Agent Assist through Conversation Analysis
Kshitij P. Fadnis, Nathaniel Mills, et al.
EMNLP 2020
Schema matching is at the heart of integrating structured and semi-structured data with applications in data warehousing, data analysis recommendations, Web table matching, etc. Schema matching is known as an uncertain process and a common method to overcome this uncertainty introduces a human expert with a ranked list of possible schema matches to choose from, known as top-K matching. In this work we propose a learning algorithm that utilizes an innovative set of features to rerank a list of schema matches and improves upon the ranking of the best match. We provide a bound on the size of an initial match list, tying the number of matches with a desired level of confidence in finding the best match. We also propose the use of matching predictors as features in a learning task, and tailored nine new matching predictors for this purpose. The proposed algorithm assists the matching process by introducing a quality set of alternative matches to a human expert. It also serves as a step towards eliminating the involvement of human experts as decision makers in a matching process altogether. A large scale empirical evaluation with real-world benchmark shows the effectiveness of the proposed algorithmic solution.
Kshitij P. Fadnis, Nathaniel Mills, et al.
EMNLP 2020
Michal Shmueli-Scheuer, Haggai Roitman, et al.
WWW 2010
Haggai Roitman, Sivan Yogev
CIKM 2011
Ella Rabinovich, Opher Etzion, et al.
DEBS 2011