NEJan 14, 2020

Neural Arithmetic Units

arXiv:2001.05016v154 citations
AI Analysis

This addresses a fundamental limitation in neural networks for tasks requiring precise arithmetic, offering a domain-specific improvement.

The paper tackles the problem of neural networks struggling with exact arithmetic operations by introducing Neural Addition Unit (NAU) and Neural Multiplication Unit (NMU), which learn addition/subtraction and multiplication respectively, resulting in more consistent convergence, faster learning, and better extrapolation compared to previous units.

Neural networks can approximate complex functions, but they struggle to perform exact arithmetic operations over real numbers. The lack of inductive bias for arithmetic operations leaves neural networks without the underlying logic necessary to extrapolate on tasks such as addition, subtraction, and multiplication. We present two new neural network components: the Neural Addition Unit (NAU), which can learn exact addition and subtraction; and the Neural Multiplication Unit (NMU) that can multiply subsets of a vector. The NMU is, to our knowledge, the first arithmetic neural network component that can learn to multiply elements from a vector, when the hidden size is large. The two new components draw inspiration from a theoretical analysis of recently proposed arithmetic components. We find that careful initialization, restricting parameter space, and regularizing for sparsity is important when optimizing the NAU and NMU. Our proposed units NAU and NMU, compared with previous neural units, converge more consistently, have fewer parameters, learn faster, can converge for larger hidden sizes, obtain sparse and meaningful weights, and can extrapolate to negative and small values.

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