The CLRS-Text Algorithmic Reasoning Language Benchmark
Eliciting reasoning capabilities from language models (LMs) is a critical direction on the path towards building intelligent systems. Most recent studies dedicated to reasoning focus on out-of-distribution performance on procedurally-generated synthetic benchmarks, bespoke-built to evaluate specific...
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Zusammenfassung: | Eliciting reasoning capabilities from language models (LMs) is a critical
direction on the path towards building intelligent systems. Most recent studies
dedicated to reasoning focus on out-of-distribution performance on
procedurally-generated synthetic benchmarks, bespoke-built to evaluate specific
skills only. This trend makes results hard to transfer across publications,
slowing down progress. Three years ago, a similar issue was identified and
rectified in the field of neural algorithmic reasoning, with the advent of the
CLRS benchmark. CLRS is a dataset generator comprising graph execution traces
of classical algorithms from the Introduction to Algorithms textbook. Inspired
by this, we propose CLRS-Text -- a textual version of these algorithmic traces.
Out of the box, CLRS-Text is capable of procedurally generating trace data for
thirty diverse, challenging algorithmic tasks across any desirable input
distribution, while offering a standard pipeline in which any additional
algorithmic tasks may be created in the benchmark. We fine-tune and evaluate
various LMs as generalist executors on this benchmark, validating prior work
and revealing a novel, interesting challenge for the LM reasoning community.
Our code is available at
https://github.com/google-deepmind/clrs/tree/master/clrs/_src/clrs_text. |
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DOI: | 10.48550/arxiv.2406.04229 |