar, P., and Thakur, R. S. 2018. "Recommendation System Techniques and
    Related Issues: A Survey," International Journal of Information Technology
    (10:4), pp. 495-501.
    39. Lang, A., and Chrzan, J. 2015. "Media Multitasking: Good, Bad, or Ugly?,"
    Annals of the International Communication Association (39:1), pp. 99-128.
    40. Lee, J.-S., and Shin, D.-H. 2015. "A Study on the Preference between Emotion of
    Human and Media Genre in Smart Device," Science of Emotion and Sensibility
    (18:1), pp. 59-66.
    41. Li, G., and Zhang, J. 2018. "Music Personalized Recommendation System Based
    on Improved Knn Algorithm," 2018 IEEE 3rd Advanced Information Technology,
    Electronic and Automation Control Conference (IAEAC): IEEE, pp. 777-781.
    42. Li, Y.-M., Liou, J.-H., and Li, Y.-W. 2020. "A Social Recommendation Approach
    for Reward-Based Crowdfunding Campaigns," Information & Management (57:7),
    p. 103246.
    43. Liang, T.-P., Lai, H.-J., and Ku, Y.-C. 2006. "Personalized Content
    Recommendation and User Satisfaction: Theoretical Synthesis and Empirical
    Findings," Journal of Management Information Systems (23:3), pp. 45-70.
    44. Llisterri, J. 1992. "Speaking Styles in Speech Research," Workshop on Integrating
    Speech and Natural Language: Citeseer.
    45. Marshall, D., and Sidorov, K. 2001. "Introduction to Multimedia," UK: School of
    Computer Science & Informatics Cardiff University).
    46. Martikainen, K. 2020. "Audio-Based Stylistic Characteristics of Podcasts for
    Search and Recommendation: A User and Computational Analysis." University of
    Twente.
    47. Massquantity, 2021. LibRecommender [Source code].
    https://github.com/massquantity/LibRecommender. (Last access date 2022/07)
    48. Mehrabian, A., and Russell, J. A. 1974. An Approach to Environmental
    Psychology. the MIT Press.
    49. Moscato, V., Picariello, A., and Sperli, G. 2020. "An Emotional Recommender
    System for Music," IEEE Intelligent Systems).
    50. Murray, G., Nicholas, C. L., Kleiman, J., Dwyer, R., Carrington, M. J., Allen, N.
    B., and Trinder, J. 2009. "Nature’s Clocks and Human Mood: The Circadian
    System Modulates Reward Motivation," Emotion (9:5), p. 705.
    79
    51. National Audiovisual Institute, 2022.[Source code]
    https://github.com/ina-foss/inaSpeechSegmenter (Last access date 2022/07)
    52. Nazari, Z., Charbuillet, C., Pages, J., Laurent, M., Charrier, D., Vecchione, B., and
    Carterette, B. 2020. "Recommending Podcasts for Cold-Start Users Based on
    Music Listening and Taste," in: Proceedings of the 43rd International ACM SIGIR
    Conference on Research and Development in Information Retrieval. Virtual Event,
    China: Association for Computing Machinery, pp. 1041–1050.
    53. Panagiotakis, C., Papadakis, H., and Fragopoulou, P. 2021. "A Dual Hybrid
    Recommender System Based on Scor and the Random Forest," Computer Science
    and Information Systems (18:1), pp. 115-128.
    54. Raheem, K. R., and Ali, I. H. 2020. "Multimodal Content-Based Recommender
    System Using Three-Dimension Convolution Neural Network," COMPUSOFT:
    An International Journal of Advanced Computer Technology (9:5).
    55. Rana, M. K. C. 2012. "Survey Paper on Recommendation System,").
    56. Rendle, S. 2010. "Factorization Machines," 2010 IEEE International conference
    on data mining: IEEE, pp. 995-1000.
    57. Roenneberg, T. 2012. "What Is Chronotype?," Sleep and biological rhythms (10:2),
    pp. 75-76.
    58. Ruff, J. 2002. "Information Overload: Causes, Symptoms and Solutions," Harvard
    Graduate School of Education), pp. 1-13.
    59. Ryu, J., Capistrano, E. P., and Lin, H.-C. 2020. "Non-Korean Consumers’
    Preferences on Korean Popular Music: A Two-Country Study," International
    Journal of Market Research (62:2), pp. 234-252.
    60. Sanz-Cruzado, J., Castells, P., and López, E. 2019. "A Simple Multi-Armed
    Nearest-Neighbor Bandit for Interactive Recommendation," Proceedings of the
    13th ACM Conference on Recommender Systems, pp. 358-362.
    61. Sarwar, B., Karypis, G., Konstan, J., and Riedl, J. 2000. "Application of
    Dimensionality Reduction in Recommender System-a Case Study," Minnesota
    Univ Minneapolis Dept of Computer Science.
    62. Selvi, C., and Sivasankar, E. 2019. "An Efficient Context-Aware Music
    Recommendation Based on Emotion and Time Context," in Data Science and Big
    Data Analytics. Springer, pp. 215-228.
    63. Shani, G., and Gunawardana, A. 2011. "Evaluating Recommendation Systems,"
    in Recommender Systems Handbook. Springer, pp. 257-297.
    64. Son, J., and Kim, S. B. 2018. "Academic Paper Recommender System Using
    Multilevel Simultaneous Citation Networks," Decision Support Systems (105), pp.
    24-33.
    65. Subramaniyaswamy, V., and Logesh, R. 2017. "Adaptive Knn Based
    Recommender System through Mining of User Preferences," Wireless Personal
    Communications (97:2), pp. 2229-2247.
    66. Sulaiman, N., Muhammad, A. M., Ganapathy, N. N. D. F., Khairuddin, Z., and
    Othman, S. 2017. "A Comparison of Students` Performances Using Audio Only
    and Video Media Methods," English language teaching (10:7), pp. 210-215.
    67. Taylor, B. J., and Hasler, B. P. 2018. "Chronotype and Mental Health: Recent
    Advances," Current psychiatry reports (20:8), pp. 1-10.
    68. Thales,2021. PySpeech [Source code]
    https://github.com/thalesaguiar21/PySpeech (Last access date 2022/07)
    69. Thorat, P. B., Goudar, R., and Barve, S. 2015. "Survey on Collaborative Filtering,
    Content-Based Filtering and Hybrid Recommendation System," International
    Journal of Computer Applications (110:4), pp. 31-36.
    80
    70. Tsagkias, M., Larson, M., and De Rijke, M. 2010. "Predicting Podcast Preference:
    An Analysis Framework and Its Application," Journal of the American Society for
    information Science and Technology (61:2), pp. 374-391.
    71. Volkovs, M., Yu, G. W., and Poutanen, T. 2017. "Content-Based Neighbor
    Models for Cold Start in Recommender Systems," in Proceedings of the
    Recommender Systems Challenge 2017. pp. 1-6.
    72. Volokhin, S., and Agichtein, E. 2018. "Understanding Music Listening Intents
    During Daily Activities with Implications for Contextual Music
    Recommendation," Proceedings of the 2018 Conference on Human Information
    Interaction & Retrieval, pp. 313-316.
    73. Wang, D., Zhang, X., Yu, D., Xu, G., and Deng, S. 2020a. "Came: Content-and
    Context-Aware Music Embedding for Recommendation," IEEE transactions on
    neural networks and learning systems (32:3), pp. 1375-1388.
    74. Wang, R., Ma, X., Jiang, C., Ye, Y., and Zhang, Y. 2020b. "Heterogeneous
    Information Network-Based Music Recommendation System in Mobile
    Networks," Computer Communications (150), pp. 429-437.
    75. Wang, X., Rosenblum, D., and Wang, Y. 2012. "Context-Aware Mobile Music
    Recommendation for Daily Activities," Proceedings of the 20th ACM
    international conference on Multimedia, pp. 99-108.
    76. Xing, Z., Parandehgheibi, M., Xiao, F., Kulkarni, N., and Pouliot, C. 2016.
    "Content-Based Recommendation for Podcast Audio-Items Using Natural
    Language Processing Techniques," 2016 IEEE International Conference on Big
    Data (Big Data): IEEE, pp. 2378-2383.
    77. Xu, L., Wen, X., Shi, J., Li, S., Xiao, Y., Wan, Q., and Qian, X. 2021. "Effects of
    Individual Factors on Perceived Emotion and Felt Emotion of Music: Based on
    Machine Learning Methods," Psychology of Music (49:5), pp. 1069-1087.
    78. Xu, X., Dutta, K., and Ge, C. 2018. "Do Adjective Features from User Reviews
    Address Sparsity and Transparency in Recommender Systems?," Electronic
    Commerce Research and Applications (29), pp. 113-123.
    79. Yang, L., Sobolev, M., Wang, Y., Chen, J., Dunne, D., Tsangouri, C., Dell, N.,
    Naaman, M., and Estrin, D. 2019. "How Intention Informed Recommendations
    Modulate Choices: A Field Study of Spoken Word Content," The World Wide Web
    Conference, pp. 2169-2180.
    80. Ye, B. K., Tu, Y. J. T., and Liang, T. P. 2019. "A Hybrid System for Personalized
    Content Recommendation," Journal of Electronic Commerce Research (20:2), pp.
    91-104.
    81. Yin, H., Cui, B., Li, J., Yao, J., and Chen, C. 2012. "Challenging the Long Tail
    Recommendation," arXiv preprint arXiv:1205.6700).
    82. Yu, T., Guo, J., Li, W., and Lu, M. 2021. "A Mixed Heterogeneous Factorization
    Model for Non-Overlapping Cross-Domain Recommendation," Decision Support
    Systems), p. 113625.
    83. Zhang, H., Lu, Y., Gupta, S., and Zhao, L. 2014. "What Motivates Customers to
    Participate in Social Commerce? The Impact of Technological Environments and
    Virtual Customer Experiences," Information & Management (51:8), pp. 1017-
    1030.
    84. Zhu, Y., Lin, J., He, S., Wang, B., Guan, Z., Liu, H., and Cai, D. 2019. "Addressing
    the Item Cold-Start Problem by Attribute-Driven Active Learning," IEEE
    Transactions on Knowledge and Data Engineering (32:4), pp. 631-644
    Description: 碩士
    國立政治大學
    資訊管理學系
    109356024
    Source URI: http://thesis.lib.nccu.edu.tw/record/#G0109356024
    Data Type: thesis
    DOI: 10.6814/NCCU202201103
    Appears in Collections:[資訊管理學系] 學位論文

    Files in This Item:

    File Description SizeFormat
    602401.pdf3014KbAdobe PDF20View/Open


    All items in 政大典藏 are protected by copyright, with all rights reserved.


    社群 sharing

    著作權政策宣告 Copyright Announcement
    1.本網站之數位內容為國立政治大學所收錄之機構典藏,無償提供學術研究與公眾教育等公益性使用,惟仍請適度,合理使用本網站之內容,以尊重著作權人之權益。商業上之利用,則請先取得著作權人之授權。
    The digital content of this website is part of National Chengchi University Institutional Repository. It provides free access to academic research and public education for non-commercial use. Please utilize it in a proper and reasonable manner and respect the rights of copyright owners. For commercial use, please obtain authorization from the copyright owner in advance.

    2.本網站之製作,已盡力防止侵害著作權人之權益,如仍發現本網站之數位內容有侵害著作權人權益情事者,請權利人通知本網站維護人員(nccur@nccu.edu.tw),維護人員將立即採取移除該數位著作等補救措施。
    NCCU Institutional Repository is made to protect the interests of copyright owners. If you believe that any material on the website infringes copyright, please contact our staff(nccur@nccu.edu.tw). We will remove the work from the repository and investigate your claim.
    DSpace Software Copyright © 2002-2004  MIT &  Hewlett-Packard  /   Enhanced by   NTU Library IR team Copyright ©   - Feedback