Socioeconomic Modelling and Prediction with Machine Learning
A special issue of Sustainability (ISSN 2071-1050).
Deadline for manuscript submissions: closed (31 March 2023) | Viewed by 5509
Special Issue Editors
Interests: neural networks; sustainability; information theory; metric topology; stochastic dynamics; statistical mechanics; machine learning; big data
Special Issues, Collections and Topics in MDPI journals
Interests: artificial neural networks; data science; complex networks; connectivity models; pattern recognition; machine learning
Special Issues, Collections and Topics in MDPI journals
Special Issue Information
Dear Colleagues,
The socioeconomic context is formed by the sum of multidisciplinary relationships that occur between different areas. These include: (1) The biophysical environment, the resources, materials, and natural processes that enable life support and the products in the transformation processes; (2) the system of production and consumption, characterizing the industrial society and the economic and commercial transactions that make up modern civilization; and (3) the cultural environment, comprised of values and belief systems that are supposed to shape lifestyles and prioritize a series of social aspirations. In brief, socioeconomics is measured by sustainable results of human evolution.
On the other hand, Machine Learning (ML) comprises algorithms that automatically adapt their parameters to model data. Such models can classify, adjust or clusterize the samples in the data, through analysis of the data features. The model is built from a training set of the data, and after fitting this set it can be used to predict the behavior of new data. The learning capacity of ML is measured using a validation sample, which is a test set to check for the generalization of the fitting ability. ML is efficient when handling a large amount of data and complex structure or nonlinear spatial/temporal behavior, and is robust against noise.
ML has been applied to a wide range of fields, including hard sciences, where the data are usually in a numerical scale, but also in social sciences, wherein most of the data are either categorical or very heterogeneous for each sample, presenting many gaps in information. In this Special Issue, we propose a fusion of the techniques of ML with other forecasting methods usually applied to socioeconomics.
Nevertheless, even if the result of forecasting is relatively imprecise, the consequences of predicting a socioeconomic disaster—for instance, war, a climate change, a pandemic, or a volcanic eruption—through ML is highly beneficial. Hence, in this Special Issue we propose a fusion of the techniques of ML with other forecast methods usually applied to socioeconomics. The present issue of Sustainability is dedicated to publishing works which use ML models, including Bayesian classifier, Genetic Algorithms, Neural Networks, K-Near-Neighbors, Random Forest, Support Vector, etc., to forecast social phenomena, wherever it can be useful to the sustainable development of humanity.
a) Focus:
This Special Issue aims to communicate advances in the application of ML to socioeconomic complex phenomena in the context of sustainable development. It will help to connect the theoretical and technical scientific community working on data forecasting, to allow a cooperation between engineers, physicists, mathematicians, sociologists, economists, geologists, biologists, environmental scientists, and others concerned with human sustainable development.
b) Scope:
We welcome papers on any of the following subjects:
- ML applied to forecast climate effects.
- ML applied to housing, renting, and the real-estate market.
- ML applied to the touristic impact problem.
- ML applied to the migration flows.
- ML applied to renewable energy resources.
- Forecasting of the effects of pandemics in the sustainable development.
- Forecasting of the role of finance market in world sustainability.
- Forecasting of conflicts, war, and peace.
- Forecasting of the relationships of seismic movements and sustainability.
- Forecasting of human rights dynamic evolution.
- Forecasting of deforestation and recycling.
- Theoretical advances on Machine Learning models inspired in sustainability.
Prof. Dr. David Dominguez
Dr. Mario González-Rodríguez
Guest Editors
Manuscript Submission Information
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Keywords
- machine learning
- sustainable development
- climate change
- neural networks
- house and rent
- pandemics forecast
- seismic forecast
- war forecast
- migration forecast
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