Is My Model Using The Right Evidence? Systematic Probes for Examining Evidence-Based Tabular Reasoning
Published
2022-06-08
Vivek Gupta
,
Riyaz A. Bhat
,
Atreya Ghosal
,
Manish Shrivastava
,
Maneesh K. Singh
,
Vivek Srikumar
Vivek Gupta
University of Utah
Riyaz A. Bhat
Verisk Analytics
Atreya Ghosal
IIIT Hyderabad
Manish Shrivastava
IIIT Hyderabad
Maneesh K. Singh
Verisk Analytics
Vivek Srikumar
University of Utah
Abstract
Neural models command state-of-the-art performance across NLP tasks, including ones involving “reasoning”. Models claiming to reason about the evidence presented to them should attend to the correct parts of the input avoiding spurious patterns therein, be self-consistent in their predictions across inputs, and be immune to biases derived from their pre-training in a nuanced, context-sensitive fashion. Do the prevalent *BERT-family of models do so? In this paper, we study this question using the problem of reasoning on tabular data. Tabular inputs are especially well-suited for the study --- they admit systematic probes targeting the properties listed above. Our experiments demonstrate that a RoBERTa-based model, representative of the current state-of-the-art, fails at reasoning on the following counts: it (a) ignores relevant parts of the evidence, (b) is over-sensitive to annotation artifacts, and (c) relies on the knowledge encoded in the pre-trained language model rather than the evidence presented in its tabular inputs. Finally, through inoculation experiments, we show that fine-tuning the model on perturbed data does not help it overcome the above challenges.
Presented at ACL 2022
Article at MIT Press