Transformer large language models (LLMs) have sparked admiration for their exceptional performance on tasks that demand intricate multi-step reasoning. Yet, these models simultaneously show failures on surprisingly trivial problems. This begs the question: Are these errors incidental, or do they signal more substantial limitations? In an attempt to demystify transformer LLMs, we investigate the limits of these models across three representative compositional tasks -- multi-digit multiplication, logic grid puzzles, and a classic dynamic programming problem. These tasks require breaking problems down into sub-steps and synthesizing these steps into a precise answer. We formulate compositional tasks as computation graphs to systematically quantify the level of complexity, and break down reasoning steps into intermediate sub-procedures. Our empirical findings suggest that transformer LLMs solve compositional tasks by reducing multi-step compositional reasoning into linearized subgraph matching, without necessarily developing systematic problem-solving skills. To round off our empirical study, we provide theoretical arguments on abstract multi-step reasoning problems that highlight how autoregressive generations' performance can rapidly decay with,increased,task,complexity.
Faith and Fate: Limits of Transformers on Compositionality
Transformers solve compositional tasks by reducing multi-step reasoning to linearized subgraph matching, leading to performance decay with increased complexity.
- Year
- 2023
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- faith-and-fate-limits-of-transformers-on
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- 16
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2305.18654v3ARXIV-DEFAULT
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