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Dataset optimization for real estate valuation
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UDC: 004.93
Publication Language: Ukrainian
Stuc. intelekt. 2017; 22(2):168-175
Abstract: The article deals with the problem of improving quality of real estate datasets which are created from the open sources of information. Main problems of such datasets are analyzed and some ways to solve them are suggested in this article. These solutions were tested on different algorithms for real estate valuation and the best ones were selected.
Keywords: real estate valuation, training dataset, artificial neural networks.
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