Abstract

The complex systems with edge computing require a huge amount of multifeature data to extract appropriate insights for their decision making, so it is important to find a feasible feature selection method to improve the computational efficiency and save the resource consumption. In this paper, a quantum-based feature selection algorithm for the multiclassification problem, namely, QReliefF, is proposed, which can effectively reduce the complexity of algorithm and improve its computational efficiency. First, all features of each sample are encoded into a quantum state by performing operations CMP and Ry, and then the amplitude estimation is applied to calculate the similarity between any two quantum states (i.e., two samples). According to the similarities, the Grover–Long method is utilized to find the nearest k neighbor samples, and then the weight vector is updated. After a certain number of iterations through the above process, the desired features can be selected with regards to the final weight vector and the threshold τ. Compared with the classical ReliefF algorithm, our algorithm reduces the complexity of similarity calculation from O(MN) to O(M), the complexity of finding the nearest neighbor from O(M) to OM, and resource consumption from O(MN) to O(MlogN). Meanwhile, compared with the quantum Relief algorithm, our algorithm is superior in finding the nearest neighbor, reducing the complexity from O(M) to OM. Finally, in order to verify the feasibility of our algorithm, a simulation experiment based on Rigetti with a simple example is performed.

Highlights

  • Complex systems [1] are nonlinear systems composed of agents that can act with local environmental information, which require big data to extract appropriate insights for their decision making

  • In order to evaluate the efficiency of QReliefF algorithm, three algorithms are selected to compare with our algorithm from three indicators: complexity of similarity calculation (CSC), complexity of finding the nearest neighbor (CFNN), and resource consumption (RC)

  • Compared to the classic ReliefF algorithm, our algorithm reduces the complexity of similarity calculation from O(MN) to O(M) and the co√m p lexity of finding the nearest neighbor from O(M) to O( M )

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Summary

Introduction

Complex systems [1] are nonlinear systems composed of agents that can act with local environmental information, which require big data to extract appropriate insights for their decision making. In the application scenario of edge computing, there are various multiclassification problems based on distributed, massive, and large-feature data. E objective of this study is to design a feasible feature selection method which can effectively get rid of redundant or unrelated features in machine learning, reducing the computation load of intelligent terminals, and meet the requirement of real-time data processing and analysis in edge computing. We introduce some quantum technologies (such as CMP operation, amplitude estimation, and Grover–Long method) and propose a quantum-based feature selection algorithm, namely QReliefF algorithm, for the multiclassification problem. (1) A quantum method is proposed to solve the problem of feature selection for the multiclassification problem in complex systems with edge computing.

Review of ReliefF Algorithm
The Proposed QReliefF Algorithm
1: Quantum circuit of getting
Example
Simulation Experiment
Conclusion and Discussion
Findings
Disclosure
Full Text
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