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Eugene Agichtein

Researcher at Emory University

Publications -  166
Citations -  11564

Eugene Agichtein is an academic researcher from Emory University. The author has contributed to research in topics: Question answering & Web search query. The author has an hindex of 47, co-authored 166 publications receiving 10917 citations. Previous affiliations of Eugene Agichtein include Amazon.com & Microsoft.

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Proceedings ArticleDOI

Snowball: extracting relations from large plain-text collections

TL;DR: This paper develops a scalable evaluation methodology and metrics for the task, and presents a thorough experimental evaluation of Snowball and comparable techniques over a collection of more than 300,000 newspaper documents.
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Finding high-quality content in social media

TL;DR: This paper introduces a general classification framework for combining the evidence from different sources of information, that can be tuned automatically for a given social media type and quality definition, and shows that its system is able to separate high-quality items from the rest with an accuracy close to that of humans.
Proceedings ArticleDOI

Improving web search ranking by incorporating user behavior information

TL;DR: In this paper, the authors show that incorporating implicit feedback can augment other features, improving the accuracy of a competitive web search ranking algorithm by as much as 31% relative to the original performance.
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Learning user interaction models for predicting web search result preferences

TL;DR: This work presents a real-world study of modeling the behavior of web search users to predict web search result preferences and generalizes the approach to model user behavior beyond clickthrough, which results in higher preference prediction accuracy than models based on clickthrough information alone.
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A word at a time: computing word relatedness using temporal semantic analysis

TL;DR: This paper proposes a new semantic relatedness model, Temporal Semantic Analysis (TSA), which captures this temporal information in word semantics as a vector of concepts over a corpus of temporally-ordered documents.