1. What are the contributions mentioned in the paper "Explaining deep learning models through rule-based approximation and visualization" ?
This paper describes a novel approach to the problem of developing explainable machine learning models.. The authors consider a Deep Reinforcement Learning ( DRL ) model representing a highway path planning policy for autonomous highway driving [ 1 ].. THEN rules that provide an alternative interpretable model, which is further enhanced by visualizing the rules.. The adjacent ( in the data space ) prototypes, which correspond to the same action are further grouped and merged into so-called `` MegaClouds '' reducing significantly the number of fuzzy rules.. The method is computationally efficient and can be potentially extended to addressing the explainability of the broader set of fully connected deep neural network models.
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2. What are the future works in "Explaining deep learning models through rule-based approximation and visualization" ?
To generate training data the authors used a DRL model representing a highway path planning policy for autonomous driving.. The authors also present a new hierarchical mechanism to significantly reduce the number of generated fuzzy rules.. Experimental results show that an accurate and computationally efficient explainable alternative to the deep neural network model can be successfully developed providing opportunities to explain and validate the decisions by the DRL agent.
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