Improving Predictive Accuracy in Elections
Autor: | William M. Cassidy, Eric Rohli, David Sathiaraj |
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Rok vydání: | 2017 |
Předmět: |
Information Systems and Management
Computer science Population ComputingMilieux_LEGALASPECTSOFCOMPUTING 02 engineering and technology Machine Learning 050602 political science & public administration 0202 electrical engineering electronic engineering information engineering Econometrics Humans Computer Simulation Behavioral analytics Static data education education.field_of_study Dynamic data 05 social sciences Politics Turnout Predictive analytics Hybrid approach United States 0506 political science Computer Science Applications Voter registration 020201 artificial intelligence & image processing Algorithms Information Systems |
Zdroj: | Big data. 5(4) |
ISSN: | 2167-647X |
Popis: | The problem of accurately predicting vote counts in elections is considered in this article. Typically, small-sample polls are used to estimate or predict election outcomes. In this study, a machine-learning hybrid approach is proposed. This approach utilizes multiple sets of static data sources, such as voter registration data, and dynamic data sources, such as polls and donor data, to develop individualized voter scores for each member of the population. These voter scores are used to estimate expected vote counts under different turnout scenarios. The proposed technique has been tested with data collected during U.S. Senate and Louisiana gubernatorial elections. The predicted results (expected vote counts, predicted several days before the actual election) were accurate within 1%. |
Databáze: | OpenAIRE |
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