4.2 Editorial Material

Raising the bar (20)

Journal

SPATIAL ECONOMIC ANALYSIS
Volume 17, Issue 2, Pages 151-155

Publisher

ROUTLEDGE JOURNALS, TAYLOR & FRANCIS LTD
DOI: 10.1080/17421772.2022.2053402

Keywords

machine learning; prediction; spatial econometrics; logit; urban economics

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This editorial summarizes the papers published in issue 17(2) (2022), covering topics such as predicting firm bankruptcy, improving regional input-output table estimation, investigating network centrality, estimating spatial autoregressive models, and testing misspecification problems in spatial econometric models.
This editorial summarizes the papers published in issue 17(2) (2022). The first paper evaluates logistic regression and machine-learning methods for predicting firm bankruptcy. The second paper demonstrates that machine learning outperforms existing tools to improve the estimation of regional input-output tables. The third paper investigates whether network centrality depends on the probability that a tie between two nodes is formed, as well as its intensity. The fourth paper sets out a Bayesian estimation technique to estimate a spatial autoregressive multinomial logit model. The fifth paper develops a statistic to test for several misspecification problems in spatial econometric models. The sixth paper compares the prediction accuracy of spatial and non-spatial econometric models explaining the number of tourist arrivals across countries.

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