Landscape of R packages for eXplainable Artificial Intelligence
- URL: http://arxiv.org/abs/2009.13248v3
- Date: Fri, 26 Mar 2021 20:59:32 GMT
- Title: Landscape of R packages for eXplainable Artificial Intelligence
- Authors: Szymon Maksymiuk, Alicja Gosiewska, Przemyslaw Biecek
- Abstract summary: The article is primarily devoted to the tools available in R, but since it is easy to integrate the Python code, we will also show examples for the most popular libraries from Python.
- Score: 4.91155110560629
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The growing availability of data and computing power fuels the development of
predictive models. In order to ensure the safe and effective functioning of
such models, we need methods for exploration, debugging, and validation. New
methods and tools for this purpose are being developed within the eXplainable
Artificial Intelligence (XAI) subdomain of machine learning. In this work (1)
we present the taxonomy of methods for model explanations, (2) we identify and
compare 27 packages available in R to perform XAI analysis, (3) we present an
example of an application of particular packages, (4) we acknowledge recent
trends in XAI. The article is primarily devoted to the tools available in R,
but since it is easy to integrate the Python code, we will also show examples
for the most popular libraries from Python.
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