Developing robust arsenic awareness prediction models using machine learning algorithms
2
Global Centre for Environmental Remediation (GCER), Faculty of Science, The University of Newcastle (UON), Callaghan, New South Wales, Australia
|
Publication type: Journal Article
Publication date: 2018-04-01
scimago Q1
wos Q1
SJR: 1.994
CiteScore: 14.4
Impact factor: 8.4
ISSN: 03014797, 10958630
PubMed ID:
29408061
General Medicine
Environmental Engineering
Waste Management and Disposal
Management, Monitoring, Policy and Law
Abstract
Arsenic awareness plays a vital role in ensuring the sustainability of arsenic mitigation technologies. Thus far, however, few studies have dealt with the sustainability of such technologies and its associated socioeconomic dimensions. As a result, arsenic awareness prediction has not yet been fully conceptualized. Accordingly, this study evaluated arsenic awareness among arsenic-affected communities in rural India, using a structured questionnaire to record socioeconomic, demographic, and other sociobehavioral factors with an eye to assessing their association with and influence on arsenic awareness. First a logistic regression model was applied and its results compared with those produced by six state-of-the-art machine-learning algorithms (Support Vector Machine [SVM], Kernel-SVM, Decision Tree [DT], k-Nearest Neighbor [k-NN], Naïve Bayes [NB], and Random Forests [RF]) as measured by their accuracy at predicting arsenic awareness. Most (63%) of the surveyed population was found to be arsenic-aware. Significant arsenic awareness predictors were divided into three types: (1) socioeconomic factors: caste, education level, and occupation; (2) water and sanitation behavior factors: number of family members involved in water collection, distance traveled and time spent for water collection, places for defecation, and materials used for handwashing after defecation; and (3) social capital and trust factors: presence of anganwadi and people's trust in other community members, NGOs, and private agencies. Moreover, individuals' having higher social network positively contributed to arsenic awareness in the communities. Results indicated that both the SVM and the RF algorithms outperformed at overall prediction of arsenic awareness-a nonlinear classification problem. Lower-caste, less educated, and unemployed members of the population were found to be the most vulnerable, requiring immediate arsenic mitigation. To this end, local social institutions and NGOs could play a crucial role in arsenic awareness and outreach programs. Use of SVM or RF or a combination of the two, together with use of a larger sample size, could enhance the accuracy of arsenic awareness prediction.
Found
Nothing found, try to update filter.
Found
Nothing found, try to update filter.
Top-30
Journals
|
1
2
3
4
5
6
|
|
|
Groundwater for Sustainable Development
6 publications, 13.64%
|
|
|
Advances in Water Security
3 publications, 6.82%
|
|
|
Applied Sciences (Switzerland)
2 publications, 4.55%
|
|
|
Ecotoxicology and Environmental Safety
2 publications, 4.55%
|
|
|
Geocarto International
2 publications, 4.55%
|
|
|
Water Resources Research
1 publication, 2.27%
|
|
|
Sustainability
1 publication, 2.27%
|
|
|
International Journal of Environmental Research and Public Health
1 publication, 2.27%
|
|
|
Applied Geomatics
1 publication, 2.27%
|
|
|
Natural Resources Research
1 publication, 2.27%
|
|
|
PLoS ONE
1 publication, 2.27%
|
|
|
Land Use Policy
1 publication, 2.27%
|
|
|
Economics and Human Biology
1 publication, 2.27%
|
|
|
Advances in Space Research
1 publication, 2.27%
|
|
|
Environmental International
1 publication, 2.27%
|
|
|
Environmental Science and Policy
1 publication, 2.27%
|
|
|
Journal of Contaminant Hydrology
1 publication, 2.27%
|
|
|
Fuel
1 publication, 2.27%
|
|
|
Science of the Total Environment
1 publication, 2.27%
|
|
|
Environmental Quality Management
1 publication, 2.27%
|
|
|
Ground Water
1 publication, 2.27%
|
|
|
Geomatics, Natural Hazards and Risk
1 publication, 2.27%
|
|
|
IEEE Access
1 publication, 2.27%
|
|
|
Mathematical Problems in Engineering
1 publication, 2.27%
|
|
|
Journal of Hazardous Materials
1 publication, 2.27%
|
|
|
AIMS Public Health
1 publication, 2.27%
|
|
|
Emerging Contaminants
1 publication, 2.27%
|
|
|
Environmental and Ecological Statistics
1 publication, 2.27%
|
|
|
International Journal of Logistics Research and Applications
1 publication, 2.27%
|
|
|
1
2
3
4
5
6
|
Publishers
|
2
4
6
8
10
12
14
16
18
20
|
|
|
Elsevier
19 publications, 43.18%
|
|
|
Springer Nature
6 publications, 13.64%
|
|
|
MDPI
4 publications, 9.09%
|
|
|
Taylor & Francis
4 publications, 9.09%
|
|
|
Wiley
3 publications, 6.82%
|
|
|
Institute of Electrical and Electronics Engineers (IEEE)
3 publications, 6.82%
|
|
|
Public Library of Science (PLoS)
1 publication, 2.27%
|
|
|
Hindawi Limited
1 publication, 2.27%
|
|
|
Research Square Platform LLC
1 publication, 2.27%
|
|
|
American Institute of Mathematical Sciences (AIMS)
1 publication, 2.27%
|
|
|
2
4
6
8
10
12
14
16
18
20
|
- We do not take into account publications without a DOI.
- Statistics recalculated weekly.
Are you a researcher?
Create a profile to get free access to personal recommendations for colleagues and new articles.
Metrics
44
Total citations:
44
Citations from 2024:
8
(18.18%)
Cite this
GOST |
RIS |
BibTex
Cite this
GOST
Copy
Singh S. et al. Developing robust arsenic awareness prediction models using machine learning algorithms // Journal of Environmental Management. 2018. Vol. 211. pp. 125-137.
GOST all authors (up to 50)
Copy
Singh S., TAYLOR R. W., Rahman M. M., Shahabi H. Developing robust arsenic awareness prediction models using machine learning algorithms // Journal of Environmental Management. 2018. Vol. 211. pp. 125-137.
Cite this
RIS
Copy
TY - JOUR
DO - 10.1016/j.jenvman.2018.01.044
UR - https://linkinghub.elsevier.com/retrieve/pii/S0301479718300501
TI - Developing robust arsenic awareness prediction models using machine learning algorithms
T2 - Journal of Environmental Management
AU - Singh, Sushant
AU - TAYLOR, ROBERT W.
AU - Rahman, Mohammad Mahmudur
AU - Shahabi, Himan
PY - 2018
DA - 2018/04/01
PB - Elsevier
SP - 125-137
VL - 211
PMID - 29408061
SN - 0301-4797
SN - 1095-8630
ER -
Cite this
BibTex (up to 50 authors)
Copy
@article{2018_Singh,
author = {Sushant Singh and ROBERT W. TAYLOR and Mohammad Mahmudur Rahman and Himan Shahabi},
title = {Developing robust arsenic awareness prediction models using machine learning algorithms},
journal = {Journal of Environmental Management},
year = {2018},
volume = {211},
publisher = {Elsevier},
month = {apr},
url = {https://linkinghub.elsevier.com/retrieve/pii/S0301479718300501},
pages = {125--137},
doi = {10.1016/j.jenvman.2018.01.044}
}
Profiles