SOTAVerified

Effects of data ambiguity and cognitive biases on the interpretability of machine learning models in humanitarian decision making

2019-11-12Unverified0· sign in to hype

David Paulus, Gerdien de Vries, Bartel Van de Walle

Unverified — Be the first to reproduce this paper.

Reproduce

Abstract

The effectiveness of machine learning algorithms depends on the quality and amount of data and the operationalization and interpretation by the human analyst. In humanitarian response, data is often lacking or overburdening, thus ambiguous, and the time-scarce, volatile, insecure environments of humanitarian activities are likely to inflict cognitive biases. This paper proposes to research the effects of data ambiguity and cognitive biases on the interpretability of machine learning algorithms in humanitarian decision making.

Tasks

Reproductions