An Artificial Intelligence Approach to Modeling in Social Science.
Date
2021
Journal Title
Journal ISSN
Volume Title
Publisher
Journal of Health and Environmental Research.
Abstract
Computer Science has contributed to social sciences since decades ago: connecting people that build virtual
communities where the interactions can be investigated, developing tools for statistically analytics, designing models that allow
the analysis and simulation of the most diverse types, among many others. In this article, we describe an artificial neural network
to model a theoretical framework for risk, housing, and health problematic, called DRVS (Diagnostic methodology for risk
determination of urban housing for health), which uses a holistic approach for community and environmental health. The
methodology also exposes digital clinic history for families and communities, developed to support the acquisition of necessary
data. This software has advantages for the transference and application of the DRVS in different locations since it constitutes an
expert system for the determination of local social indexes and supports the quantitative validation process for the underlying
social theory. On the other hand, as many artificial intelligence techniques, it has constraints: unlike explicit logic inferences,
artificial neural networks work as «black boxes», not explaining how they got the result; they have a strong dependency of the
representativeness of training data and introducing new knowledge that may improve their results and performance is difficult
(new data, addition or remotion of determining factors for the underlying social model, weighting factors, etc.). This article also
shows some techniques and ideas on how to deal with the identified constraints.
Description
Keywords
Artificial Neural Network, Family Clinic History, Risk, Health, Housing
Citation
Journal of Health and Environmental Research 2021; 7 (1): 58-68.
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Except where otherwised noted, this item's license is described as info:eu-repo/semantics/openAccess