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Kernel estimation as a basic tool for geomorphological data analysis

机译:核估计作为地貌数据分析的基本工具

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摘要

Kernel estimation, based on the convolution of a probability density function with a set of magnitudes or event dates, provides tuneable smooth pictures of probability density functions and event intensity functions. Such pictures are in several respects superior to those provided by histograms, box plots, cumulative distributions or raw plots. They permit examination of broad features and fine structure, are readily produced with modest computational effort and are essentially free of artefacts arising from binning. Examples are given using data on cirque lengths, limestone pavements, glacier areas and dated flood deposits. The technique deserves widespread use in geomorphology and allied sciences. Copyright (C) 2007 John Wiley & Sons, Ltd.
机译:基于概率密度函数与一组量值或事件日期的卷积,内核估计可提供概率密度函数和事件强度函数的可调整平滑图像。在某些方面,此类图片要优于直方图,箱形图,累积分布或原始图。它们允许检查广泛的特征和精细的结构,可以通过少量的计算工作轻松地生产出来,并且基本上没有装箱所产生的伪像。给出的例子是有关太阳轮长度,石灰石路面,冰川面积和陈旧洪水的数据。该技术值得在地貌学和相关科学中广泛使用。版权所有(C)2007 John Wiley&Sons,Ltd.

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