This book frames a peer-to-peer information retrieval problem as a
multi-agent framework and attacks it from an organizational
perspective by exploring various adaptive, self-organizing
topological organizations, designing appropriate coordination
strategies, and exploiting learning techniques to create more
accurate routing policy for large-scale agent organizations. In
addition, a reinforcement-learning based approach is developed in
this thesis to take advantage of the run-time characteristics of
P2P IR systems, including environmental parameters, bandwidth
usage, and historical information about past search sessions. In
the learning process, agents refine their content routing policies
by constructing relatively accurate routing tables based on a
Q-learning algorithm. Experimental results show that this learning
algorithm considerably improves the performance of distributed
search sessions in P2P IR systems. The book is addressed to
researchers and practitioners in information retrieval and search
engine, content-based routing areas.
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