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Abstract:
We present Juxtaposed approximate PageRank ({JXP}), a distributed algorithm for
computing PageRank-style authority scores of Web pages on a peer-to-peer
({P}2{P}) network. Unlike previous algorithms,{JXP} allows peers to have
overlapping content and requires no a priori knowledge of other peers’ content.
Our algorithm combines locally computed authority scores with information
obtained from other peers by means of random meetings among the peers in the
network. This computation is based on a Markov-chain state-lumping technique,
and iteratively approximates global authority scores. The algorithm scales with
the number of peers in the network and we show that the {JXP} scores converge
to the true PageRank scores that one would obtain with a centralized algorithm.
Finally, we show how to deal with misbehaving peers by extending {JXP} with a
reputation model.