3.8 Article

Application of total least squares for spatial point process analysis

期刊

JOURNAL OF SURVEYING ENGINEERING-ASCE
卷 130, 期 3, 页码 126-133

出版社

ASCE-AMER SOC CIVIL ENGINEERS
DOI: 10.1061/(ASCE)0733-9453(2004)130:3(126)

关键词

least squares method; geographic information systems; automatic identification systems; surveys

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The total-least-squares approach is a relatively new adjustment method of estimating parameters in linear models that include error in all variables. Specifically, given an overdetermined set of linear equations yapproximate toAxi where y is the observation vector, A is a positive defined data matrix, and g is the vector of unknown parameters, the total-least-squares problem is concerned with estimating g providing that the number of observations n is larger than the number of parameters to be estimated and given that both the observation vector y and the data matrix A are subjected to errors and need to be adjusted. This model is different from the classical least-squares model where only the observation vector y is subjected to errors. This paper starts with a brief summary of the least-squares approach and then explains how one can modify the approach to include error in all variables using the generalized least-squares technique. Then the total-least-squares problem is presented along with its formulas and the procedures used to solve it. Finally, the total-least-squares approach is used to determine the trend in a spatial point process.

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