基于地域特征和异构社交关系的事件推荐算法研究

乔 治,周 川,纪现才,曹亚男,郭 莉

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PDF(4494 KB)
中文信息学报 ›› 2016, Vol. 30 ›› Issue (5) : 47-56.
综述

基于地域特征和异构社交关系的事件推荐算法研究

  • 乔 治1,2,周 川2,3,纪现才3,曹亚男3,郭 莉3
作者信息 +

Event Recommendation Based on Geographical Features and
Heterogeneous Social Relationships

  • QIAO Zhi1,2, ZHOU Chuan2,3, JI Xiancai3, CAO Yanan3, GUO Li3
Author information +
History +

摘要

近几年,在基于事件的社交网络(EBSNs)服务中,为便于增强用户体验,事件推荐任务一直被广泛研究。本文基于对EBSN中用户行为数据的详细分析,提出了一种新型的融合多种数据特征的潜在因子模型。该模型综合考虑EBSN中两种新型的数据特征: 异构的社交关系特征(线上社交关系+线下社交关系)和用户参与行为的地域性特征。基于真实的Meetup数据集,实验结果表明我们的算法在解决事件推荐问题时比传统的算法有更好的性能。

Abstract

In order to improve users' experience in event-based social networks (EBSNs) services, the event recommendation task has been studied in the recent years. In this paper, the user motivation data of EBSN applications is analyzed, and a novel latent factor model unifying multiple data features is proposed. This method considers two new types of features, i.e., heterogeneous online& offline social relationships and regional preference of users, and applies them for event recommendation. Experimental results on real-world data sets showed our method had better performance than some traditional methods.

关键词

事件推荐 / 基于事件的社交网络 / 用户行为倾向 / 协从过滤 / 地域特征 / 异构社交关系

Key words

event recommendation / event-based social network / collaborative filtering / regional preference / heterogeneous social relationship

引用本文

导出引用
乔 治,周 川,纪现才,曹亚男,郭 莉. 基于地域特征和异构社交关系的事件推荐算法研究. 中文信息学报. 2016, 30(5): 47-56
QIAO Zhi, ZHOU Chuan, JI Xiancai, CAO Yanan, GUO Li. Event Recommendation Based on Geographical Features and
Heterogeneous Social Relationships. Journal of Chinese Information Processing. 2016, 30(5): 47-56

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基金

国家重点基础研究发展计划(973计划)(2013CB329605);国家自然科学基金(61502479,61403369);中国科学院战略先导科技专项(XDA06030200)
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