In current era of big data, a wide variety of high-volume data having different veracity can be easily collected or generated at a high velocity. Social network data, as well as audio and video in social media and social networking sites, are examples of big data. Embedded in these big data are valuable information and knowledge. To discovery this implicit, previously unknown and potentially useful information and knowledge from these big data, some big data science solutions are in demand. In this paper, we explore big data mining techniques for detecting outliers or anomalies from YouTube video viewing history and data-cleaning this viewing log so that the user-preferred YouTube viewing patterns or trends can be recognized and the prediction of user-preferred YouTube videos can then be enhanced.
Enhanced Prediction of User-Preferred YouTube Videos Based on Cleaned Viewing Pattern History
Cuzzocrea A;
2017
Abstract
In current era of big data, a wide variety of high-volume data having different veracity can be easily collected or generated at a high velocity. Social network data, as well as audio and video in social media and social networking sites, are examples of big data. Embedded in these big data are valuable information and knowledge. To discovery this implicit, previously unknown and potentially useful information and knowledge from these big data, some big data science solutions are in demand. In this paper, we explore big data mining techniques for detecting outliers or anomalies from YouTube video viewing history and data-cleaning this viewing log so that the user-preferred YouTube viewing patterns or trends can be recognized and the prediction of user-preferred YouTube videos can then be enhanced.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.