Title
HELP: A Dataset for Identifying Shortcomings of Neural Models in Monotonicity Reasoning.
Abstract
Large crowdsourced datasets are widely used for training and evaluating neural models on natural language inference (NLI). Despite these efforts, neural models have a hard time capturing logical inferences, including those licensed by phrase replacements, so-called monotonicity reasoning. Since no large dataset has been developed for monotonicity reasoning, it is still unclear whether the main obstacle is the size of datasets or the model architectures themselves. To investigate this issue, we introduce a new dataset, called HELP, for handling entailments with lexical and logical phenomena. We add it to training data for the state-of-the-art neural models and evaluate them on test sets for monotonicity phenomena. The results showed that our data augmentation improved the overall accuracy. We also find that the improvement is better on monotonicity inferences with lexical replacements than on downward inferences with disjunction and modification. This suggests that some types of inferences can be improved by our data augmentation while others are immune to it.
Year
Venue
Field
2019
North American Chapter of the Association for Computational Linguistics
Training set,Monotonic function,Obstacle,Computer science,Phrase,Artificial intelligence,Natural language processing,Machine learning,Natural language inference
DocType
Citations 
PageRank 
Journal
0
0.34
References 
Authors
0
7
Name
Order
Citations
PageRank
Hitomi Yanaka144.86
Koji Mineshima211119.66
Daisuke Bekki34316.30
Kentaro Inui41008120.35
Satoshi Sekine51347143.28
Lasha Abzianidze6236.51
Johan Bos795489.07