unFEAR : unsupervised feature extraction clustering with an application to crisis regimes classification
Year of publication: |
2020
|
---|---|
Authors: | Chan-Lau, Jorge A. ; Wang, Ran |
Publisher: |
[Washington, DC] : International Monetary Fund |
Subject: | clustering | unsupervised feature extraction | autoencoder | machine learning | deeplearning | biased label problem | crisis prediction | Künstliche Intelligenz | Artificial intelligence | Clusteranalyse | Cluster analysis | Regionales Cluster | Regional cluster | Prognoseverfahren | Forecasting model | Klassifikation | Classification |
-
Statistical industry classification
Kakushadze, Zura, (2016)
-
Improving out-of-sample forecasts of stock price indexes with forecast reconciliation and clustering
Mattera, Raffaele, (2024)
-
Application of machine learning to cluster hotel booking curves for hotel demand forecasting
Viverit, Luciano, (2023)
- More ...
-
Chan-Lau, Jorge A., (2021)
-
Chan-Lau, Jorge A., (2021)
-
Market-Based Structural Top-Down Stress Tests of the Banking System
Chan-Lau, Jorge A., (2013)
- More ...