Café’s Performance Modeling with Spatial Data

Мұқаба

Дәйексөз келтіру

Толық мәтін

Ашық рұқсат Ашық рұқсат
Рұқсат жабық Рұқсат берілді
Рұқсат жабық Рұқсат ақылы немесе тек жазылушылар үшін

Аннотация

The relevance of the article lies in the importance of the placement problem for the economic performance of organizations and the growth of interest in the use of spatial data in decision support systems in recent years. The main purpose of the research work is to model the estimation of impact of important spatial features for café’s turnover prediction. The article analyzes some approaches that combine spatial data with machine learning to solve the placement problem. A correlation analysis of spatial data has been carried out. A multistage feature selection for two sets of features proper for different types of models was made. The hyperparameter optimization for the selected modeling methods (linear regression, decision tree, random forest, gradient boosting) was made and models were created. The main tools are the Python programming language and its libraries pandas, sklearn, XGBoost, hyperopt, shap, boostaroota. The analysis of the obtained results was carried out. The gradient boosting model was identified as optimal in terms of accuracy and interpretation. The result of the work is the created approach to modeling the economic performance of a company using machine learning based on spatial data.

Негізгі сөздер

Толық мәтін

Рұқсат жабық

Авторлар туралы

Ivan Ivanov

LLC «BST Digital»

Email: ivanzivanov@yandex.ru
ORCID iD: 0009-0007-7496-3212

Head

Ресей, Moscow

Nailia Abliazina

The Russian Presidential Academy of National Economy and Public Administration

Email: nellykluchkovskaya@gmail.com
ORCID iD: 0009-0007-2208-3782
SPIN-код: 1145-0772

the EMIT Institute

Ресей, Moscow

Natalia Grineva

Financial University under the Government of the Russian Federation

Хат алмасуға жауапты Автор.
Email: ngrineva@fa.ru
ORCID iD: 0000-0001-7647-5967
SPIN-код: 1140-9636

Cand. Sci. (Econ.), Associate Professor, Associate Professor of the Department of Data Analysis and Machine Learning

Ресей, Moscow

Әдебиет тізімі

  1. Ananiev A. Yu., Gaevoy S. V., Ostrovsky A. A. The use of geoeconomic simulation for solving problems of small and medium business // Proceedings of the Volgograd State Technical University. —2011. —No. 11. —p. 73–76.
  2. Bulychev D. M. Forecasting the results of expert evaluation of points of sale using a neural network // Bulletin of the Russian New University. Series: Complex systems: models, analysis and control. —2019. —No. 4. —p. 65–74.
  3. Kalinkina G. E., Maratkanov S. V., Gabdullin V. M. Quantitative assessment of demand in order to find the most effective locations for trade enterprises using geomarketing // Bulletin of the Izhevsk State Technical University. —2012. —No. 4. —p. 57–60.
  4. Naumov A., Rubanov I., Ablyazina N. New approaches to the typology of rural territories in Russia //Moscow University Geography Bulletin. —2021. —№. 4. —P. 12–24.
  5. Takhtarov I. A., Sergeev A. V. Development and research of geomarketing technology based on transport factors and a nonlinear regression model // Proceedings of the III International Conference and Youth School «Information Technologies and Nanotechnologies» (ITNT-2017). —Samara: New technology. —2017. —p. 702–706.
  6. CIAN. URL: https://www.cian.ru/ (Date of access: 20.09.2022).
  7. Yandex.Maps. URL: https://yandex.ru/maps/ (Date of access: 25.05.2022).
  8. Burges C. et al. Learning to rank using gradient descent // Proceedings of the 22nd international conference on Machine learning. —2005. —p. 89–96.
  9. Karamshuk D. et al. Geo-spotting: mining online location-based services for optimal retail store placement // Proceedings of the 19th ACM SIGKDD international conference on Knowledge discovery and data mining. —2013. —p. 793–801.
  10. Kursa M. B., Rudnicki W. R. Feature selection with the Boruta package // Journal of statistical software. —2010. —V. 36. —p. 1–13.
  11. Liu Y. et al. DeepStore: An interaction-aware wide&deep model for store site recommendation with attentional spatial embeddings // IEEE Internet of Things Journal. —2019. —V. 6. —No. 4. —p. 7319-7333.
  12. Yin H. et al. LCARS: a location-content-aware recommender system // Proceedings of the 19th ACM SIGKDD international conference on Knowledge discovery and data mining. —2013. —p. 221–229.
  13. Revealing the ‘Where’ of Business Intelligence using Location Analytics / Esri. 2012. URL: https://www.esri.com/content/dam/esrisites/sitecore-archive/Files/Pdfs/library/whitepapers/pdfs/business-intelligence-location-analytics.pdf (Date of access: 21.05.2022).

Қосымша файлдар

Қосымша файлдар
Әрекет
1. JATS XML
2. Fig. 1. Correlation coefficients of the target variable with some factors where correlation coefficient is greater than 0.4 in absolute value

Жүктеу (63KB)
3. Fig. 2. Scatter plot of the «Total mobile traffic in the average income group within a 700 m radius» with the target variable

Жүктеу (37KB)
4. Fig. 3. Scatter plot of the «Pedestrian traffic within a 140 m radius» with the target variable

Жүктеу (33KB)
5. Fig. 4. Scatter plot of the «Average price per square meter within a 300 m radius» with the target variable

Жүктеу (32KB)
6. Fig. 5. Scatter plot of the «Rating of customer activity in the 'Cosmetics' category within a 500 m radius» with the target variable

Жүктеу (40KB)
7. Fig. 6. Scatter plot of the «Total number of objects in the 'Universities' category within a 500 m radius» with the target variable

Жүктеу (44KB)
8. Fig. 7. Scatter plot of the «Average number of objects in the 'Pickup points' category within a 5 m radius» with the target variable

Жүктеу (37KB)
9. Fig. 8. Scatter plot of the «Morning automobile traffic of workers within a 300 m radius» with the target variable

Жүктеу (46KB)
10. Fig. 9. Decision tree model prediction algorithm

Жүктеу (30KB)
11. Fig. 10. Random forest model interpretation

Жүктеу (65KB)
12. Fig. 11. Gradient boosting model interpretation

Жүктеу (76KB)


Осы сайт cookie-файлдарды пайдаланады

Біздің сайтты пайдалануды жалғастыра отырып, сіз сайттың дұрыс жұмыс істеуін қамтамасыз ететін cookie файлдарын өңдеуге келісім бересіз.< / br>< / br>cookie файлдары туралы< / a>