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Park, Saerom
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Predicting Market Impact Costs Using Nonparametric Machine Learning Models

Author(s)
Park, SaeromLee, JaewookSon, Youngdoo
Issued Date
2016-02
DOI
10.1371/journal.pone.0150243
URI
https://scholarworks.unist.ac.kr/handle/201301/64280
Citation
PLOS ONE, v.11, no.2, pp.e0150243
Abstract
Market impact cost is the most significant portion of implicit transaction costs that can reduce the overall transaction cost, although it cannot be measured directly. In this paper, we employed the state-of-the-art nonparametric machine learning models: neural networks, Bayesian neural network, Gaussian process, and support vector regression, to predict market impact cost accurately and to provide the predictive model that is versatile in the number of variables. We collected a large amount of real single transaction data of US stock market from Bloomberg Terminal and generated three independent input variables. As a result, most nonparametric machine learning models outperformed a-state-of-the-art benchmark parametric model such as I-star model in four error measures. Although these models encounter certain difficulties in separating the permanent and temporary cost directly, nonparametric machine learning models can be good alternatives in reducing transaction costs by considerably improving in prediction performance.
Publisher
PUBLIC LIBRARY SCIENCE
ISSN
1932-6203
Keyword
SUPPORT VECTOR MACHINESLARGE TRADESFLUCTUATIONSPRICES

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