会议专题

Differential evolution-based fusion and its properties for Web search

  In recent years, data fusion has been applied to many different application areas such as neural networks, classification, multi-sensor systems, image processing, information retrieval, Web search among others.Linear combination is a popular data fusion method due to its flexibility.Proper weight assignment is a key issue for its success.In this paper, we apply the differential evolution optimization method to find suitable weights in the search space.Experiments are carried out with authoritative TREC data and we find it is a good method for the task and can improve fusion performance significantly than the best component results and other heuristic data fusion methods.Moreover, we have two findings.One finding is compared with other fusion methods, differential evolution based method performs better when more component search engines are involved in the fusion process.The second is a relatively large number of queries (e.g.over 100 queries) should be used as training data in order to obtain reliable weights.

data fusion information retrieval differential evolution linear combination

Jinsong Xia Chunlin Xu Shengli Wu

School of computer science and telecommunication engineering Jiangsu University Zhenjiang, China

国际会议

The 13th Web Information Systems and Applications Conference(第十三届全国web信息系统及其应用学术会议)(WISA2016)、The 1st Symposium on Big Data Processing and Analysis)( BDPA 2016)第一届全国大数据处理与分析学术研讨会、The 1st Workshop on Information System Security)(ISS2016)(第一届全国信息系统安全研讨会

武汉

英文

67-70

2016-09-23(万方平台首次上网日期,不代表论文的发表时间)