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A Comprehensive Study of Crime Detection with PCA and Different Neural Network Approach

机译:用PCA和不同神经网络方法犯罪检测综合研究

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Crime rate in Malaysia is almost in awareness stage. The centre for Public Policy Studies Malaysia reports that the ratio of police to population is 3.6 officers to 1,000 citizens in Malaysia. This lack of manpower sources ratios alone are not a comprehensive afford of crime fighting capabilities. Thus, dealing with these circumstances, we present a comprehensive study to determine bandit behavior with PCA and different neural network algorithm such as Elman Neural Network (ELMNN), Feed Forward Neural Network (FFNN) and Cascade-Forward Neural Network (CFNN). This system provided a good justification as a monitoring supplementary tool for the Malaysian police arm forced.
机译:马来西亚的犯罪率几乎处于认识阶段。马来西亚的公共政策研究中心报告说,警察对人口的比例为马来西亚的1,000名公民。仅凭缺乏人力资源比例并不完全是犯罪斗争能力的全面负担。因此,处理这些情况,我们提出了一个全面的研究,以确定具有PCA和不同神经网络算法的强盗行为,如ELMAN神经网络(ELMNN),馈送前神经网络(FFNN)和级联神经网络(CFNN)。该系统为马来西亚警察部队强迫的监测补充工具提供了良好的理由。

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