Abstract

Determining the projection direction vector (PDV) is essential to the projection pursuit evaluation method for high-dimensional problems under multiple uncertainties. Although the PP method using a cloud model can facilitate interpretation of the fuzziness and randomness of the PDV, it ignores the asymmetry of the PDV and the fact that indicators are actually distributed over finite intervals; it quickly falls into premature defects. Therefore, a novel PP evaluation method based on the connection cloud model (CCM) is discussed to remedy these drawbacks. In this approach, adaptive numerical characteristics of the CCM are adopted to represent the randomness and fuzziness of the candidate PDV and evaluation indicators. Meanwhile, to avoid complex computing and to accelerate the convergence speed of the optimization procedure, an improved fruit fly optimization algorithm (FOA) is set up to find the rational PDV. Alternatively, candidate PDVs are mutated based on the mechanism “pick the best of the best” using set pair analysis (SPA) and chaos theory. Furthermore, the applicability and reliability are discussed based on an illustrative example of slope stability evaluation and comparisons with the neural network method and the PP evaluation method based on the other FOAs and the genetic algorithm. Results indicate that the proposed method with simpler code and quicker convergence speed has good global ergodicity and local searching capabilities, and can better explore the structure of high-dimensional data with multiple uncertainties and asymmetry of the PDV relative to other methods.

Highlights

  • The optimization of high-dimensional problems has been a focal issue of computer science, artificial intelligence, management decision making, and engineering applications.Previously, the confirmatory data analysis (CDA) method has been used, with some assumptions of the data structure or distribution characteristics, and following specific criteria [1]—such as how the reliability analysis method and multivariate analysis method obey normal distribution

  • Evaluation methods based on classification criteria or empirical rules are widely used in practical engineering problems

  • The present model can achieve the algorithm based on the connection cloud model (CCM) and set pair analysis to optimize the projection direction vector (PDV) and the projection pursuit (PP) method target with fewer iterations, showing that the current algorithm has high computational based on the improved fly optimization algorithm (FOA) are investigated to analyze the structural characteristics of efficiency

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Summary

Introduction

The optimization of high-dimensional problems has been a focal issue of computer science, artificial intelligence, management decision making, and engineering applications.Previously, the confirmatory data analysis (CDA) method has been used, with some assumptions of the data structure or distribution characteristics, and following specific criteria [1]—such as how the reliability analysis method and multivariate analysis method obey normal distribution. Some corresponding robust or non-parametric methods were proposed to handle these problems [2]; these conventional approaches are impossible to use for finding out the inherent characteristics of highdimensional non-normal data and are far from meeting the needs of analysis. They may lead to the problem of the “curse of dimensionality” [3,4]. For this purpose, intelligent algorithms, including the neural network method [5] and ant colony algorithm, were proposed to improve accuracy. To explore the structure or features of high-dimensional data directly from the perspective of data, Friedman and Turkey [7]

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