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Shilad Sen

Researcher at Macalester College

Publications -  44
Citations -  4267

Shilad Sen is an academic researcher from Macalester College. The author has contributed to research in topics: Semantic similarity & Recommender system. The author has an hindex of 25, co-authored 43 publications receiving 3939 citations. Previous affiliations of Shilad Sen include University of Minnesota & IBM.

Papers
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Book ChapterDOI

Collaborative filtering recommender systems

TL;DR: This chapter introduces the core concepts of collaborative filtering, its primary uses for users of the adaptive web, the theory and practice of CF algorithms, and design decisions regarding rating systems and acquisition of ratings.
Proceedings ArticleDOI

tagging, communities, vocabulary, evolution

TL;DR: A user-centric model of vocabulary evolution in tagging communities based on community influence and personal tendency is presented and evaluated in an emergent tagging system by introducing tagging features into the MovieLens recommender system.
Proceedings ArticleDOI

Tagommenders: connecting users to items through tags

TL;DR: Algorithms combining tags with recommenders may deliver both the automation inherent in recommenders, and the flexibility and conceptual comprehensibility inherent in tagging systems, and they may lead to flexible recommender systems that leverage the characteristics of items users find most important.
Proceedings ArticleDOI

Tagsplanations: explaining recommendations using tags

TL;DR: This paper develops novel algorithms for estimating tag relevance and tag preference, and conducts a user study exploring the roles of tag relevanceand tag preference in promoting effective tagsplanations.
Proceedings ArticleDOI

WP:clubhouse?: an exploration of Wikipedia's gender imbalance

TL;DR: A scientific exploration of the gender imbalance in the English Wikipedia's population of editors confirms the presence of a large gender gap among editors and a corresponding gender-oriented disparity in the content of Wikipedia's articles.