Semantic and Influence aware k-Representative Queries over Social Streams
Yanhao Wang, Yuchen Li, Kian-Lee Tan

TL;DR
This paper introduces a novel $k$-SIR query method for social streams that considers both semantic relevance and influence to retrieve representative elements, improving social search quality.
Contribution
It proposes a new $k$-SIR query model based on topic modeling and influence, along with two efficient approximation algorithms with theoretical guarantees.
Findings
Effective in retrieving representative social stream elements
Algorithms outperform existing methods in accuracy and speed
Scalable to large real-world datasets
Abstract
Massive volumes of data continuously generated on social platforms have become an important information source for users. A primary method to obtain fresh and valuable information from social streams is \emph{social search}. Although there have been extensive studies on social search, existing methods only focus on the \emph{relevance} of query results but ignore the \emph{representativeness}. In this paper, we propose a novel Semantic and Influence aware -Representative (-SIR) query for social streams based on topic modeling. Specifically, we consider that both user queries and elements are represented as vectors in the topic space. A -SIR query retrieves a set of elements with the maximum \emph{representativeness} over the sliding window at query time w.r.t. the query vector. The representativeness of an element set comprises both semantic and influence scores computed by…
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Taxonomy
TopicsRecommender Systems and Techniques · Caching and Content Delivery · Mobile Crowdsensing and Crowdsourcing
