Performance of the supervised generative classifiers of spatio-temporal areal data using various spatial autocorrelation indexes

被引:0
作者
Karaliute, Marta [1 ,2 ]
Ducinskas, Kestutis [1 ,2 ]
机构
[1] Vilnius Univ, Inst Data Sci & Digital Technol, Vilnius, Lithuania
[2] Klaipeda Univ, Fac Marine Technol & Nat Sci, Klaipeda, Lithuania
来源
NONLINEAR ANALYSIS-MODELLING AND CONTROL | 2023年 / 28卷 / 02期
关键词
separable covariance function; Bayes discriminant function; spatial weights; confusion matrix; decision threshold values; CLASSIFICATION; MODELS; SEPARABILITY; SPACE;
D O I
10.15388/namc.2023.28.31434
中图分类号
O29 [应用数学];
学科分类号
070104 ;
摘要
This article is concerned with a generative approach to supervised classification of spatio-temporal data collected at fixed areal units and modeled by Gaussian Markov random field. We focused on the classifiers based on Bayes discriminant functions formed by the log-ratio of the class conditional likelihoods. As a novel modeling contribution, we propose to use decision threshold values induced by three popular spatial autocorrelation indexes, i.e., Moran's I, Geary's C and Getis-Ord G. The goal of this study is to extend the recent investigations in the context of geostatistical and hidden Markov Gaussian models to one in the context of areal Gaussian Markov models. The classifiers performance measures are chosen to be the average accuracy rate, which shows the percentage of correctly classified test data, balanced accuracy rate specified by the average of sensitivity and specificity and the geometric mean of sensitivity and specificity. The proposed methodology is illustrated using annual death rate data collected by the Institute of Hygiene of the Republic of Lithuania from the 60 municipalities in the period from 2001 to 2019. Classification model selection procedure is illustrated on three data sets with class labels specified by the threshold to mortality index due to acute cardiovascular event, malignant neoplasms and diseases of the circulatory system. Presented critical comparison among proposed approach classifiers with various spatial autocorrelation indexes (decision threshold values) and classifier based hidden Markov model can aid in the selection of proper classification techniques for the spatio-temporal areal data.
引用
收藏
页码:250 / 263
页数:14
相关论文
共 48 条
[41]   Spatio-temporal distribution of sea-ice thickness using a machine learning approach with Google Earth Engine and Sentinel-1 GRD data [J].
Shamshiri, Roghayeh ;
Eide, Egil ;
Hoyland, Knut Vilhelm .
REMOTE SENSING OF ENVIRONMENT, 2022, 270
[42]   Assessment of rockfall hazard at Al-Noor Mountain, Makkah city (Saudi Arabia) using spatio-temporal remote sensing data and field investigation [J].
Youssef, Ahmed M. ;
Pradhan, Biswajeet ;
Al-Kathery, Mohamed ;
Bathrellos, George D. ;
Skilodimou, Hariklia D. .
JOURNAL OF AFRICAN EARTH SCIENCES, 2015, 101 :309-321
[43]   Understanding the spatio-temporal behavior of crop yield, yield components and weed pressure using time series Sentinel-2-data in an organic farming system [J].
Marino, Stefano .
EUROPEAN JOURNAL OF AGRONOMY, 2023, 145
[44]   The effect of spatio-temporal sample imbalance in epidemiologic surveillance using opportunistic samples: An ecological study using real and simulated self-reported COVID-19 symptom data [J].
Posada, Alejandro Rozo ;
Faes, Christel ;
Beutels, Philippe ;
Pepermans, Koen ;
Hens, Niel ;
Van Damme, Pierre ;
Neyens, Thomas .
SPATIAL AND SPATIO-TEMPORAL EPIDEMIOLOGY, 2024, 50
[45]   Advances in precision agriculture in south-eastern Australia. II. Spatio-temporal prediction of crop yield using terrain derivatives and proximally sensed data [J].
Robinson, N. J. ;
Rampant, P. C. ;
Callinan, A. P. L. ;
Rab, M. A. ;
Fisher, P. D. .
CROP & PASTURE SCIENCE, 2009, 60 (09) :859-869
[46]   Using age compositions derived from spatio-temporal models and acoustic data collected by uncrewed surface vessels to estimate Pacific hake (Merluccius productus) biomass-at-age [J].
Bolser, Derek G. ;
Berger, Aaron M. ;
Chu, Dezhang ;
de Blois, Steve ;
Pohl, John ;
Thomas, Rebecca E. ;
Wallace, John ;
Hastie, Jim ;
Clemons, Julia ;
Ciannelli, Lorenzo .
FRONTIERS IN MARINE SCIENCE, 2023, 10
[47]   Estimating fishing effort in small-scale fisheries using high-resolution spatio-temporal tracking data (an implementation framework illustrated with case studies from Portugal) [J].
Rufino, Marta M. ;
Mendo, Tania ;
Samarao, Joao ;
Gaspar, Miguel B. .
ECOLOGICAL INDICATORS, 2023, 154
[48]   Spatio-temporal variation in surface water in Punjab, Pakistan from 1985 to 2020 using machine-learning methods with time-series remote sensing data and driving factors [J].
Tariq, Aqil ;
Qin, Shujing .
AGRICULTURAL WATER MANAGEMENT, 2023, 280