scispace - formally typeset
E

Ellen M. Voorhees

Researcher at National Institute of Standards and Technology

Publications -  182
Citations -  20400

Ellen M. Voorhees is an academic researcher from National Institute of Standards and Technology. The author has contributed to research in topics: Text Retrieval Conference & Relevance (information retrieval). The author has an hindex of 72, co-authored 177 publications receiving 19400 citations. Previous affiliations of Ellen M. Voorhees include Princeton University & Siemens.

Papers
More filters
Proceedings ArticleDOI

Query expansion using lexical-semantic relations

TL;DR: Examination of the utility of lexical query expansion in the large, diverse TREC collection shows this query expansion technique makes little difference in retrieval effectiveness if the original queries are relatively complete descriptions of the information being sought even when the concepts to be expanded are selected by hand.
Proceedings ArticleDOI

Retrieval evaluation with incomplete information

TL;DR: It is shown that current evaluation measures are not robust to substantially incomplete relevance judgments, and a new measure is introduced that is both highly correlated with existing measures when complete judgments are available and more robust to incomplete judgment sets.
Journal ArticleDOI

Variations in relevance judgments and the measurement of retrieval effectiveness

TL;DR: Very high correlations were found among the rankings of systems produced using different relevance judgment sets, indicating that the comparative evaluation of retrieval performance is stable despite substantial differences in relevance judgments, and thus reaffirm the use of the TREC collections as laboratory tools.
Journal ArticleDOI

Evaluating Evaluation Measure Stability

TL;DR: A novel way of examining the accuracy of the evaluation measures commonly used in information retrieval experiments is presented, which validates several of the rules-of-thumb experimenters use and challenges other beliefs, such as the common evaluation measures are equally reliable.