Abstract

This article is aimed at studying the legal regulation of artificial intelligence and edge computing automated decision-making risks in wireless network communications. The data under artificial intelligence is full of flexibility and vitality, which has changed the way of data existence in the whole society. Its core is various algorithm programs, which determine the existence of artificial intelligence. In this environment, society develops rapidly with unstoppable momentum. However, from a legal perspective, artificial intelligence has algorithmic discrimination, such as gender discrimination, clothing discrimination, and racial discrimination. It does not possess openness, objectivity, and accountability. The consequences are sometimes serious enough to endanger the public interest of the entire society, leading to market disorder, etc. Therefore, the problem of artificial intelligence algorithm discrimination remains to be solved. This article uses algorithms to adjust algorithm discrimination to reduce the harm caused by artificial intelligence algorithm discrimination to a certain extent. First of all, this article introduces a regulatory-based edge cloud computing architecture model. It is mentioned that distributed cloud computing can use subsystems to calculate various resources and storage resources and can make automated decisions when calculating certain data. In order to reduce the impact of algorithm discrimination and trigger data diversification to reduce the probability of discrimination, an edge computing network data capture system is designed. And this article mentions the BP neural network model. The BP neural network model is divided into input layer, output layer, and hidden layer. The training samples are passed from the input layer to the output layer through the hidden layer. If the output information does not meet expectations, the error will be back-propagated, and the connection weight will be adjusted continuously. This paper proposes a deep learning system model in real-time artificial intelligence driven by edge computing. When this model is applied to legal regulations, it can cooperate with edge computing and artificial intelligence algorithms to provide high-precision automated decision-making. Finally, this paper designs an artificial intelligence-assisted automated decision-making experiment based on the theory of legal computing. This paper proposes a Bayesian algorithm that uses edge algorithms to merge into artificial intelligence and verifies the feasibility of this hypothesis through experiments. The experimental results show that it has a certain ability to regulate algorithmic discrimination caused by artificial intelligence in legal regulations. It can improve the regulatory effects of laws and regulations to a certain extent, and the improved artificial intelligence Bayesian algorithm clustering effect of edge computing is increased by about 7.2%.

Highlights

  • The probability of winning a case will be increased by 4.2% compared with purely human-handled cases and the clustering effect of the artificial intelligence Bayes algorithm improved by edge computing will be increased by 7.2%

  • The Bayesian algorithm that uses edge algorithms to integrate artificial intelligence can improve the regulatory effect of laws and regulations to a certain extent, reduce algorithm discrimination caused by artificial intelligence, and have stronger clustering capabilities

  • When experimenting with the Bayesian algorithm that uses edge algorithms to be integrated into artificial intelligence, this article uses data from a traffic accident case obtained from a court to design the experiment

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Summary

Introduction

Behind the development of artificial intelligence, there are various issues that cannot be ignored, whether the technology should first follow the procedural rules or legal ethics. No matter what kind of technology it is, it will have its shortcomings, and in artificial intelligence algorithms, there is Wireless Communications and Mobile Computing algorithm discrimination. This kind of algorithm will lead to unreasonable and legal and ethical consequences under various artificial intelligence data analysis. The image software developed by Google mistakes black people in pictures for gorillas Such discrimination is extremely unreasonable and unethical. This article uses algorithms to reduce algorithm discrimination, based on edge computing in artificial intelligence and Bayesian decision theory, and discusses how to reduce artificial intelligence algorithm discrimination in law

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