Softmax Regression and Particle Swarm Optimization with Taboos and a Heuristic Strategy for Dose-effect Data Fitting | IEEE Conference Publication | IEEE Xplore

Softmax Regression and Particle Swarm Optimization with Taboos and a Heuristic Strategy for Dose-effect Data Fitting


Abstract:

The fitting of the dose-effect data of traditional Chinese medicine is of important meaning in the research of the dose-effect relationship of traditional Chinese medicin...Show More

Abstract:

The fitting of the dose-effect data of traditional Chinese medicine is of important meaning in the research of the dose-effect relationship of traditional Chinese medicine. Aiming at the problem that the dose-effect data of traditional Chinese medicine are of multi-dimensional structure and the problem that standard particle swarm optimization (PSO) method may fall into a radical or still state, in this paper, the authors apply softmax regression to the modeling of the fitting of the dose-effect data of traditional Chinese medicine, and suggest a novel method for the data fitting based on a hybrid particle swarm optimization algorithm with taboos and a heuristic strategy. In this study, Min-Max normalization method is used to normalize independent variables and dependent variables. Then the authors conduct a fast dimensional transformation by multiplying a transformation matrix on the right side of independent variable matrix. After that, a mathematic model for the fitting of dose-effect data is built in accordance with softmax regression including a regression formula and an evaluation function. In the end, the authors apply a novel hybrid PSO algorithm with taboos and a heuristic strategy to the fitting of the dose-effect data of traditional Chinese medicine. In the comparative experiments, the authors implemented hill climbing algorithm, conventional genetic algorithm, standard PSO algorithm and our method, and utilized these methods to conduct the fitting of the dose-effect data. Experimental results on the problem of dose-effect data fitting demonstrate that the proposed method significantly outperforms the 3 classic methods with respect to accuracy in the conducted experiments. And our method is more efficient than hill climbing algorithm and conventional genetic algorithm in comparative experiments.
Date of Conference: 04-06 June 2021
Date Added to IEEE Xplore: 19 November 2021
ISBN Information:
Conference Location: Guilin, China

Funding Agency:


I. Introduction

Traditional Chinese medicine is important substance for body construction and disease treatment in China during the past thousands of years. Effects after having traditional Chinese medicine vary according to the dosage of traditional Chinese medicine. This procedure is so called the research of the dose-effect relationship of traditional Chinese medicine. In this world, information technology has been gradually rising. Various kinds of informatics methods for medicine research have come into being. In this paper, the authors try to combine softmax regression and a hybrid PSO algorithm for the fitting of the dose-effect data of traditional Chinese medicine. And this work is a devotion to the research of the dose-effect relationship of traditional Chinese medicine. An overview from the aspect of data fitting is given below.

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References

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