Dragićević, Suzana

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  • Dragićević, Suzana (5)
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Author's Bibliography

Machine Learning Techniques for Modelling Short Term Land-Use Change

Samardžić-Petrović, Mileva; Kovačević, Miloš; Bajat, Branislav; Dragićević, Suzana

(MDPI AG, 2017)

TY  - JOUR
AU  - Samardžić-Petrović, Mileva
AU  - Kovačević, Miloš
AU  - Bajat, Branislav
AU  - Dragićević, Suzana
PY  - 2017
UR  - https://grafar.grf.bg.ac.rs/handle/123456789/865
AB  - The representation of land use change (LUC) is often achieved by using data-driven methods that include machine learning (ML) techniques. The main objectives of this research study are to implement three ML techniques, Decision Trees (DT), Neural Networks (NN), and Support Vector Machines (SVM) for LUC modeling, in order to compare these three ML techniques and to find the appropriate data representation. The ML techniques are applied on the case study of LUC in three municipalities of the City of Belgrade, the Republic of Serbia, using historical geospatial data sets and considering nine land use classes. The ML models were built and assessed using two different time intervals. The information gain ranking technique and the recursive attribute elimination procedure were implemented to find the most informative attributes that were related to LUC in the study area. The results indicate that all three ML techniques can be used effectively for short-term forecasting of LUC, but the SVM achieved the highest agreement of predicted changes.
PB  - MDPI AG
T2  - Isprs International Journal of Geo-Information
T1  - Machine Learning Techniques for Modelling Short Term Land-Use Change
IS  - 12
VL  - 6
DO  - 10.3390/ijgi6120387
ER  - 
@article{
author = "Samardžić-Petrović, Mileva and Kovačević, Miloš and Bajat, Branislav and Dragićević, Suzana",
year = "2017",
abstract = "The representation of land use change (LUC) is often achieved by using data-driven methods that include machine learning (ML) techniques. The main objectives of this research study are to implement three ML techniques, Decision Trees (DT), Neural Networks (NN), and Support Vector Machines (SVM) for LUC modeling, in order to compare these three ML techniques and to find the appropriate data representation. The ML techniques are applied on the case study of LUC in three municipalities of the City of Belgrade, the Republic of Serbia, using historical geospatial data sets and considering nine land use classes. The ML models were built and assessed using two different time intervals. The information gain ranking technique and the recursive attribute elimination procedure were implemented to find the most informative attributes that were related to LUC in the study area. The results indicate that all three ML techniques can be used effectively for short-term forecasting of LUC, but the SVM achieved the highest agreement of predicted changes.",
publisher = "MDPI AG",
journal = "Isprs International Journal of Geo-Information",
title = "Machine Learning Techniques for Modelling Short Term Land-Use Change",
number = "12",
volume = "6",
doi = "10.3390/ijgi6120387"
}
Samardžić-Petrović, M., Kovačević, M., Bajat, B.,& Dragićević, S.. (2017). Machine Learning Techniques for Modelling Short Term Land-Use Change. in Isprs International Journal of Geo-Information
MDPI AG., 6(12).
https://doi.org/10.3390/ijgi6120387
Samardžić-Petrović M, Kovačević M, Bajat B, Dragićević S. Machine Learning Techniques for Modelling Short Term Land-Use Change. in Isprs International Journal of Geo-Information. 2017;6(12).
doi:10.3390/ijgi6120387 .
Samardžić-Petrović, Mileva, Kovačević, Miloš, Bajat, Branislav, Dragićević, Suzana, "Machine Learning Techniques for Modelling Short Term Land-Use Change" in Isprs International Journal of Geo-Information, 6, no. 12 (2017),
https://doi.org/10.3390/ijgi6120387 . .
5
40
24
36

Modeling Urban Land Use Changes Using Support Vector Machines

Samardžić-Petrović, Mileva; Dragićević, Suzana; Kovačević, Miloš; Bajat, Branislav

(Blackwell Publishing Ltd, 2016)

TY  - JOUR
AU  - Samardžić-Petrović, Mileva
AU  - Dragićević, Suzana
AU  - Kovačević, Miloš
AU  - Bajat, Branislav
PY  - 2016
UR  - https://grafar.grf.bg.ac.rs/handle/123456789/777
AB  - Support Vector Machines (SVM) is a machine learning (ML) algorithm commonly applied to the classification of remotely sensing data and more recently for modeling land use changes. However, in most geospatial applications the current literature does not elaborate on specifications of the SVM method with respect to data sampling, attribute selection and optimal parameters choices. Therefore the main objective of this study is to present and investigate the SVM technique for modeling urban land use change. The SVM model building procedure is presented together with the detailed evaluation of the output results with respect to the choice of datasets, attributes and the change of SVM parameters. Geospatial datasets containing nine land use classes and spatial attributes for the Municipality of Zemun, Republic of Serbia were used for years 2001, 2003, 2007 and 2011. The Correlation-based Feature Subset method, kappa coefficient, Area Under Receiver Operating Characteristic Curve (AUC) and kappa simulation were used to perform the model evaluation and compare the model outputs with the real land use datasets. The obtained results indicate that the SVM-based models perform better when implementing balanced data sampling, reduced data sets to informative subsets of attributes and properly identify the optimal learning parameters.
PB  - Blackwell Publishing Ltd
T2  - Transactions in Gis
T1  - Modeling Urban Land Use Changes Using Support Vector Machines
EP  - 734
IS  - 5
SP  - 718
VL  - 20
DO  - 10.1111/tgis.12174
ER  - 
@article{
author = "Samardžić-Petrović, Mileva and Dragićević, Suzana and Kovačević, Miloš and Bajat, Branislav",
year = "2016",
abstract = "Support Vector Machines (SVM) is a machine learning (ML) algorithm commonly applied to the classification of remotely sensing data and more recently for modeling land use changes. However, in most geospatial applications the current literature does not elaborate on specifications of the SVM method with respect to data sampling, attribute selection and optimal parameters choices. Therefore the main objective of this study is to present and investigate the SVM technique for modeling urban land use change. The SVM model building procedure is presented together with the detailed evaluation of the output results with respect to the choice of datasets, attributes and the change of SVM parameters. Geospatial datasets containing nine land use classes and spatial attributes for the Municipality of Zemun, Republic of Serbia were used for years 2001, 2003, 2007 and 2011. The Correlation-based Feature Subset method, kappa coefficient, Area Under Receiver Operating Characteristic Curve (AUC) and kappa simulation were used to perform the model evaluation and compare the model outputs with the real land use datasets. The obtained results indicate that the SVM-based models perform better when implementing balanced data sampling, reduced data sets to informative subsets of attributes and properly identify the optimal learning parameters.",
publisher = "Blackwell Publishing Ltd",
journal = "Transactions in Gis",
title = "Modeling Urban Land Use Changes Using Support Vector Machines",
pages = "734-718",
number = "5",
volume = "20",
doi = "10.1111/tgis.12174"
}
Samardžić-Petrović, M., Dragićević, S., Kovačević, M.,& Bajat, B.. (2016). Modeling Urban Land Use Changes Using Support Vector Machines. in Transactions in Gis
Blackwell Publishing Ltd., 20(5), 718-734.
https://doi.org/10.1111/tgis.12174
Samardžić-Petrović M, Dragićević S, Kovačević M, Bajat B. Modeling Urban Land Use Changes Using Support Vector Machines. in Transactions in Gis. 2016;20(5):718-734.
doi:10.1111/tgis.12174 .
Samardžić-Petrović, Mileva, Dragićević, Suzana, Kovačević, Miloš, Bajat, Branislav, "Modeling Urban Land Use Changes Using Support Vector Machines" in Transactions in Gis, 20, no. 5 (2016):718-734,
https://doi.org/10.1111/tgis.12174 . .
42
26
38

Exploring the Decision Tree Method for Modelling Urban Land Use Change

Samardžić-Petrović, Mileva; Dragićević, Suzana; Bajat, Branislav; Kovačević, Miloš

(2015)

TY  - JOUR
AU  - Samardžić-Petrović, Mileva
AU  - Dragićević, Suzana
AU  - Bajat, Branislav
AU  - Kovačević, Miloš
PY  - 2015
UR  - https://grafar.grf.bg.ac.rs/handle/123456789/1043
T2  - Geomatica
T1  - Exploring the Decision Tree Method for Modelling Urban Land Use Change
EP  - 325
IS  - 3
SP  - 313
VL  - 69
UR  - https://hdl.handle.net/21.15107/rcub_grafar_1043
ER  - 
@article{
author = "Samardžić-Petrović, Mileva and Dragićević, Suzana and Bajat, Branislav and Kovačević, Miloš",
year = "2015",
journal = "Geomatica",
title = "Exploring the Decision Tree Method for Modelling Urban Land Use Change",
pages = "325-313",
number = "3",
volume = "69",
url = "https://hdl.handle.net/21.15107/rcub_grafar_1043"
}
Samardžić-Petrović, M., Dragićević, S., Bajat, B.,& Kovačević, M.. (2015). Exploring the Decision Tree Method for Modelling Urban Land Use Change. in Geomatica, 69(3), 313-325.
https://hdl.handle.net/21.15107/rcub_grafar_1043
Samardžić-Petrović M, Dragićević S, Bajat B, Kovačević M. Exploring the Decision Tree Method for Modelling Urban Land Use Change. in Geomatica. 2015;69(3):313-325.
https://hdl.handle.net/21.15107/rcub_grafar_1043 .
Samardžić-Petrović, Mileva, Dragićević, Suzana, Bajat, Branislav, Kovačević, Miloš, "Exploring the Decision Tree Method for Modelling Urban Land Use Change" in Geomatica, 69, no. 3 (2015):313-325,
https://hdl.handle.net/21.15107/rcub_grafar_1043 .

Modeling the Propagation of Forest Insect Infestation Using Machine Learning Techniques

Samardžić-Petrović, Mileva; Dragićević, Suzana

(Cham: Springer International Publishing, 2015)

TY  - CHAP
AU  - Samardžić-Petrović, Mileva
AU  - Dragićević, Suzana
PY  - 2015
UR  - https://grafar.grf.bg.ac.rs/handle/123456789/1044
PB  - Cham: Springer International Publishing
T2  - Computational Science and Its Applications -- ICCSA 2015
T1  - Modeling the Propagation of Forest Insect Infestation Using Machine Learning Techniques
EP  - 657
SP  - 646
VL  - 9157
DO  - 10.1007/978-3-319-21470-2_47
ER  - 
@inbook{
author = "Samardžić-Petrović, Mileva and Dragićević, Suzana",
year = "2015",
publisher = "Cham: Springer International Publishing",
journal = "Computational Science and Its Applications -- ICCSA 2015",
booktitle = "Modeling the Propagation of Forest Insect Infestation Using Machine Learning Techniques",
pages = "657-646",
volume = "9157",
doi = "10.1007/978-3-319-21470-2_47"
}
Samardžić-Petrović, M.,& Dragićević, S.. (2015). Modeling the Propagation of Forest Insect Infestation Using Machine Learning Techniques. in Computational Science and Its Applications -- ICCSA 2015
Cham: Springer International Publishing., 9157, 646-657.
https://doi.org/10.1007/978-3-319-21470-2_47
Samardžić-Petrović M, Dragićević S. Modeling the Propagation of Forest Insect Infestation Using Machine Learning Techniques. in Computational Science and Its Applications -- ICCSA 2015. 2015;9157:646-657.
doi:10.1007/978-3-319-21470-2_47 .
Samardžić-Petrović, Mileva, Dragićević, Suzana, "Modeling the Propagation of Forest Insect Infestation Using Machine Learning Techniques" in Computational Science and Its Applications -- ICCSA 2015, 9157 (2015):646-657,
https://doi.org/10.1007/978-3-319-21470-2_47 . .
1
1

Sensitivity analysis of Support Vector Machine land use change modelling method

Samardžić-Petrović, Mileva; Bajat, Branislav; Kovačević, Miloš; Dragićević, Suzana

(Department of Geodesy and Geoinformation, Vienna University of Technology, Vienna, 2014)

TY  - CONF
AU  - Samardžić-Petrović, Mileva
AU  - Bajat, Branislav
AU  - Kovačević, Miloš
AU  - Dragićević, Suzana
PY  - 2014
UR  - https://grafar.grf.bg.ac.rs/handle/123456789/1196
PB  - Department of Geodesy and Geoinformation, Vienna University of Technology, Vienna
C3  - Extended Abstract Proceedings of the GIScience 2014, 23-26 September, Vienna, Austria
T1  - Sensitivity analysis of Support Vector Machine land use change modelling method
UR  - https://hdl.handle.net/21.15107/rcub_grafar_1196
ER  - 
@conference{
author = "Samardžić-Petrović, Mileva and Bajat, Branislav and Kovačević, Miloš and Dragićević, Suzana",
year = "2014",
publisher = "Department of Geodesy and Geoinformation, Vienna University of Technology, Vienna",
journal = "Extended Abstract Proceedings of the GIScience 2014, 23-26 September, Vienna, Austria",
title = "Sensitivity analysis of Support Vector Machine land use change modelling method",
url = "https://hdl.handle.net/21.15107/rcub_grafar_1196"
}
Samardžić-Petrović, M., Bajat, B., Kovačević, M.,& Dragićević, S.. (2014). Sensitivity analysis of Support Vector Machine land use change modelling method. in Extended Abstract Proceedings of the GIScience 2014, 23-26 September, Vienna, Austria
Department of Geodesy and Geoinformation, Vienna University of Technology, Vienna..
https://hdl.handle.net/21.15107/rcub_grafar_1196
Samardžić-Petrović M, Bajat B, Kovačević M, Dragićević S. Sensitivity analysis of Support Vector Machine land use change modelling method. in Extended Abstract Proceedings of the GIScience 2014, 23-26 September, Vienna, Austria. 2014;.
https://hdl.handle.net/21.15107/rcub_grafar_1196 .
Samardžić-Petrović, Mileva, Bajat, Branislav, Kovačević, Miloš, Dragićević, Suzana, "Sensitivity analysis of Support Vector Machine land use change modelling method" in Extended Abstract Proceedings of the GIScience 2014, 23-26 September, Vienna, Austria (2014),
https://hdl.handle.net/21.15107/rcub_grafar_1196 .