Title: Discovery of Aggregate Usage Profiles for Web Personalization
Authors: Bamshad Mobasher, Honghua Dai, Tao Luo, Miki Nakagawa, Yuqing Sun, Jim Wiltshire
Abstract: Web usage mining, possibly used in conjunction with standard approaches
to personalization such as collaborative filtering, can help address
some of the shortcomings of these techniques, including reliance on
subjective user ratings, lack of scalability, and poor performance in
the face high-dimensional and sparse data. However, the discovery of
patterns from usage data by itself is not sufficient for performing the
personalization tasks. The critical step is the effective derivation of
good quality and useful (i.e., actionable) "aggregate usage profiles"
from these patterns. In this paper we present and experimentally
evaluate two techniques, based on clustering of user transactions and
clustering of pageviews, in order to discover overlapping aggregate
profiles that can be effectively used by recommender systems for
real-time personalization. We evaluate these techniques both in terms
of the quality of the individual profiles generated, as well as in the
context of providing recommendations as an integrated part of a
personalization engine.
Full Paper:  [pdf]