Information Filtering and Information Retrieval: Two Sides of the Same Coin (1992)
| Venue: | COMMUNICATIONS OF THE ACM |
| Citations: | 304 - 5 self |
BibTeX
@ARTICLE{Belkin92informationfiltering,
author = {Nicholas J. Belkin and W. Bruce Croft},
title = {Information Filtering and Information Retrieval: Two Sides of the Same Coin},
journal = {COMMUNICATIONS OF THE ACM},
year = {1992},
volume = {35},
number = {12},
pages = {29--38}
}
Years of Citing Articles
OpenURL
Abstract
Information filtering systems are designed for unstructured or semistructured data, as opposed to database applications, which use very structured data. The systems also deal primarily with textual information, but they may also entail images, voice, video or other data types that are part of multimedia information systems. Information filtering systems also involve a large amount of data and streams of incoming data, whether broadcast from a remote source or sent directly by other sources. Filtering is based on descriptions of individual or group information preferences, or profiles, that typically represent long-term interests. Filtering also implies removal of data from an incoming stream rather than finding data in the stream; users see only the data that is extracted. Models of information retrieval and filtering, and lessons for filtering from retrieval research are presented.







