UnFEAR: Unsupervised Feature Extraction Clustering with an Application to Crisis Regimes Classification

UnFEAR: Unsupervised Feature Extraction Clustering with an Application to Crisis Regimes Classification
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Volume/Issue: Volume 2020 Issue 262
Publication date: November 2020
ISBN: 9781513561660
$18.00
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Topics covered in this book

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Business and Economics - Statistics , clustering , unsupervised feature extraction , autoencoder , deep learning , biased label problem , crisis prediction , WP , crisis frequency , crisis observation , crisis risk , crisis data points , machine learning , Early warning systems , Global

Summary

We introduce unFEAR, Unsupervised Feature Extraction Clustering, to identify economic crisis regimes. Given labeled crisis and non-crisis episodes and the corresponding features values, unFEAR uses unsupervised representation learning and a novel mode contrastive autoencoder to group episodes into time-invariant non-overlapping clusters, each of which could be identified with a different regime. The likelihood that a country may experience an econmic crisis could be set equal to its cluster crisis frequency. Moreover, unFEAR could serve as a first step towards developing cluster-specific crisis prediction models tailored to each crisis regime.