Scale-Adaptive Group Optimization for Social Activity Planning
February 24, 2015 Β· Declared Dead Β· π Pacific-Asia Conference on Knowledge Discovery and Data Mining
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Authors
Hong-Han Shuai, De-Nian Yang, Philip S. Yu, Ming-Syan Chen
arXiv ID
1502.06819
Category
cs.SI: Social & Info Networks
Citations
2
Venue
Pacific-Asia Conference on Knowledge Discovery and Data Mining
Last Checked
3 months ago
Abstract
Studies have shown that each person is more inclined to enjoy a group activity when 1) she is interested in the activity, and 2) many friends with the same interest join it as well. Nevertheless, even with the interest and social tightness information available in online social networks, nowadays many social group activities still need to be coordinated manually. In this paper, therefore, we first formulate a new problem, named Participant Selection for Group Activity (PSGA), to decide the group size and select proper participants so that the sum of personal interests and social tightness of the participants in the group is maximized, while the activity cost is also carefully examined. To solve the problem, we design a new randomized algorithm, named Budget-Aware Randomized Group Selection (BARGS), to optimally allocate the computation budgets for effective selection of the group size and participants, and we prove that BARGS can acquire the solution with a guaranteed performance bound. The proposed algorithm was implemented in Facebook, and experimental results demonstrate that social groups generated by the proposed algorithm significantly outperform the baseline solutions.
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