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A New Method of Hypothesis Test for Truncated Spline Nonparametric Regression Influenced by Spatial Heterogeneity and Application

Author

Listed:
  • Sifriyani
  • I. N. Budiantara
  • S. H. Kartiko
  • Gunardi

Abstract

This study developed a new method of hypothesis testing of model conformity between truncated spline nonparametric regression influenced by spatial heterogeneity and truncated spline nonparametric regression. This hypothesis test aims to determine the most appropriate model used in the analysis of spatial data. The test statistic for model conformity hypothesis testing was constructed based on the likelihood ratio of the parameter set under H0 whose components consisted of parameters that were not influenced by the geographical factor and the set under the population parameter whose components consisted of parameters influenced by the geographical factor. We have proven the distribution of test statistics V and verified that each of the numerators and denominators in the statistic test V followed a distribution of χ2. Since there was a symmetric and idempotent matrix S, it could be proved that Y~TS Y~/σ2~χn-lm-12. Matrix D(ui, vi) was positive semidefinite and contained weighting matrix W(ui, vi) which had different values in every location; therefore matrix D(ui, vi) was not idempotent. If Y~TDui,viY~≥0 and D(ui, vi) was not idempotent and also Y~ was a N(0, I) distributed random vector, then there were constants k and r; hence Y~TDui,viY~~kχr2; therefore it was concluded that test statistic V followed an F distribution. The modeling is implemented to find factors that influence the unemployment rate in 38 areas in Java in Indonesia.

Suggested Citation

  • Sifriyani & I. N. Budiantara & S. H. Kartiko & Gunardi, 2018. "A New Method of Hypothesis Test for Truncated Spline Nonparametric Regression Influenced by Spatial Heterogeneity and Application," Abstract and Applied Analysis, John Wiley & Sons, vol. 2018(1).
  • Handle: RePEc:wly:jnlaaa:v:2018:y:2018:i:1:n:9769150
    DOI: 10.1155/2018/9769150
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    References listed on IDEAS

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    1. Yee Leung & Chang-Lin Mei & Wen-Xiu Zhang, 2000. "Statistical Tests for Spatial Nonstationarity Based on the Geographically Weighted Regression Model," Environment and Planning A, , vol. 32(1), pages 9-32, January.
    2. Yee Leung & Chang-Lin Mei & Wen-Xiu Zhang, 2000. "Testing for Spatial Autocorrelation among the Residuals of the Geographically Weighted Regression," Environment and Planning A, , vol. 32(5), pages 871-890, May.
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    Cited by:

    1. M. Fathurahman & Purhadi & Sutikno & Vita Ratnasari, 2020. "Geographically Weighted Multivariate Logistic Regression Model and Its Application," Abstract and Applied Analysis, John Wiley & Sons, vol. 2020(1).

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