Статья

Transfer learning for road-based location classification of non-residential property

L. Mizgirev, E. Galiaskarov, I. Astrakhantseva, S. Bobkov, R. Astrakhantsev,
2021

This article reveals the method of the property classification by its location relative to highways using transfer learning approach. Solving this problem is crucial for non-residential real estate market value assessment automation in the course of market analysis, pre-trial appraisal and other aspects of making managerial decisions in the field of financing and lending. Instead of a standard approach based on models developed using machine learning libraries and programming, this work considers the use of Google's Teachable Machine service. This article examines the aspects of initial data preparation, the use of Teachable Machine for model training and the results obtained. The parameters and results of training classification models in different conditions are presented, the classification accuracy is analyzed. The results obtained generally indicate the validity of this approach and recommends it for solving similar problems. Copyright © 2021 for this paper by its authors. Use permitted under Creative Commons License Attribution 4.0 International (CC BY 4.0).

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Версии

  • 1. Version of Record от 2021-08-23

Метаданные

Об авторах
  • L. Mizgirev
    Ivanovo State University of Chemistry and Technology, 7, Sheremetevskiy Avenue, Ivanovo, 153000, Russian Federation
  • E. Galiaskarov
    National Research University "Higher School of Economics", 20, Myasnitskaya st., Moscow, 101000, Russian Federation
  • I. Astrakhantseva
  • S. Bobkov
  • R. Astrakhantsev
Предметная рубрика
  • COVID-19
Название журнала
  • CEUR Workshop Proceedings
Том
  • 2843
Ключевые слова
  • Commerce; Decision making; Housing; Transfer learning; Classification accuracy; Classification models; Data preparation; Managerial decision; Market analysis; Model training; Property classification; Residential real estate market; Learning systems
Издатель
  • CEUR-WS
Тип документа
  • Conference Paper
Тип лицензии Creative Commons
  • CC-BY
Правовой статус документа
  • Свободная лицензия
Источник
  • scopus