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一个带有稀疏性和熵的广义多准则数据拟合模型及其在增长预测中的应用

A Generalized Multiple Criteria Data-Fitting Model With Sparsity and Entropy With Application to Growth Forecasting

IEEE Transactions on Engineering Management · 2021
被引 8
ABS 3

中文导读

提出一个整合数据拟合、熵和稀疏性三个冲突准则的广义模型,用标量化算法求解,并在手写数字识别和GDP增长预测中验证。

Abstract

In this article, we present an extended data-fitting model which involves different and conflicting criteria, and we propose an algorithm based on a scalarization technique to solve it. Our model integrates in a unique framework three different criteria, namely, a data-fitting term, and the entropy and the sparsity of the set of unknown parameters. This model can be analyzed by means of multiple criteria decision-making techniques. We then validate the proposed modified algorithm using two computational experiments: We analyze the problem of handwritten digit recognition using a logistic regression model and a deep neural network model, respectively. In the final part of the article, we employ this methodology to forecasting instead. Given the importance of forecasting techniques to predict the future, which in turn can lead to positive impacts on firm performance, we propose two numerical experiments focusing on the forecast of the US GDP. In the first one, we proceed by means of a modified iterated function system with grayscale maps-type fractal operator, and, in the second one, we implement a modified neural network-based model.

机器学习数据挖掘经济增长预测多准则决策