On the Use of a Modified Intersection of Confidence Intervals (MICIH) Kernel Density Estimation Approach

Efosa Michael Ogbeide, Joseph Erunmwosa Osemwenkhae
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Abstract

Density estimation is an important aspect of statistics. Statistical inference often requires the knowledge of observed data density. A common method of density estimation is the kernel density estimation (KDE). It is a nonparametric estimation approach which requires a kernel function and a window size (smoothing parameter H). It aids density estimation and pattern recognition. So, this work focuses on the use of a modified intersection of confidence intervals (MICIH) approach in estimating density. The Nigerian crime rate data reported to the Police as reported by the National Bureau of Statistics was used to demonstrate this new approach. This approach in the multivariate kernel density estimation is based on the data. The main way to improve density estimation is to obtain a reduced mean squared error (MSE), the errors for this approach was evaluated. Some improvements were seen. The aim is to achieve adaptive kernel density estimation. This was achieved under a sufficiently smoothing technique. This adaptive approach was based on the bandwidths selection. The quality of the estimates obtained of the MICIH approach when applied, showed some improvements over the existing methods. The MICIH approach has reduced mean squared error and relative faster rate of convergence compared to some other approaches. The approach of MICIH has reduced points of discontinuities in the graphical densities the datasets. This will help to correct points of discontinuities and display adaptive density. Keywords: approach, bandwidth, estimate, error, kernel density
关于一种改进的置信区间交集(MICIH)核密度估计方法的应用
密度估计是统计学的一个重要方面。统计推断通常需要观测数据密度的知识。密度估计的一种常见方法是核密度估计(KDE)。这是一种非参数估计方法,需要核函数和窗口大小(平滑参数H)。它有助于密度估计和模式识别。因此,这项工作的重点是使用改进的置信区间交集(MICIH)方法来估计密度。国家统计局向警方报告的尼日利亚犯罪率数据被用来证明这一新方法。多元核密度估计中的这种方法是基于数据的。改进密度估计的主要方法是获得减小的均方误差(MSE),并对该方法的误差进行了评估。看到了一些改进。其目的是实现自适应核密度估计。这是在充分平滑的技术下实现的。这种自适应方法是基于带宽选择的。采用多指标类集调查方法获得的估计数的质量表明,与现有方法相比有所改进。与其他一些方法相比,MICIH方法降低了均方误差,收敛速度相对较快。MICIH的方法减少了数据集图形密度中的不连续点。这将有助于校正不连续点并显示自适应密度。关键词:方法、带宽、估计、误差、核密度
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