MLLGApr 4, 2025

Adaptive Classification of Interval-Valued Time Series

arXiv:2504.03318v11 citationsh-index: 1
Originality Incremental advance
AI Analysis

This work addresses a gap in econometrics and statistics by enabling classification for interval-valued time series, which is an incremental advancement over existing regression-focused methods.

The paper tackles the problem of classifying interval-valued time series, which had been neglected in prior literature focused on regression, by proposing an adaptive method that transforms intervals into images and uses a neural network for classification, achieving validated effectiveness in simulations and real data applications.

In recent years, the modeling and analysis of interval-valued time series have garnered significant attention in the fields of econometrics and statistics. However, the existing literature primarily focuses on regression tasks while neglecting classification aspects. In this paper, we propose an adaptive approach for interval-valued time series classification. Specifically, we represent interval-valued time series using convex combinations of upper and lower bounds of intervals and transform these representations into images based on point-valued time series imaging methods. We utilize a fine-grained image classification neural network to classify these images, to achieve the goal of classifying the original interval-valued time series. This proposed method is applicable to both univariate and multivariate interval-valued time series. On the optimization front, we treat the convex combination coefficients as learnable parameters similar to the parameters of the neural network and provide an efficient estimation method based on the alternating direction method of multipliers (ADMM). On the theoretical front, under specific conditions, we establish a margin-based multiclass generalization bound for generic CNNs composed of basic blocks involving convolution, pooling, and fully connected layers. Through simulation studies and real data applications, we validate the effectiveness of the proposed method and compare its performance against a wide range of point-valued time series classification methods.

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