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An adaptive algorithm for least squares piecewise monotonic data fitting

机译:最小二乘分段单调数据拟合的自适应算法

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The number of peaks and troughs of measurements of smooth function values can be unacceptably larger than the number of turning points of the function, when the measurements are too rough. It is proposed to make the least sum of squares change to the data subject to a limit on the number of sign changes of their first divided differences, but usually a suitable value of this limit is not known in advance. It is shown how to obtain automatically an adequate value for it. A test is included that attempts to distinguish between genuine trends and data errors. Specifically, if there are trends, then the monotonic sections of a tentative approximation are increased by one, otherwise this approximation seems to meet the trends and the calculation terminates. The numerical work required per iteration, beyond the second one, is quadratic in the number of data. Details for establishing the underlying algorithm are specified, numerical results from a simulation are included and the test is compared to some well-known residual tests. An application of the algorithm on identifying turning points and trends of data from the Dow Jones stock exchange index is presented. A Fortran implementation of our algorithm provides shorter computation times in practice than the complexity indicates in theory. Further, the single monotonicity problem has found many applications in statistical data analyses within various contexts. More generally, piecewise monotonicity is a property that occurs in a wide range of underlying functions and some important applications of it may be found in detrending data for identifying periodicities (eg. business cycles), or in estimating turning points of a function that is known only by some measurements of its values.
机译:当测量值过于粗糙时,平滑函数值的测量值的峰值和谷值的数量可能会大于该函数的转折点的数量,这是无法接受的。建议对数据进行最小二乘方和,以对其第一划分差的正负号变化的数量进行限制,但是通常事先不知道该限制的合适值。它显示了如何自动获取适当的值。包括一个试图区分真实趋势和数据错误的测试。具体来说,如果存在趋势,则将暂定近似的单调部分增加一个,否则该近似似乎满足趋势,并且计算终止。除第二次迭代外,每次迭代所需的数值功是数据数量的平方。详细说明了用于建立基础算法的细节,包括了来自模拟的数值结果,并将该测试与一些众所周知的残差测试进行了比较。提出了该算法在根据道琼斯证券交易所指数识别数据的转折点和趋势方面的应用。我们的算法的Fortran实现在实践中提供的计算时间比理论上表明的复杂度要短。此外,单调性问题已经在各种情况下的统计数据分析中找到了许多应用。更一般而言,分段单调性是一种广泛存在于基础功能中的属性,它的一些重要应用可以在去趋势数据中识别周期性(例如,商业周期)或估计已知功能的转折点。仅通过对其值的一些测量。

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