CLAILGNov 22, 2023

Positional Description Matters for Transformers Arithmetic

arXiv:2311.14737v166 citationsh-index: 36
Originality Incremental advance
AI Analysis

This addresses a specific bottleneck in Transformers for arithmetic, offering incremental improvements with practical gains in model efficiency and accuracy.

The paper tackles the problem of Transformers performing poorly on arithmetic tasks due to naive positional encoding, and shows that modifying positional encoding or task representation enables a small model to achieve essentially perfect 12-digit multiplication and strong extrapolation in addition tasks.

Transformers, central to the successes in modern Natural Language Processing, often falter on arithmetic tasks despite their vast capabilities --which paradoxically include remarkable coding abilities. We observe that a crucial challenge is their naive reliance on positional information to solve arithmetic problems with a small number of digits, leading to poor performance on larger numbers. Herein, we delve deeper into the role of positional encoding, and propose several ways to fix the issue, either by modifying the positional encoding directly, or by modifying the representation of the arithmetic task to leverage standard positional encoding differently. We investigate the value of these modifications for three tasks: (i) classical multiplication, (ii) length extrapolation in addition, and (iii) addition in natural language context. For (i) we train a small model on a small dataset (100M parameters and 300k samples) with remarkable aptitude in (direct, no scratchpad) 15 digits multiplication and essentially perfect up to 12 digits, while usual training in this context would give a model failing at 4 digits multiplication. In the experiments on addition, we use a mere 120k samples to demonstrate: for (ii) extrapolation from 10 digits to testing on 12 digits numbers while usual training would have no extrapolation, and for (iii) almost perfect accuracy up to 5 digits while usual training would be correct only up to 3 digits (which is essentially memorization with a training set of 120k samples).

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