The current and future uses of machine learning in ecosystem service research

Allbwn ymchwil: Cyfraniad at gyfnodolynErthygladolygiad gan gymheiriaid

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The current and future uses of machine learning in ecosystem service research. / Scowen, Matthew; Athanasiadis, Ioannis; Bullock, James et al.
Yn: Science of the Total Environment, Cyfrol 799, 149263, 10.12.2021.

Allbwn ymchwil: Cyfraniad at gyfnodolynErthygladolygiad gan gymheiriaid

HarvardHarvard

Scowen, M, Athanasiadis, I, Bullock, J, Eigenbrod, F & Willcock, S 2021, 'The current and future uses of machine learning in ecosystem service research', Science of the Total Environment, cyfrol. 799, 149263. https://doi.org/10.1016/j.scitotenv.2021.149263

APA

Scowen, M., Athanasiadis, I., Bullock, J., Eigenbrod, F., & Willcock, S. (2021). The current and future uses of machine learning in ecosystem service research. Science of the Total Environment, 799, Erthygl 149263. https://doi.org/10.1016/j.scitotenv.2021.149263

CBE

Scowen M, Athanasiadis I, Bullock J, Eigenbrod F, Willcock S. 2021. The current and future uses of machine learning in ecosystem service research. Science of the Total Environment. 799:Article 149263. https://doi.org/10.1016/j.scitotenv.2021.149263

MLA

VancouverVancouver

Scowen M, Athanasiadis I, Bullock J, Eigenbrod F, Willcock S. The current and future uses of machine learning in ecosystem service research. Science of the Total Environment. 2021 Rhag 10;799:149263. Epub 2021 Gor 27. doi: 10.1016/j.scitotenv.2021.149263

Author

Scowen, Matthew ; Athanasiadis, Ioannis ; Bullock, James et al. / The current and future uses of machine learning in ecosystem service research. Yn: Science of the Total Environment. 2021 ; Cyfrol 799.

RIS

TY - JOUR

T1 - The current and future uses of machine learning in ecosystem service research

AU - Scowen, Matthew

AU - Athanasiadis, Ioannis

AU - Bullock, James

AU - Eigenbrod, Felix

AU - Willcock, Simon

PY - 2021/12/10

Y1 - 2021/12/10

N2 - Machine learning (ML) expands traditional data analysis and presents a range of opportunities in ecosystem service (ES) research, offering rapid processing of ‘big data’ and enabling significant advances in data description and predictive modelling. Descriptive ML techniques group data with little or no prior domain specific assumptions; they can generate hypotheses and automatically sort data prior to other analyses. Predictive ML techniques allow for the predictive modelling of highly non-linear systems where casual mechanisms are poorly understood, as is often the case for ES. We conducted a review to explore how ML is used in ES research and to identify and quantify trends in the different ML approaches that are used. We reviewed 308 peer-reviewed publications and identified that ES studies implemented machine learning techniques in data description (63%; n= 308) and predictive modelling (44%), with some papers containing both categories. Classification and Regression Trees were the most popular techniques (60%), but unsupervised learning techniques were also used for descriptive tasks such as clustering to group or split data without prior assumptions (19%). Whilst there are examples of ES publications that apply ML with rigour, many studies do not have robust or repeatable methods. Some studies fail to report model settings (43%) or software used (28%), and many studies do not report carrying out any form of model hyperparameter tuning (67%) or test model generalisability (59%). Whilst studies use ML to analyse very large and complex datasets, ES research is generally not taking full advantage of the capacity of ML to model big data (1138 medium number of data points; 13 median quantity of variables). There is great further opportunity to utilise ML in ES research, to make better use of big data and to develop detailed modelling of spatial-temporal dynamics that meet stakeholder demands.

AB - Machine learning (ML) expands traditional data analysis and presents a range of opportunities in ecosystem service (ES) research, offering rapid processing of ‘big data’ and enabling significant advances in data description and predictive modelling. Descriptive ML techniques group data with little or no prior domain specific assumptions; they can generate hypotheses and automatically sort data prior to other analyses. Predictive ML techniques allow for the predictive modelling of highly non-linear systems where casual mechanisms are poorly understood, as is often the case for ES. We conducted a review to explore how ML is used in ES research and to identify and quantify trends in the different ML approaches that are used. We reviewed 308 peer-reviewed publications and identified that ES studies implemented machine learning techniques in data description (63%; n= 308) and predictive modelling (44%), with some papers containing both categories. Classification and Regression Trees were the most popular techniques (60%), but unsupervised learning techniques were also used for descriptive tasks such as clustering to group or split data without prior assumptions (19%). Whilst there are examples of ES publications that apply ML with rigour, many studies do not have robust or repeatable methods. Some studies fail to report model settings (43%) or software used (28%), and many studies do not report carrying out any form of model hyperparameter tuning (67%) or test model generalisability (59%). Whilst studies use ML to analyse very large and complex datasets, ES research is generally not taking full advantage of the capacity of ML to model big data (1138 medium number of data points; 13 median quantity of variables). There is great further opportunity to utilise ML in ES research, to make better use of big data and to develop detailed modelling of spatial-temporal dynamics that meet stakeholder demands.

KW - Machine learning

KW - ecosystem service

KW - Big data

KW - methodology

KW - Validation

KW - Data driven modelling

U2 - 10.1016/j.scitotenv.2021.149263

DO - 10.1016/j.scitotenv.2021.149263

M3 - Article

VL - 799

JO - Science of the Total Environment

JF - Science of the Total Environment

SN - 0048-9697

M1 - 149263

ER -