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We consider discrete linear Chebyshev approximation problems in which the unknown parameters of linear function are fitted by minimizing the least maximum absolute deviation of errors. Such problems find application in the solution of overdetermined systems of linear equations that appear in many practical contexts. The least maximum absolute deviation estimator is used in regression analysis in statistics when the distribution of errors has bounded support. To derive a direct solution of the problem, we propose an algebraic approach based on a parameter elimination technique. As a key component of the approach, an elimination lemma is proved to handle the problem by reducing it to a problem with one parameter eliminated, together with a box constraint imposed on this parameter. We demonstrate the application of the lemma to the direct solution of linear regression problems with one and two parameters. We develop a procedure to solve multidimensional approximation (multiple linear regression) problems in a finite number of steps. The procedure follows a method that comprises two phases: backward elimination and forward substitution of parameters. We describe the main components of the procedure and estimate its computational complexity. We implement symbolic computations in MATLAB to obtain exact solutions for two numerical examples.
Язык оригиналаанглийский
Номер статьи2210
Страницы (с-по)1-16
Число страниц16
ЖурналMathematics
Том8
Номер выпуска12
DOI
СостояниеОпубликовано - 13 дек 2020

    Предметные области Scopus

  • Вычислительная математика
  • Теория оптимизации
  • Статистика, теория вероятности и теория неопределенности
  • Теория управления и исследование операций
  • Математика (все)

ID: 71622534