3.8 Proceedings Paper

xxAI - Beyond Explainable Artificial Intelligence

出版社

SPRINGER INTERNATIONAL PUBLISHING AG
DOI: 10.1007/978-3-031-04083-2_1

关键词

Artificial intelligence; Explainable AI; Machine learning; Explainability

资金

  1. Austrian Science Fund (FWF) [P-32554]
  2. German Ministry for Education and Research (BMBF) [01IS18025A, 01IS18037A]
  3. European Union [965221]

向作者/读者索取更多资源

Explainable Artificial Intelligence (XAI) is a research field focused on explaining the decisions and internal mechanisms of complex AI systems. It aims to provide methods to interpret and explain the results of AI methods, particularly those that are difficult for human experts to comprehend. XAI is crucial for establishing trust in AI applications that impact human life and can be applied to various types of models using diverse array of techniques.
The success of statistical machine learning from big data, especially of deep learning, has made artificial intelligence (AI) very popular. Unfortunately, especially with the most successful methods, the results are very difficult to comprehend by human experts. The application of AI in areas that impact human life (e.g., agriculture, climate, forestry, health, etc.) has therefore led to an demand for trust, which can be fostered if the methods can be interpreted and thus explained to humans. The research field of explainable artificial intelligence (XAI) provides the necessary foundations and methods. Historically, XAI has focused on the development of methods to explain the decisions and internal mechanisms of complex AI systems, with much initial research concentrating on explaining how convolutional neural networks produce image classification predictions by producing visualizations which highlight what input patterns are most influential in activating hidden units, or are most responsible for a model's decision. In this volume, we summarize research that outlines and takes next steps towards a broader vision for explainable AI in moving beyond explaining classifiers via such methods, to include explaining other kinds of models (e.g., unsupervised and reinforcement learning models) via a diverse array of XAI techniques (e.g., question-and-answering systems, structured explanations). In addition, we also intend to move beyond simply providing model explanations to directly improving the transparency, efficiency and generalization ability of models. We hope this volume presents not only exciting research developments in explainable AI but also a guide for what next areas to focus on within this fascinating and highly relevant research field as we enter the second decade of the deep learning revolution. This volume is an outcome of the ICML 2020 workshop on XXAI: Extending Explainable AI Beyond Deep Models and Classifiers.

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