Understanding Robust Generalization in Learning Regular Languages
This addresses the challenge of systematic distribution shifts in AI, such as parsing longer sentences, which is incremental by proposing a specific compositional approach for regular languages.
The paper tackles the problem of robust generalization in deep neural networks for learning regular languages, showing that a compositional strategy predicting deterministic finite-state automaton (DFA) structure generalizes significantly better than standard end-to-end methods, with theoretical proofs and empirical support.
A key feature of human intelligence is the ability to generalize beyond the training distribution, for instance, parsing longer sentences than seen in the past. Currently, deep neural networks struggle to generalize robustly to such shifts in the data distribution. We study robust generalization in the context of using recurrent neural networks (RNNs) to learn regular languages. We hypothesize that standard end-to-end modeling strategies cannot generalize well to systematic distribution shifts and propose a compositional strategy to address this. We compare an end-to-end strategy that maps strings to labels with a compositional strategy that predicts the structure of the deterministic finite-state automaton (DFA) that accepts the regular language. We theoretically prove that the compositional strategy generalizes significantly better than the end-to-end strategy. In our experiments, we implement the compositional strategy via an auxiliary task where the goal is to predict the intermediate states visited by the DFA when parsing a string. Our empirical results support our hypothesis, showing that auxiliary tasks can enable robust generalization. Interestingly, the end-to-end RNN generalizes significantly better than the theoretical lower bound, suggesting that it is able to achieve at least some degree of robust generalization.