Batch Inverse-Variance Weighting: Deep Heteroscedastic Regression

Heteroscedastic regression is the task of supervised learning where each label is subject to noise from a different distribution. This noise can be caused by the labelling process, and impacts negatively the performance of the learning algorithm as it violates the i.i.d. assumptions. In many situations however, the labelling process is able to estimate the variance of such distribution for each label, which can be used as an additional information to mitigate this impact.

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Cite this as

Vincent Mai, Whaleed Khamies, Liam Paull (2024). Dataset: Batch Inverse-Variance Weighting: Deep Heteroscedastic Regression. https://doi.org/10.57702/5lz8nuyu

DOI retrieved: December 16, 2024

Additional Info

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Created December 16, 2024
Last update December 16, 2024
Defined In https://doi.org/10.48550/arXiv.2107.04497
Author Vincent Mai
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Whaleed Khamies
Liam Paull
Homepage https://github.com/montrealrobotics/BIV