Abstract
Some interpersonal verbs can implicitly attribute causality to either their subject or their object and are therefore said to carry an implicit causality (IC) bias. Through this bias, causal links can be inferred from a narrative, aiding language comprehension. We investigate whether pre-trained language models (PLMs) encode IC bias and use it at inference time. We find that to be the case, albeit to different degrees, for three distinct PLM architectures. However, causes do not always need to be implicit -- when a cause is explicitly stated in a subordinate clause, an incongruent IC bias associated with the verb in the main clause leads to a delay in human processing. We hypothesize that the temporary challenge humans face in integrating the two contradicting signals, one from the lexical semantics of the verb, one from the sentence-level semantics, would be reflected in higher error rates for models on tasks dependent on causal links. The results of our study lend support to this hypothesis, suggesting that PLMs tend to prioritize lexical patterns over higher-order signals.
Highlights
Recognising causal links in narrative is an integral component of language comprehension that often relies on implicit cues (Trabasso and Sperry, 1985)
All pre-trained language models (PLMs) show a significant correlation to human implicit causality (IC) bias, this observation has the caveat of a small dataset
Within the pairs of related models, we can say that the differences between BERT and RoBERTa-L on the one hand and ELECTRA and ELECTRA-L on the other, are small, which suggests that already with 16GB of training data and 110M parameters, these architectures reach their potential in terms of capturing and using IC bias
Summary
Recognising causal links in narrative is an integral component of language comprehension that often relies on implicit cues (Trabasso and Sperry, 1985). Psycholinguists have identified one such cue in the implicit causality bias of interpersonal verbs: some interpersonal verbs tend to implicate causality on either their subject or their object (Garvey and Caramazza, 1974). It is this bias that leads to bias Object- Subject-. JoJhonhapologised to Mary because she felt offended
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