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Hauptverfasser: Mizumoto, Masaharu, Nguyen, Dat, Han, Zhiheng, Fang, Jiyuan, Guan, Heyuan, Li, Xingfu, Shiraishi, Naoya, Nakawake, Yo, Nguyen, Le Minh
Format: Preprint
Veröffentlicht: 2025
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Online-Zugang:https://arxiv.org/abs/2509.14704
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author Mizumoto, Masaharu
Nguyen, Dat
Han, Zhiheng
Fang, Jiyuan
Guan, Heyuan
Li, Xingfu
Shiraishi, Naoya
Nakawake, Yo
Nguyen, Le Minh
author_facet Mizumoto, Masaharu
Nguyen, Dat
Han, Zhiheng
Fang, Jiyuan
Guan, Heyuan
Li, Xingfu
Shiraishi, Naoya
Nakawake, Yo
Nguyen, Le Minh
contents Benchmark saturation and contamination have obscured genuine advances in reasoning for large language models (LLMs). We introduce NazoNazo Benchmark, a low-cost, renewable test built from Japanese children's riddles that demand insight-based reasoning, or representational shifts rather than knowledge recall. We evaluate 38 frontier LLMs (2023-2025) on 201 riddles and a 120-item human-comparison subset, finding that non-reasoning models average 7.6%, reasoning models 17.6%, and humans ~53% accuracy. Importantly, thought-log analysis reveals that reasoning in Japanese did not necessarily improve accuracy, indicating that language understanding alone is insufficient for insight reasoning. Notably, models sometimes generated correct candidates but failed to endorse them, suggesting weak metacognitive control rather than a lack of knowledge. This "verification failure" indicates that CoT outputs can reflect genuine intermediate reasoning states rather than post-hoc rationalizations. By exposing this metacognitive bottleneck - models' inability to recognize when they are right - the benchmark provides a scalable, cross-linguistic testbed for studying machine insight, confidence calibration, and self-evaluation. NazoNazo Benchmark thus offers not only a fresh challenge to current LLMs but also a concrete target for developing AI metacognitive psychology and enhancing machine Aha! capability.
format Preprint
id arxiv_https___arxiv_org_abs_2509_14704
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Japanese Children's Riddles as a Benchmark for Machine Insight and Metacognition
Mizumoto, Masaharu
Nguyen, Dat
Han, Zhiheng
Fang, Jiyuan
Guan, Heyuan
Li, Xingfu
Shiraishi, Naoya
Nakawake, Yo
Nguyen, Le Minh
Artificial Intelligence
Benchmark saturation and contamination have obscured genuine advances in reasoning for large language models (LLMs). We introduce NazoNazo Benchmark, a low-cost, renewable test built from Japanese children's riddles that demand insight-based reasoning, or representational shifts rather than knowledge recall. We evaluate 38 frontier LLMs (2023-2025) on 201 riddles and a 120-item human-comparison subset, finding that non-reasoning models average 7.6%, reasoning models 17.6%, and humans ~53% accuracy. Importantly, thought-log analysis reveals that reasoning in Japanese did not necessarily improve accuracy, indicating that language understanding alone is insufficient for insight reasoning. Notably, models sometimes generated correct candidates but failed to endorse them, suggesting weak metacognitive control rather than a lack of knowledge. This "verification failure" indicates that CoT outputs can reflect genuine intermediate reasoning states rather than post-hoc rationalizations. By exposing this metacognitive bottleneck - models' inability to recognize when they are right - the benchmark provides a scalable, cross-linguistic testbed for studying machine insight, confidence calibration, and self-evaluation. NazoNazo Benchmark thus offers not only a fresh challenge to current LLMs but also a concrete target for developing AI metacognitive psychology and enhancing machine Aha! capability.
title Japanese Children's Riddles as a Benchmark for Machine Insight and Metacognition
topic Artificial Intelligence
url https://arxiv.org/abs/2509.14704