Multimedia Data Mining and Analytics (Disruptive Innovation)

This book reflects on the major focus shifts in multimedia data mining research and applications toward networked social communities, mobile devices, and sensors. Vast amount of multimedia are produced, shared, and accessed everyday in various social platforms. These multimedia objects (images, vi...

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Auteurs principaux: Baughman, Aaron K., Gao, Jiang, Pan, Jia-Yu, Petrushin, Valery A.
Format: Livre
Langue:English
Publié: Springer 2015
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Accès en ligne:https://scholar.dlu.edu.vn/thuvienso/handle/DLU123456789/56237
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Résumé:This book reflects on the major focus shifts in multimedia data mining research and applications toward networked social communities, mobile devices, and sensors. Vast amount of multimedia are produced, shared, and accessed everyday in various social platforms. These multimedia objects (images, videos, texts, tags, sensor readings, etc.) represent rich, multifaceted recordings of human behavior in the networked society, which lead to a range of important social applications, such as consumer behavior forecasting for business to optimize advertising and product recommendations, local knowledge discovery to enrich customer experience (e.g., for tourism or shopping), detection of emergent news events and trends, etc. In addition to techniques for mining single media items, all these applications require new methods for discovering robust features and stable relationships among the content of different media modalities and users, in a dynamic, social context rich, and likely noisy environment....