Saved in:
Bibliographic Details
Main Authors: Tang, Yongxiang, Cheng, Yanhua, Liu, Xiaocheng, Jiao, Chenchen, Zeng, Yanxiang, Luo, Ning, Yuan, Pengjia, Liu, Xialong, Jiang, Peng
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2506.03542
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866908628885176320
author Tang, Yongxiang
Cheng, Yanhua
Liu, Xiaocheng
Jiao, Chenchen
Zeng, Yanxiang
Luo, Ning
Yuan, Pengjia
Liu, Xialong
Jiang, Peng
author_facet Tang, Yongxiang
Cheng, Yanhua
Liu, Xiaocheng
Jiao, Chenchen
Zeng, Yanxiang
Luo, Ning
Yuan, Pengjia
Liu, Xialong
Jiang, Peng
contents In many machine learning tasks, it is often necessary for the relationship between input and output variables to be monotonic, including both strictly monotonic and implicitly monotonic relationships. Traditional methods for maintaining monotonicity mainly rely on construction or regularization techniques, whereas this paper shows that the issue of strict monotonic probability can be viewed as a partial order between an observable revenue variable and a latent cost variable. This perspective enables us to reformulate the monotonicity challenge into modeling the latent cost variable. To tackle this, we introduce a generative network for the latent cost variable, termed the Generative Cost Model (GCM), which inherently addresses the strict monotonic problem, and propose the Implicit Generative Cost Model (IGCM) to address the implicit monotonic problem. We further validate our approach with a numerical simulation of quantile regression and conduct multiple experiments on public datasets, showing that our method significantly outperforms existing monotonic modeling techniques. The code for our experiments can be found at https://github.com/tyxaaron/GCM.
format Preprint
id arxiv_https___arxiv_org_abs_2506_03542
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Learning Monotonic Probabilities with a Generative Cost Model
Tang, Yongxiang
Cheng, Yanhua
Liu, Xiaocheng
Jiao, Chenchen
Zeng, Yanxiang
Luo, Ning
Yuan, Pengjia
Liu, Xialong
Jiang, Peng
Machine Learning
In many machine learning tasks, it is often necessary for the relationship between input and output variables to be monotonic, including both strictly monotonic and implicitly monotonic relationships. Traditional methods for maintaining monotonicity mainly rely on construction or regularization techniques, whereas this paper shows that the issue of strict monotonic probability can be viewed as a partial order between an observable revenue variable and a latent cost variable. This perspective enables us to reformulate the monotonicity challenge into modeling the latent cost variable. To tackle this, we introduce a generative network for the latent cost variable, termed the Generative Cost Model (GCM), which inherently addresses the strict monotonic problem, and propose the Implicit Generative Cost Model (IGCM) to address the implicit monotonic problem. We further validate our approach with a numerical simulation of quantile regression and conduct multiple experiments on public datasets, showing that our method significantly outperforms existing monotonic modeling techniques. The code for our experiments can be found at https://github.com/tyxaaron/GCM.
title Learning Monotonic Probabilities with a Generative Cost Model
topic Machine Learning
url https://arxiv.org/abs/2506.03542