Title
Quality models for microblog retrieval
Abstract
Microblog services typically contain very short documents (e.g., tweets) containing comments about the latest news and events. Many of these documents are not informative or have very little content due to their personal and ephemeral nature. Providing effective retrieval in a microblog service will require addressing the challenge of distinguishing the high-quality, informative documents from the others. Recent work has focused on finding features that indicate the quality of microblog documents, but the impact these quality features on retrieval is not clear. In this paper, we suggest a low-cost quality model using surrogate judgments based on user behavior (i.e., retweets) that can be collected automatically. We analyze the relationship between document informativeness and relevance judgments for microblog retrieval. Then we demonstrate that our behavior-based quality metric has a high correlation with manual judgments. Also, we perform experiments to study the impact of the quality model on microblog retrieval. The results based on the TREC Microblog track show that the proposed quality model, combined with a variety of retrieval models, can improve retrieval performance and is competitive with a model trained using manual relevance judgments.
Year
DOI
Venue
2012
10.1145/2396761.2398527
CIKM
Keywords
Field
DocType
quality feature,retrieval performance,low-cost quality model,quality model,proposed quality model,behavior-based quality metric,microblog service,microblog retrieval,retrieval model,effective retrieval,microblogs
Social media,Information retrieval,Computer science,Microblogging
Conference
Citations 
PageRank 
References 
7
0.44
19
Authors
3
Name
Order
Citations
PageRank
Jaeho Choi18512.06
W. Bruce Croft2178122796.94
Jin Young Kim349781.76