CLSep 23, 2025

Multi-Hierarchical Feature Detection for Large Language Model Generated Text

arXiv:2509.18862v11 citationsh-index: 1
Originality Synthesis-oriented
AI Analysis

This addresses the problem of AI text detection for researchers and practitioners, but it is incremental as it shows limited gains over existing methods.

The paper tackled the problem of detecting AI-generated text by testing whether multi-hierarchical feature integration improves detection beyond single neural models, finding minimal benefits (0.4-0.5% improvement) with high computational costs (4.2x overhead).

With the rapid advancement of large language model technology, there is growing interest in whether multi-feature approaches can significantly improve AI text detection beyond what single neural models achieve. While intuition suggests that combining semantic, syntactic, and statistical features should provide complementary signals, this assumption has not been rigorously tested with modern LLM-generated text. This paper provides a systematic empirical investigation of multi-hierarchical feature integration for AI text detection, specifically testing whether the computational overhead of combining multiple feature types is justified by performance gains. We implement MHFD (Multi-Hierarchical Feature Detection), integrating DeBERTa-based semantic analysis, syntactic parsing, and statistical probability features through adaptive fusion. Our investigation reveals important negative results: despite theoretical expectations, multi-feature integration provides minimal benefits (0.4-0.5% improvement) while incurring substantial computational costs (4.2x overhead), suggesting that modern neural language models may already capture most relevant detection signals efficiently. Experimental results on multiple benchmark datasets demonstrate that the MHFD method achieves 89.7% accuracy in in-domain detection and maintains 84.2% stable performance in cross-domain detection, showing modest improvements of 0.4-2.6% over existing methods.

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