Behavioural testing -- verifying system capabilities by validating
human-designed input-output pairs -- is an alternative evaluation method of
natural language processing systems proposed to address the shortcomings of the
standard approach: computing metrics on held-out data. While behavioural tests
capture human prior knowledge and insights, there has been little exploration
on how to leverage them for model training and development. With this in mind,
we explore behaviour-aware learning by examining several fine-tuning schemes
using HateCheck, a suite of functional tests for hate speech detection systems.
To address potential pitfalls of training on data originally intended for
evaluation, we train and evaluate models on different configurations of
HateCheck by holding out categories of test cases, which enables us to estimate
performance on potentially overlooked system properties. The fine-tuning
procedure led to improvements in the classification accuracy of held-out
functionalities and identity groups, suggesting that models can potentially
generalise to overlooked functionalities. However, performance on held-out
functionality classes and i.i.d. hate speech detection data decreased, which
indicates that generalisation occurs mostly across functionalities from the
same class and that the procedure led to overfitting to the HateCheck data
distribution.Comment: 9 pages, 5 figures. Accepted at the First Workshop on Efficient
Benchmarking in NLP (NLP Power!