Title
Constructing High Precision Knowledge Bases with Subjective and Factual Attributes.
Abstract
Knowledge bases (KBs) are the backbone of many ubiquitous applications and are thus required to exhibit high precision. However, for KBs that store subjective attributes of entities, e.g., whether a movie is kid friendly, simply estimating precision is complicated by the inherent ambiguity in measuring subjective phenomena. In this work, we develop a method for constructing KBs with tunable precision--i.e., KBs that can be made to operate at a specific false positive rate, despite storing both difficult-to-evaluate subjective attributes and more traditional factual attributes. The key to our approach is probabilistically modeling user consensus with respect to each entity-attribute pair, rather than modeling each pair as either True or False. Uncertainty in the model is explicitly represented and used to control the KB's precision. We propose three neural networks for fitting the consensus model and evaluate each one on data from Google Maps--a large KB of locations and their subjective and factual attributes. The results demonstrate that our learned models are well-calibrated and thus can successfully be used to control the KB's precision. Moreover, when constrained to maintain 95% precision, the best consensus model matches the F-score of a baseline that models each entity-attribute pair as a binary variable and does not support tunable precision. When unconstrained, our model dominates the same baseline by 12% F-score. Finally, we perform an empirical analysis of attribute-attribute correlations and show that leveraging them effectively contributes to reduced uncertainty and better performance in attribute prediction.
Year
DOI
Venue
2019
10.1145/3292500.3330720
KDD
Keywords
Field
DocType
crowdsourcing, knowledge base construction, neural networks, probabilistic modeling
Data mining,False positive rate,Computer science,Dummy variable,Subjective phenomena,Artificial intelligence,Artificial neural network,Ambiguity,Machine learning,Consensus model
Journal
Volume
ISBN
Citations 
abs/1905.12807
978-1-4503-6201-6
1
PageRank 
References 
Authors
0.35
0
5
Name
Order
Citations
PageRank
Ari Kobren1285.17
Pablo Barrio221.31
Oksana Yakhnenko365422.73
Johann Hibschman410.35
Ian Langmore561.95