Identification of factors predicting clickthrough in Web searching using neural network analysis


Autoria(s): Jansen, Bernard; Spink, Amanda; Zhang, Ying
Data(s)

2008

Resumo

In this research, we aim to identify factors that significantly affect the clickthrough of Web searchers. Our underlying goal is determine more efficient methods to optimize the clickthrough rate. We devise a clickthrough metric for measuring customer satisfaction of search engine results using the number of links visited, number of queries a user submits, and rank of clicked links. We use a neural network to detect the significant influence of searching characteristics on future user clickthrough. Our results show that high occurrences of query reformulation, lengthy searching duration, longer query length, and the higher ranking of prior clicked links correlate positively with future clickthrough. We provide recommendations for leveraging these findings for improving the performance of search engine retrieval and result ranking, along with implications for search engine marketing

Identificador

http://eprints.qut.edu.au/30667/

Publicador

John Wiley and Sons Inc.

Relação

DOI:10.1002/asi.20993

Jansen, Bernard, Spink, Amanda, & Zhang, Ying (2008) Identification of factors predicting clickthrough in Web searching using neural network analysis. Journal of the American Society for Information Science and Technology, 60(3), pp. 557-570.

Direitos

© 2008 ASIS&T

Palavras-Chave #089900 OTHER INFORMATION AND COMPUTING SCIENCES #Online Searching, Neural Networks, Retrieval Effectiveness, Search Engine Optimization, Link Analysis
Tipo

Journal Article