inria-00189149, version 1
Entity Ranking in Wikipedia
Anne-Marie Vercoustre
1, 2James A. Thom a, 3Jovan Pehcevski
1, 2
the 23rd Annual ACM Symposium on Applied Computing (2008)
Abstract: The traditional entity extraction problem lies in the ability of extracting named entities from plain text using natural language processing techniques and intensive training from large document collections. Examples of named entities include organisations, people, locations, or dates. There are many research activities involving named entities; we are interested in entity ranking in the field of information retrieval. In this paper, we describe our approach to identifying and ranking entities from the INEX Wikipedia document collection. Wikipedia offers a number of interesting features for entity identification and ranking that we first introduce. We then describe the principles and the architecture of our entity ranking system, and introduce our methodology for evaluation. Our preliminary results show that the use of categories and the link structure of Wikipedia, together with entity examples, can significantly improve retrieval effectiveness.
- a – RMIT
- 1: INRIA Rocquencourt (INRIA Rocquencourt)
- INRIA
- 2: AxIS (INRIA Rocquencourt / INRIA Sophia Antipolis)
- INRIA
- 3: Computer Science and Information Technology (CSIT)
- RMIT University
- Domain : Computer Science/Information Retrieval
Computer Science/Document and Text Processing - Keywords : Entity Ranking – XML Retrieval – Test collection – Wikipedia
- Comment : to appear
- inria-00189149, version 1
- http://hal.inria.fr/inria-00189149
- oai:hal.inria.fr:inria-00189149
- From: Anne-Marie Vercoustre
- Submitted on: Tuesday, 20 November 2007 12:35:10
- Updated on: Tuesday, 20 November 2007 16:04:51






Associated documents

Export