Measures of node ranking, such as personalized PageRank, are utilized in many web and social-network based prediction and recommendation applications. Despite their effectiveness when the underlying graph is certain, however, these measures become difficult to apply in the presence of uncertainties, as they are not designed for graphs that include uncertain information, such as edges that mutually exclude each other. While there are several ways to naively extend existing techniques (such as trying to encode uncertainties as edge weights or computing all possible scenarios), as we discuss in this paper, these either lead to large degrees of errors or are very expensive to compute, as the number of possible worlds can grow exponentially with the amount of uncertainty. To tackle with this challenge, in this paper, we propose an efficient Uncertain Personalized PageRank (UPPR) algorithm to approximately compute personalized PageRank values on an uncertain graph with edge uncertainties. UPPR avoids enumeration of all possible worlds, yet it is able to achieve comparable accuracy by carefully encoding edge uncertainties in a data structure that leads to fast approximations. Experimental results show that UPPR is very efficient in terms of execution time and its accuracy is comparable or better than more costly alternatives.

Personalized PageRank in Uncertain Graphs with Mutually Exclusive Edges

SAPINO, Maria Luisa
2017-01-01

Abstract

Measures of node ranking, such as personalized PageRank, are utilized in many web and social-network based prediction and recommendation applications. Despite their effectiveness when the underlying graph is certain, however, these measures become difficult to apply in the presence of uncertainties, as they are not designed for graphs that include uncertain information, such as edges that mutually exclude each other. While there are several ways to naively extend existing techniques (such as trying to encode uncertainties as edge weights or computing all possible scenarios), as we discuss in this paper, these either lead to large degrees of errors or are very expensive to compute, as the number of possible worlds can grow exponentially with the amount of uncertainty. To tackle with this challenge, in this paper, we propose an efficient Uncertain Personalized PageRank (UPPR) algorithm to approximately compute personalized PageRank values on an uncertain graph with edge uncertainties. UPPR avoids enumeration of all possible worlds, yet it is able to achieve comparable accuracy by carefully encoding edge uncertainties in a data structure that leads to fast approximations. Experimental results show that UPPR is very efficient in terms of execution time and its accuracy is comparable or better than more costly alternatives.
2017
SIGIR'17 -The 40th International ACM SIGIR Conference on Research and Development in Information Retrieval
Tokio
7-11 Agosto 2017
Proceedings of the 40th International ACM SIGIR Conference on Research and Development in Information Retrieval
ACM
525
534
9781450350228
http://dl.acm.org/citation.cfm?doid=3077136.3080794
Kim, Jung Hyun; Li, Mao-Lin; Candan, K. Selçuk; Sapino, Maria Luisa
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2318/1647178
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