Semi-metric Behavior in Document Networks and its Application to Recommendation Systems
L.M. Rocha

TL;DR
This paper explores semi-metric properties in document networks to improve recommendation systems by identifying implicit associations and effectively combining evidence from multiple sources using advanced evidence theory techniques.
Contribution
It introduces the concept of semi-metric distance graphs, measures their semi-metric behavior, and develops an algorithm to combine evidence from multiple distance graphs in recommendation systems.
Findings
Semi-metric ratios effectively identify implicit associations.
The evidence combination algorithm improves recommendation accuracy.
Application to digital libraries and web sites demonstrates practical utility.
Abstract
Recommendation systems for different Document Networks (DN) such as the World Wide Web (WWW) and Digital Libraries, often use distance functions extracted from relationships among documents and keywords. For instance, documents in the WWW are related via a hyperlink network, while documents in bibliographic databases are related by citation and collaboration networks. Furthermore, documents are related to keyterms. The distance functions computed from these relations establish associative networks among items of the DN, referred to as Distance Graphs, which allow recommendation systems to identify relevant associations for individual users. However, modern recommendation systems need to integrate associative data from multiple sources such as different databases, web sites, and even other users. Thus, we are presented with a problem of combining evidence (about associations between…
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Taxonomy
TopicsRecommender Systems and Techniques · Algorithms and Data Compression · Data Management and Algorithms
