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A comparative study on the performance of fuzzy logic, Bayesian logic and neural network towards decision-making

机译:模糊逻辑,贝叶斯逻辑和神经网络对决策的性能比较研究

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摘要

Soft computing models play an important role in the field of recognition, classification, data prediction, etc., and also in various application fields towards decision-making. Soft computing models include fuzzy logic, neural, network, genetic algorithm, particle swarm optimisation, tabu search, harmonie search, clustering, etc. The performance of a particular soft computing model can be ascertained using a particular dataset for the purpose of decision-making. Here, an effort has been made to make a comparison on the performance of fuzzy logic, Bayesian logic and neural network. The model with minimum error has been given preference for selection towards decision-making of information. The same method has been cross-checked based on the residual analysis to verify the earlier proposed observation. The said models have also been cross-checked based on other dataset. Under neural network, perceptron neural network model has been used.
机译:软计算模型在识别,分类,数据预测等领域以及决策的各个应用领域中都发挥着重要作用。软计算模型包括模糊逻辑,神经网络,网络,遗传算法,粒子群优化,禁忌搜索,和声搜索,聚类等。可以使用特定的数据集来确定特定软计算模型的性能以用于决策。 。在这里,已经做出努力来比较模糊逻辑,贝叶斯逻辑和神经网络的性能。误差最小的模型已被优先选择用于信息决策。根据残差分析对相同的方法进行了交叉检查,以验证较早提出的观测结果。所述模型还已经基于其他数据集进行了交叉检查。在神经网络下,使用了感知器神经网络模型。

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