Poster
Track: Posters
Paper Title:
Behavioral Classification on the Click Graph
Authors:
- Martin Szummer(Microsoft Research Cambridge)
- Nick Craswell(Microsoft Research Cambridge)
Abstract:
A bipartite query-URL graph, where an edge indicates that a document was
clicked for a query, is a useful construct for finding groups of related
queries and URLs. Here we use this behavior graph for classification. We
choose a click graph sampled from two weeks of image search activity, and the
task of "adult" filtering: identifying content in the graph that is
inappropriate for minors. We show how to perform classification using random
walks on this graph, and two methods for estimating classifier parameters.
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