Authors
Chengliang Chai, Guoliang Li, Jian Li, Dong Deng, Jianhua Feng
Publication date
2016/6/26
Conference
Proceedings of the 2016 ACM SIGMOD International Conference on Management of Data
Pages
969-984
Publisher
ACM
Description
Crowdsourced entity resolution has recently attracted significant attentions because it can harness the wisdom of crowd to improve the quality of entity resolution. However existing techniques either cannot achieve high quality or incur huge monetary costs. To address these problems, we propose a cost-effective crowdsourced entity resolution framework, which significantly reduces the monetary cost while keeping high quality. We first define a partial order on the pairs of records. Then we select a pair as a question and ask the crowd to check whether the records in the pair refer to the same entity. After getting the answer of this pair, we infer the answers of other pairs based on the partial order. Next we iteratively select pairs without answers to ask until we get the answers of all pairs. We devise effective algorithms to judiciously select the pairs to ask in order to minimize the number of asked pairs. To further reduce …
Total citations
201620172018201920202021202220232024214251115422107
Scholar articles
C Chai, G Li, J Li, D Deng, J Feng - Proceedings of the 2016 International Conference on …, 2016