Journalartikel

Prospect for Knowledge in Survey Data: An Artificial Neural Network Sensitivity Analysis


AutorenlisteWeber, Patrick; Weber, Nicolas; Goesele, Michael; Kabst, Ruediger

Jahr der Veröffentlichung2018

Seiten575-590

ZeitschriftSocial Science Computer Review

Bandnummer36

Heftnummer5

ISSN0894-4393

eISSN1552-8286

DOI Linkhttps://doi.org/10.1177/0894439317725836

VerlagSAGE Publications


Abstract
Policy making depends on good knowledge of the corresponding target audience. To maximize the designated outcome, it is essential to understand the underlying coherences. Machine learning techniques are capable of analyzing data containing behavioral aspects, evaluations, attitudes, and social values. We show how existing machine learning techniques can be used to identify behavioral aspects of human decision-making and to predict human behavior. These techniques allow to extract high resolution decision functions that enable to draw conclusions on human behavior. Our focus is on voter turnout, for which we use data acquired by the European Social Survey on the German national vote. We show how to train an artificial expert and how to extract the behavioral aspects to build optimized policies. Our method achieves an increase in adjusted R-2 of 102% compared to a classic logistic regression prediction. We further evaluate the performance of our method compared to other machine learning techniques such as support vector machines and random forests. The results show that it is possible to better understand unknown variable relationships.



Zitierstile

Harvard-ZitierstilWeber, P., Weber, N., Goesele, M. and Kabst, R. (2018) Prospect for Knowledge in Survey Data: An Artificial Neural Network Sensitivity Analysis, Social Science Computer Review, 36(5), pp. 575-590. https://doi.org/10.1177/0894439317725836

APA-ZitierstilWeber, P., Weber, N., Goesele, M., & Kabst, R. (2018). Prospect for Knowledge in Survey Data: An Artificial Neural Network Sensitivity Analysis. Social Science Computer Review. 36(5), 575-590. https://doi.org/10.1177/0894439317725836



Schlagwörter


data and knowledgeempirical studiesENVIRONMENTSOPTIMIZING DECISION-MAKINGpersonalitysurvey dataVOTER TURNOUT


Nachhaltigkeitsbezüge


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