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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

To search or to crawl?: towards a query optimizer for text-centric tasks

TL;DR: This paper presents fundamental building blocks to make the choice of execution plans for text-centric tasks in an informed, cost-based way, and shows how to analyze query- and crawl-based plans in terms of both execution time and output completeness.
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Snowball: a prototype system for extracting relations from large text collections

TL;DR: This demo presents an interactive prototype of the Snowball system for extracting relations from collections of plain-text documents with minimal human participation, which builds on the DIPRE idea introduced by Brin.
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Predicting web searcher satisfaction with existing community-based answers

TL;DR: This work analyzes a large number of web searches that result in a visit to a popular CQA site, and identifies unique characteristics of searcher satisfaction in this setting, namely, the effects of query clarity, query-to-question match, and answer quality.
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Identifying "best bet" web search results by mining past user behavior

TL;DR: This work proposes an effective approach of leveraging millions of past user interactions with a web search engine to automatically detect "best bet" top results preferred by majority of users, and shows that the general machine learning approach achieves precision comparable to a heavily tuned, domain-specific algorithm, with significantly higher coverage.
Proceedings ArticleDOI

When a Knowledge Base Is Not Enough: Question Answering over Knowledge Bases with External Text Data

TL;DR: This work revisits different phases in the KBQA process and demonstrates that text resources improve question interpretation, candidate generation and ranking, and introduces a new system, Text2KB, that enriches question answering over a knowledge base by using external text data.