LGCLOct 16, 2025

Antislop: A Comprehensive Framework for Identifying and Eliminating Repetitive Patterns in Language Models

arXiv:2510.15061v2h-index: 19Has Code
Originality Incremental advance
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This addresses output quality degradation and recognizability issues in LLMs, offering a domain-specific solution for text generation.

The paper tackles the problem of repetitive phraseology in LLM outputs, termed 'slop', and presents Antislop, a framework that reduces slop by 90% while maintaining or improving performance on tasks like GSM8K and MMLU.

Widespread LLM adoption has introduced characteristic repetitive phraseology, termed "slop," which degrades output quality and makes AI-generated text immediately recognizable. We present Antislop, a comprehensive framework providing tools to both detect and eliminate these overused patterns. Our approach combines three innovations: (1) The Antislop Sampler, which uses backtracking to suppress unwanted strings at inference time without destroying vocabulary; (2) An automated pipeline that profiles model-specific slop against human baselines and generates training data; (3) Final Token Preference Optimization (FTPO), a novel fine-tuning method that operates on individual tokens, surgically adjusting logits wherever a banned pattern has appeared in an inference trace. We demonstrate that some slop patterns appear over 1,000x more frequently in LLM output than human text. The Antislop Sampler successfully suppresses 8,000+ patterns while maintaining quality, whereas token banning becomes unusable at just 2,000. Most importantly, FTPO achieves 90% slop reduction while maintaining or improving performance in cross-domain evals including GSM8K, MMLU, and creative writing tasks. In contrast, DPO suffers significant degradation in writing quality and lexical diversity despite achieving weaker suppression. We release all code and results under MIT license: https://github.com/sam-paech/auto-antislop.

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