Graph explorer

Invariant Rationalization

Selective rationalization improves neural network interpretability by identifying a small subset of input features -- the rationale -- that best explains or supports the prediction. A typical rationalization criterion, i.e. maximum mutual information (MMI), finds the rationale that maximizes the prediction performance based only on the rationale. However, MMI can be problematic because it picks up spurious correlations between the input features and the output. Instead, we introduce a game-theoretic invariant rationalization criterion where the rationales are constrained to enable the same predictor to be optimal across different environments. We show both theoretically and empirically that the proposed rationales can rule out spurious correlations, generalize better to different test scenarios, and align better with human judgments. Our data and code are available.

8 nodes16 linksoverview previewInvariant Rationalization
8 nodes16 links
Invariant Rationalization8 visible / 8 total nodes / 22 links
Related contextRelated contextRelated contextWorks onWorks onWorks onCo-authorshipCo-authorshipCo-authorshipCo-authorshipCo-authorshipCo-authorshipAuthorshipWorks onWorks onWorks onAuthorshipAuthorshipAuthorshipTopic signalTopic signalTopic signalWInvariant Rationalizationpreprint / 2020AShiyu ChangResearcherAYang ZhangResearcherAMo YuResearcherATommi S. JaakkolaResearcherTMachine Learning49008 worksTArtificial Intelligence22915 worksTComputation and Language14115 works
PaperSignal 107 links

Invariant Rationalization

preprint / 2020

Open