PAPER DIGEST
Most Influential WWW 2003 Paper · 2026-03 edition

Scaling Personalized Web Search

Glen Jeh; Jennifer Widom

Venue
ACM Web Conference (WWW) 2003
Recognition
Most Influential WWW 2003 Paper (Rank No. 3)
Edition
2026-03
Impact factor
10
Certificate ID
f1ac93a4b8222157

Abstract

Recent web search techniques augment traditional text matching with a global notion of "importance" based on the linkage structure of the web, such as in Google's PageRank algorithm. For more refined searches, this global notion of importance can be specialized to create personalized views of importance--for example, importance scores can be biased according to a user-specified set of initially-interesting pages. Computing and storing all possible personalized views in advance is impractical, as is computing personalized views at query time, since the computation of each view requires an iterative computation over the web graph. We present new graph-theoretical results, and a new technique based on these results, that encode personalized views as partial vectors. Partial vectors are shared across multiple personalized views, and their computation and storage costs scale well with the number of views. Our approach enables incremental computation, so that the construction of personalized views from partial vectors is practical at query time. We present efficient dynamic programming algorithms for computing partial vectors, an algorithm for constructing personalized views from partial vectors, and experimental results demonstrating the effectiveness and scalability of our techniques.

Download PDF certificate