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arxiv: 2111.01742 · v1 · pith:6OV2Z5OB · submitted 2021-11-02 · cs.LG · cs.AI· cs.CV

LogAvgExp Provides a Principled and Performant Global Pooling Operator

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classification cs.LG cs.AIcs.CV
keywords logavgexpoperatorpoolingmeanneuralparameterprovidestemperature
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We seek to improve the pooling operation in neural networks, by applying a more theoretically justified operator. We demonstrate that LogSumExp provides a natural OR operator for logits. When one corrects for the number of elements inside the pooling operator, this becomes $\text{LogAvgExp} := \log(\text{mean}(\exp(x)))$. By introducing a single temperature parameter, LogAvgExp smoothly transitions from the max of its operands to the mean (found at the limiting cases $t \to 0^+$ and $t \to +\infty$). We experimentally tested LogAvgExp, both with and without a learnable temperature parameter, in a variety of deep neural network architectures for computer vision.

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