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Title Applying Dempster-Shafer Theory for Developing a Flexible, Accurate and Interpretable Classifier
Authors Sergio Peñafiel, Nelson Baloian, Horacio Sanson, José A. Pino
Publication date 2020
Abstract Two approaches have traditionally been identified for
developing
artificial intelligence systems supporting decision-making: Machine
Learning, which applies general techniques based on statistical analysis and
optimization methods to extract information from a large amount of data
looking for possible relations among them, and Expert Systems, which codify
experts knowledge in rules, which are then applied to a specific situation.
One of the main advantages of the first approach is its greater accuracy and
wider gen- erality for the application of the methods developed which can be
used in various scenarios. By contrast, expert systems are usually more
restricted and often applicable only to the domain for which they were
originally developed. However, the machine learning approach requires the
availability of large chunks of data, and it is much more complicated to
interpret the results of the statistical methods to obtain some explanation
of why the system decides, classifies, or evaluates a situation in a certain
way. This issue may become very important in areas such as medicine, where
it is relevant to know why the system rec- ommends a certain treatment or
diagnoses a certain illness. Likewise, in the financial sector, it might be
legally required to explain that a decision to reject the granting of a
mortgage loan to a person is not due to discriminatory causes such as gender
or race. In order to be able to have interpretability and extract knowledge
of available data we developed a classification method based on
Dempster-Shafer's Plausibility Theory. Mass assignment functions (MAF)
must be established to apply this theory and they assign a weight or
probability to all subsets of the possible outcomes, given the presence of a
certain fact on a decision scenario. Thus MAF assignments encode expert
knowledge. The method learns optimal values for the weights of each MAF
using the Gradient Descent method. The presented method allows combi- nation
of MAF which have been generated by the method itself or defined by an
expert with those that are derived from a set of available data. The
developed method was first applied to controlled scenarios and traditional
data sets to ensure that classifications and explanations are correct.
Results show that the model can classify with an accuracy which is
comparable to other statistical classification methods, being also able to
extract the most important decision rules from the data.
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Pages article 113262
Volume 148
Journal name Expert Systems with Applications
Publisher Elsevier Science (Amsterdam, The Netherlands)
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