Abstract
In the fields of Knowledge Representation and Knowledge Discovery, enhancing the accuracy of Natural Language Inference (NLI) is crucial for developing systems capable of advanced knowledge extraction and processing. This paper introduces the Gated Attention Natural Language Inference (GANLI) model, designed with an innovative gated attention mechanism to significantly improve performance in these critical areas. Our evaluations show that GANLI achieves a 2.1% improvement in accuracy on the Stanford Natural Language Inference (SNLI) benchmark and an 14.8% increase on the Multi-Genre Natural Language Inference (MNLI) benchmark. These advancements demonstrate GANLI’s superior ability to discern and represent complex knowledge structures hidden in natural language. The model not only enhances the precision of knowledge discovery tasks but also facilitates more effective knowledge presentation, crucial for applications such as intelligent data analysis and automated decision-making systems. The success of the GANLI model underscores its potential to transform the field by enabling more nuanced and context-aware interpretations of textual data.