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Deep transformation models : Tackling complex regression problems with neural network based transformation models

  • We present a deep transformation model for probabilistic regression. Deep learning is known for outstandingly accurate predictions on complex data but in regression tasks it is predominantly used to just predict a single number. This ignores the non-deterministic character of most tasks. Especially if crucial decisions are based on the predictions, like in medical applications, it is essential to quantify the prediction uncertainty. The presented deep learning transformation model estimates the whole conditional probability distribution, which is the most thorough way to capture uncertainty about the outcome. We combine ideas from a statistical transformation model (most likely transformation) with recent transformation models from deep learning (normalizing flows) to predict complex outcome distributions. The core of the method is a parameterized transformation function which can be trained with the usual maximum likelihood framework using gradient descent. The method can be combined with existing deep learning architectures. For small machine learning benchmark datasets, we report state of the art performance for most dataset and partly even outperform it. Our method works for complex input data, which we demonstrate by employing a CNN architecture on image data.

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Metadaten
Author:Beate SickGND, Torsten Hathorn, Oliver DürrORCiDGND
DOI:https://doi.org/10.1109/ICPR48806.2021.9413177
ISBN:978-1-7281-8808-9
ISBN:978-1-7281-8809-6
ISSN:1051-4651
Parent Title (English):ICPR 2020 - 25th International Conference on Pattern Recognition (ICPR), 10-15 Jan. 2021, Milan, Italy, virtual
Publisher:IEEE
Document Type:Conference Proceeding
Language:English
Year of Publication:2021
Release Date:2022/01/08
First Page:2476
Last Page:2481
Note:
Im Campusnetz der Hochschule Konstanz via Datenbank IEEE Xplore abrufbar.
Relevance:Peer reviewed nach anderen Listungen (mit Nachweis zum Peer Review Verfahren)
Open Access?:Nein
Licence (German):License LogoUrheberrechtlich geschützt