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Tight Mutual Information Estimation With Contrastive Fenchel-Legendre Optimization

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arxiv 2107.01131 v3 pith:Y5QQOWQF submitted 2021-07-02 stat.ML cs.AIcs.ITcs.LGmath.IT

Tight Mutual Information Estimation With Contrastive Fenchel-Legendre Optimization

classification stat.ML cs.AIcs.ITcs.LGmath.IT
keywords contrastiveestimatorvariationalboundsestimationestimatorsinformationlimitations
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Successful applications of InfoNCE and its variants have popularized the use of contrastive variational mutual information (MI) estimators in machine learning. While featuring superior stability, these estimators crucially depend on costly large-batch training, and they sacrifice bound tightness for variance reduction. To overcome these limitations, we revisit the mathematics of popular variational MI bounds from the lens of unnormalized statistical modeling and convex optimization. Our investigation not only yields a new unified theoretical framework encompassing popular variational MI bounds but also leads to a novel, simple, and powerful contrastive MI estimator named as FLO. Theoretically, we show that the FLO estimator is tight, and it provably converges under stochastic gradient descent. Empirically, our FLO estimator overcomes the limitations of its predecessors and learns more efficiently. The utility of FLO is verified using an extensive set of benchmarks, which also reveals the trade-offs in practical MI estimation.

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