HCAILGJan 10, 2024

The two-way knowledge interaction interface between humans and neural networks

arXiv:2401.05461v12 citationsh-index: 262023 International Conference on Sensing, Measurement & Data Analytics in the era of Artificial Intelligence (ICSMD)
Originality Incremental advance
AI Analysis

This addresses the problem of opaque decision-making in neural networks for users and developers, offering a novel approach to human-AI collaboration, though it is incremental in the context of explainable AI.

The paper tackles the lack of interpretability and knowledge exchange between humans and neural networks by constructing a two-way interaction interface using structured visual concepts, enabling neural networks to provide intuitive explanations and allowing humans to directly guide and enhance network performance through prior knowledge.

Despite neural networks (NN) have been widely applied in various fields and generally outperforms humans, they still lack interpretability to a certain extent, and humans are unable to intuitively understand the decision logic of NN. This also hinders the knowledge interaction between humans and NN, preventing humans from getting involved to give direct guidance when NN's decisions go wrong. While recent research in explainable AI has achieved interpretability of NN from various perspectives, it has not yet provided effective methods for knowledge exchange between humans and NN. To address this problem, we constructed a two-way interaction interface that uses structured representations of visual concepts and their relationships as the "language" for knowledge exchange between humans and NN. Specifically, NN provide intuitive reasoning explanations to humans based on the class-specific structural concepts graph (C-SCG). On the other hand, humans can modify the biases present in the C-SCG through their prior knowledge and reasoning ability, and thus provide direct knowledge guidance to NN through this interface. Through experimental validation, based on this interaction interface, NN can provide humans with easily understandable explanations of the reasoning process. Furthermore, human involvement and prior knowledge can directly and effectively contribute to enhancing the performance of NN.

Foundations

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