Reduced implication-bias logic loss for neuro-symbolic learning

Integrating logical reasoning and machine learning by approximating logical inference with differentiable operators is a widely used technique in the field of Neuro-Symbolic Learning. However, some differentiable operators could introduce significant biases during backpropagation, which can degrade...

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Veröffentlicht in:Machine learning 2024-06, Vol.113 (6), p.3357-3377
Hauptverfasser: He, Hao-Yuan, Dai, Wang-Zhou, Li, Ming
Format: Artikel
Sprache:eng
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Zusammenfassung:Integrating logical reasoning and machine learning by approximating logical inference with differentiable operators is a widely used technique in the field of Neuro-Symbolic Learning. However, some differentiable operators could introduce significant biases during backpropagation, which can degrade the performance of Neuro-Symbolic systems. In this paper, we demonstrate that the loss functions derived from fuzzy logic operators commonly exhibit a bias, referred to as Implication Bias . To mitigate this bias, we propose a simple yet efficient method to transform the biased loss functions into Reduced Implication-bias Logic Loss (RILL) . Empirical studies demonstrate that RILL outperforms the biased logic loss functions, especially when the knowledge base is incomplete or the supervised training data is insufficient.
ISSN:0885-6125
1573-0565
DOI:10.1007/s10994-023-06436-4