Mean absolute deviation function is used to explore the pattern and the distribution of the data graphically to enable analysts gaining greater understanding of raw data and to foster quick and a deep understanding of the data as an important fundament for successful data analytic. Furthermore, new nonparametric approaches for estimating the cumulative distribution function based on the mean absolute deviation function are proposed. These new approaches are meant to be a general nonparametric class that includes the empirical distribution function as a special case. Simulation study reveals that the Richardson extrapolation approach has a major improvement in terms of average squared errors over the classical empirical estimators and has comparable results with smooth approaches such as cubic spline and constrained linear spline for practically small samples. The properties of the proposed estimators are studied. Moreover, the Richardson approach applied for real data application and used to estimate the hazardous concentration five percent.
翻译:平均绝对偏差功能用于以图形方式探索数据的模式和分布,使分析家能够更好地了解原始数据,并促进快速和深入地了解数据,作为成功分析数据的重要基础。此外,还提出了新的非参数方法,用以根据平均绝对偏差功能估算累积分布功能。这些新方法意在成为一般的非参数类别,包括作为特例的经验分布功能。模拟研究显示,理查森外推法在传统经验估测器的平均平方差方面大有改进,并具有可比较的结果,采用平滑的方法,如立方螺纹和几乎小样本受限制的线性线性螺纹等。还研究了拟议估算器的特性。此外,理查德森法用于实际数据应用,用于估计危险浓度的5%。