Transparency of Deep Neural Networks and Complex Tree Ensembles

A special issue of Machine Learning and Knowledge Extraction (ISSN 2504-4990).

Deadline for manuscript submissions: closed (31 March 2024) | Viewed by 787

Special Issue Editor


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Guest Editor
Artificial Intelligence Lab, Department of Computer Science, Meiji University, Kawasaki, Kanagawa 214-8571, Japan
Interests: artificial intelligence; knowledge extraction; rule extraction; transparency of deep learning neural networks; medical informatics
Special Issues, Collections and Topics in MDPI journals

Special Issue Information

Dear Colleagues,

Deep learning is a new branch of machine learning which has been proven to be a powerful feature extraction tool in computer vision. The primary disadvantage of deep learning and complex tree ensembles (CTEs) such as XGBoost is that they have no clear declarative representation of knowledge. In addition, deep learning and CTEs have considerable difficulties in generating the necessary explanation structures, which limits their potential because the ability to provide detailed characterizations of classification strategies would promote their acceptance. However, surprisingly, very little work has been carried out in relation to the transparency of deep learning and CTEs. Bridging this gap could be expected to contribute to the real-world utility of deep learning and CTEs. The transparency of deep neural networks is the first step towards filling this gap. The next step towards utilizing deep neural networks and CTEs is extracting rules from them. Transparency and rule extraction from deep neural networks and CTEs therefore remain areas in need of further innovation.

This Special Issue also focuses on the black box nature of deep neural networks and the transparency, interpretability and explainability of deep neural networks (DNNs) and complex tree ensembles (CTEs) such as gradient boosting decision tree, XGBoost, decision forest, and random forest. 

Prof. Dr. Yoichi Hayashi
Guest Editor

Manuscript Submission Information

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Keywords

  • big data analytics using DL and CTEs
  • interpretability and explanation of DL and CTEs
  • rule extraction techniques for a new era of XAI
  • simplification of DNNs and CTEs into simple decision trees (e.g., single tree)
  • beyond AI finance for credit scoring, credit card fraud detection, peer-to-peer (P2P) social lending, business failure and bankruptcy
  • beyond the accuracy–interpretability dilemma in DL and CTEs
  • towards a new era for medicine and bioinformatics

Published Papers

There is no accepted submissions to this special issue at this moment.
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