CONF
Habibi_ACMRECOMMENDERSYSTEMS2012_2012/IDIAP
Using Crowdsourcing to Compare Document Recommendation Strategies for Conversations
Habibi, Maryam
Popescu-Belis, Andrei
EXTERNAL
https://publications.idiap.ch/attachments/papers/2016/Habibi_ACMRECOMMENDERSYSTEMS2012_2012.pdf
PUBLIC
https://publications.idiap.ch/index.php/publications/showcite/Habibi_Idiap-RR-14-2012
Related documents
RecSys, Recommendation Utility Evaluation (RUE 2012)
Dublin, Ireland
2012
15-20
This paper explores a crowdsourcing approach to the evaluation of a document recommender system intended for use in meetings. The system uses words from the conversation to perform just-in-time document retrieval. We compare several versions of the system, including the use of keywords, retrieval using semantic similarity, and the possibility for user initiative. The system's results are submitted for comparative evaluations to workers recruited via a crowdsourcing platform, Amazon's Mechanical Turk. We introduce a new method, Pearson Correlation Coefficient-Information Entropy (PCC-H), to abstract over the quality of the workers' judgments and produce system-level scores. We measure the workers' reliability by the inter-rater agreement of each of them against the others, and use entropy to weight the difficulty of each comparison task. The proposed evaluation method is shown to be reliable, and the results show that adding user initiative improves the relevance of recommendations.
REPORT
Habibi_Idiap-RR-14-2012/IDIAP
Using Crowdsourcing to Compare Document Recommendation Strategies for Conversations
Habibi, Maryam
Popescu-Belis, Andrei
Amazon Mechanical Turk
comparative evaluation
Crowdsourcing
Document recommender system
user initiative
EXTERNAL
https://publications.idiap.ch/attachments/reports/2012/Habibi_Idiap-RR-14-2012.pdf
PUBLIC
Idiap-RR-14-2012
2012
Idiap
June 2012
This paper explores a crowdsourcing approach to the evaluation of a document recommender system intended for use in meetings. The system uses words from the conversation to perform just-in-time document retrieval. We compare several versions of the system, including the use of keywords, retrieval using semantic similarity, and the possibility for user initiative. The system's results are submitted for comparative evaluations to workers recruited via a crowdsourcing platform, Amazon's Mechanical Turk. We introduce a new method, Pearson Correlation Coefficient-Information Entropy (PCC-H), to abstract over the quality of the workers' judgments and produce system-level scores. We measure the workers' reliability by the inter-rater agreement of each of them against the others, and use entropy to weight the difficulty of each comparison task. The proposed evaluation method is shown to be reliable, and demonstrates that adding user initiative improves the relevance of recommendations.