arXiv Open Access 2025

Sample, Align, Synthesize: Graph-Based Response Synthesis with ConGrs

Sayan Ghosh Shahzaib Saqib Warraich Dhruv Tarsadiya Gregory Yauney Swabha Swayamdipta
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Abstrak

Language models can be sampled multiple times to access the distribution underlying their responses, but existing methods cannot efficiently synthesize rich epistemic signals across different long-form responses. We introduce Consensus Graphs (ConGrs), a flexible DAG-based data structure that represents shared information, as well as semantic variation in a set of sampled LM responses to the same prompt. We construct ConGrs using a light-weight lexical sequence alignment algorithm from bioinformatics, supplemented by the targeted usage of a secondary LM judge. Further, we design task-dependent decoding methods to synthesize a single, final response from our ConGr data structure. Our experiments show that synthesizing responses from ConGrs improves factual precision on two biography generation tasks by up to 31% over an average response and reduces reliance on LM judges by more than 80% compared to other methods. We also use ConGrs for three refusal-based tasks requiring abstention on unanswerable queries and find that abstention rate is increased by up to 56%. We apply our approach to the MATH and AIME reasoning tasks and find an improvement over self-verification and majority vote baselines by up to 6 points of accuracy. We show that ConGrs provide a flexible method for capturing variation in LM responses and using the epistemic signals provided by response variation to synthesize more effective responses.

Topik & Kata Kunci

Penulis (5)

S

Sayan Ghosh

S

Shahzaib Saqib Warraich

D

Dhruv Tarsadiya

G

Gregory Yauney

S

Swabha Swayamdipta

Format Sitasi

Ghosh, S., Warraich, S.S., Tarsadiya, D., Yauney, G., Swayamdipta, S. (2025). Sample, Align, Synthesize: Graph-Based Response Synthesis with ConGrs. https://arxiv.org/abs/2510.03527

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Tahun Terbit
2025
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en
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arXiv
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Open Access ✓