Modelling heterogeneous distributions with an Uncountable Mixture of Asymmetric Laplacians

October 27, 2019 ยท Declared Dead ยท ๐Ÿ› Neural Information Processing Systems

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Authors Axel Brando, Jose A. Rodrรญguez-Serrano, Jordi Vitriร , Alberto Rubio arXiv ID 1910.12288 Category cs.LG: Machine Learning Cross-listed stat.ML Citations 23 Venue Neural Information Processing Systems Last Checked 3 months ago
Abstract
In regression tasks, aleatoric uncertainty is commonly addressed by considering a parametric distribution of the output variable, which is based on strong assumptions such as symmetry, unimodality or by supposing a restricted shape. These assumptions are too limited in scenarios where complex shapes, strong skews or multiple modes are present. In this paper, we propose a generic deep learning framework that learns an Uncountable Mixture of Asymmetric Laplacians (UMAL), which will allow us to estimate heterogeneous distributions of the output variable and shows its connections to quantile regression. Despite having a fixed number of parameters, the model can be interpreted as an infinite mixture of components, which yields a flexible approximation for heterogeneous distributions. Apart from synthetic cases, we apply this model to room price forecasting and to predict financial operations in personal bank accounts. We demonstrate that UMAL produces proper distributions, which allows us to extract richer insights and to sharpen decision-making.
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