Not all mistakes are equal

Conference Paper (2020)
Author(s)

Murat Sensoy (Blue Prism Al Labs, London)

Maryam Saleki (Özyeğin University)

Simon Julier (University College London)

Reyhan Aydoğan (Özyeğin University, TU Delft - Interactive Intelligence)

John Reid (Blue Prism Al Labs, London)

Research Group
Interactive Intelligence
More Info
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Publication Year
2020
Language
English
Research Group
Interactive Intelligence
Pages (from-to)
1996-1998
ISBN (electronic)
9781450375184

Abstract

In many tasks, classifiers play a fundamental role in the way an agent behaves. Most rational agents collect sensor data from the environment, classify it, and act based on that classification. Recently, deep neural networks (DNNs) have become the dominant approach to develop classifiers due to their excellent performance. When training and evaluating the performance of DNNs, it is normally assumed that the cost of all misclassification errors are equal. However, this is unlikely to be true in practice. Incorrect classification predictions can cause an agent to take inappropriate actions. The costs of these actions can be asymmetric, vary from agent-to-agent, and depend on context. In this paper, we discuss the importance of considering risk and uncertainty quantification together to reduce agents' cost of making misclassifications using deep classifiers.

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