Title of article
Integrating multiple windows and document features for expert finding
Author/Authors
Jianhan Zhu1، نويسنده , , Dawei Song2، نويسنده , , Stefan Rüger3، نويسنده ,
Issue Information
ماهنامه با شماره پیاپی سال 2009
Pages
22
From page
694
To page
715
Abstract
Expert finding is a key task in enterprise search and has recently attracted lots of attention from both research and industry communities. Given a search topic, a prominent existing approach is to apply some information retrieval (IR) system to retrieve top ranking documents, which will then be used to derive associations between experts and the search topic based on cooccurrences. However, we argue that expert finding is more sensitive to multiple levels of associations and document features that current expert finding systems insufficiently address, including (a) multiple levels of associations between experts and search topics, (b) document internal structure, and (c) document authority. We propose a novel approach that integrates the above-mentioned three aspects as well as a query expansion technique in a two-stage model for expert finding. A systematic evaluation is conducted on TREC collections to test the performance of our approach as well as the effects of multiple windows, document features, and query expansion. These experimental results show that query expansion can dramatically improve expert finding performance with statistical significance. For three well-known IR models with or without query expansion, document internal structures help improve a single window-based approach but without statistical significance, while our novel multiple window-based approach can significantly improve the performance of a single window-based approach both with and without document internal structures.
Journal title
Journal of the American Society for Information Science and Technology
Serial Year
2009
Journal title
Journal of the American Society for Information Science and Technology
Record number
993948
Link To Document