Abstract
In this paper, we analyze the efficiency of Monte Carlo methods for incremental computation of PageRank, personalized PageRank, and similar random walk based methods (with focus on SALSA), on large-scale dynamically evolving social networks. We assume that the graph of friendships is stored in distributed shared memory, as is the case for large social networks such as Twitter.
For global PageRank, we assume that the social network has
n
nodes, and
m
adversarially chosen edges arrive in a random order. We show that with a reset probability of ε, the expected total work needed to maintain an accurate estimate (using the Monte Carlo method) of the PageRank of every node at all times is [EQUATION]. This is significantly better than all known bounds for incremental PageRank. For instance, if we naively recompute the PageRanks as each edge arrives, the simple power iteration method needs [EQUATION] total time and the Monte Carlo method needs
O
(
mn
/ε) total time; both are prohibitively expensive. We also show that we can handle deletions equally efficiently.
We then study the computation of the top
k
personalized PageRanks starting from a seed node, assuming that personalized PageRanks follow a power-law with exponent α < 1. We show that if we store
R
>
q
ln
n
random walks starting from every node for large enough constant
q
(using the approach outlined for global PageRank), then the expected number of calls made to the distributed social network database is
O
(
k
/(
R
(1-α)/α
)). We also present experimental results from the social networking site, Twitter, verifying our assumptions and analyses. The overall result is that this algorithm is fast enough for real-time queries over a dynamic social network.
Subject
General Earth and Planetary Sciences,Water Science and Technology,Geography, Planning and Development
Cited by
146 articles.
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