Impacts of Data Transformations on Least-Squares Solutions and Their Significance in Data Analysis and Evaluation.
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概要
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In order to illustrate a potential problem which lies implicitly in the least-squares method, an anomaly known as Peelle's Pertinent Puzzle is introduced which appears in obtaining a least-squares average of two strongly-correlated data. This anomaly is then generalized as a change of least-squares solution when data and associated covariance matrix are transformed by non-linear functions. Reason of the change of the least-squares solution with respect to such data transformations is explained by the inconsistency in transforming the data covariance and sensitivity matrices. General criteria which can resolve this anomaly are derived. It is shown that if either one of these criteria is satisfied, the least-squares method gives the correct answer even if the data are discrepant, strongly correlated and the number of data points is small. Effects of data truncations are illustrated by a numerical example, which give an explanation on another aspect of Peelle's Puzzle. An approximate method is also proposed which should be applied when the correct method derived in this paper is not feasible.
- 一般社団法人 日本原子力学会の論文
著者
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CHIBA Satoshi
Nuclear Data Center, Department of Reactor Engineering, Japan Atomic Energy Research Institute
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CHIBA Satoshi
Nuclear Data Center, Japan Atomic Energy Research Institute
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- Impacts of Data Transformations on Least-Squares Solutions and Their Significance in Data Analysis and Evaluation.