A ν-Support Vector Quantile Regression Model with Automatic Accuracy Control

Authors

  • Pritam Anand Dhirubhai Ambani Institute of Information and Communication Technology, Gujarat, India
  • Reshma Rastogi Department of Mathematics and Computer Science, South Asian University, New Delhi, India https://orcid.org/0000-0002-9322-4251
  • Suresh Chandra Department of Mathematics, Indian Institute of Technology, New Delhi, India

DOI:

https://doi.org/10.37256/rrcs.1220221662

Keywords:

quantile regression, pinball loss function, support vector machine, ϵ-insensitive loss function

Abstract

Quantile regression models have become popular among researchers these days. These models are being used frequently for obtaining the probabilistic forecast in different real-world applications. The Support Vector Quantile Regression (SVQR) model can obtain the conditional quantile estimate using kernel function in a non-parametric framework. The ϵ-SVQR model successfully incorporates the concept of the asymmetric ϵ-insensitive tube in the SVQR model and enables it to obtain a sparse and accurate solution. But, it requires a good choice of the user-defined parameter. A bad choice of ϵ value may result in poor predictions in the ϵ-SVQR model. In this paper, we propose a novel ‘ν-Support Vector Quantile Regression’ (ν-SVQR) model for quantile estimation. It can efficiently obtain a suitable asymmetric ϵ-insensitive zone according to the variance present in the data. The proposed ν-SVQR model uses the ν fraction of training data points for the estimation of the quantiles. In the ν-SVQR model, training points asymptotically appear above and below the asymmetric ϵ-insensitive tube in the ratio of 1 − τ and τ. Apart from these, there are other interesting properties of the proposed ν-SVQR model, which we have briefly described in this paper. These properties have been empirically verified using simulated and real-world data sets also.

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Published

2022-12-01

How to Cite

Anand, P., Rastogi, R., & Chandra, S. (2022). A ν-Support Vector Quantile Regression Model with Automatic Accuracy Control. Research Reports on Computer Science, 1(2), 113–135. https://doi.org/10.37256/rrcs.1220221662