2022
DOI: 10.3390/e24081117
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Learnability of the Boolean Innerproduct in Deep Neural Networks

Abstract: In this paper, we study the learnability of the Boolean innerproduct by a systematic simulation study. The family of the Boolean innerproduct function is known to be representable by neural networks of threshold neurons of depth 3 with only 2n+1 units (n the input dimension)—whereas an exact representation by a depth 2 network cannot possibly be of polynomial size. This result can be seen as a strong argument for deep neural network architectures. In our study, we found that this depth 3 architecture of the Bo… Show more

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