Contextual Online Learning for Multimedia Content Aggregation
Cem Tekin, Mihaela van der Schaar

TL;DR
This paper introduces a distributed online learning framework for multimedia content aggregation that adapts to evolving user preferences and content characteristics, ensuring accurate predictions and efficient content matching in dynamic environments.
Contribution
It presents a novel online learning algorithm for multimedia content aggregation that handles unknown, evolving preferences and operates efficiently with incomplete feedback.
Findings
Proves bounds for learning accuracy and speed.
Demonstrates effectiveness in diverse settings.
Operates efficiently with missing feedback.
Abstract
The last decade has witnessed a tremendous growth in the volume as well as the diversity of multimedia content generated by a multitude of sources (news agencies, social media, etc.). Faced with a variety of content choices, consumers are exhibiting diverse preferences for content; their preferences often depend on the context in which they consume content as well as various exogenous events. To satisfy the consumers' demand for such diverse content, multimedia content aggregators (CAs) have emerged which gather content from numerous multimedia sources. A key challenge for such systems is to accurately predict what type of content each of its consumers prefers in a certain context, and adapt these predictions to the evolving consumers' preferences, contexts and content characteristics. We propose a novel, distributed, online multimedia content aggregation framework, which gathers…
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Taxonomy
TopicsRecommender Systems and Techniques · Advanced Bandit Algorithms Research · Data Stream Mining Techniques
