Development of predictive modeling and deep learning classification of taxi trip tolls

Authors

DOI:

https://doi.org/10.15587/1729-4061.2022.259242

Keywords:

Machine learning, deep learning, multi-scale classifications, Taxi trips tolls, Prediction

Abstract

Several studies discussed the predictive modeling of deep learning in different applications such as classifying tissue features from microstructural data, Crude Oil Prices, mechanical constitutive behavior of materials, microbiome data, and mineral prospectively. Commercial navigation includes a wealth of trip-related data, including distance, expected journey time, and tolls that may be encountered along the way. Using a classification algorithm, it is possible to extract drop-off and pickup locations from taxi trip data and estimate if the tour would incur tolls. In this work, let’s use the classification learner to create classification models, compare their performance, and export the findings for additional study. The workflow for the classification learner is the same as for the regression learner. The purpose is to make predictions based on fresh data in order to see how well the model performs with new data. To train the model, it’s critical to separate the data set. The combined training and validation data is next pre-processed, which involves tasks such as cleaning and developing new features skills. Once the data has been prepared, it’s time to begin the supervised machine learning process and test a number of ways to identify the best model, such as the type of model that should be used, the important features, and the best parameters of the model to find the best fit for the considered data. The results of analyzing different predictive multiclass classification models with taxi trip tolls show that it is possible to use a machine learning-based model when we like to avoid road tolls depending on historical data on taxi trip tolls. The outcome of this study can help to expect road tolls from the drop-off and pickup locations of a taxi data

Author Biographies

Suhad Al-Shoukry, AL-Furat Al-Awsat Technical University

Lecturer

Department of Computer Systems Techniques

AL-Najaf Technical Institute

Bushra Jaber M. Jawad, University of Kerbala

Assistant Lecturer

Department of Accounting

College of Administration and Economics

Zalili Musa, Universiti Malaysia Pahang

Senior Lecturer, Doctor of Communication Engineering

Departmentof Computing

Ahmad H. Sabry, Universiti Tenaga Nasional

Doctor of Control and Automation Engineering

Department of Sustainable Energy

References

  1. Holzapfel, G. A., Linka, K., Sherifova, S., Cyron, C. J. (2021). Predictive constitutive modelling of arteries by deep learning. Journal of The Royal Society Interface, 18 (182), 20210411. doi: https://doi.org/10.1098/rsif.2021.0411
  2. Niu, T., Wang, J., Lu, H., Yang, W., Du, P. (2021). A Learning System Integrating Temporal Convolution and Deep Learning for Predictive Modeling of Crude Oil Price. IEEE Transactions on Industrial Informatics, 17 (7), 4602–4612. doi: https://doi.org/10.1109/tii.2020.3016594
  3. Linka, K., Hillgärtner, M., Abdolazizi, K. P., Aydin, R. C., Itskov, M., Cyron, C. J. (2021). Constitutive artificial neural networks: A fast and general approach to predictive data-driven constitutive modeling by deep learning. Journal of Computational Physics, 429, 110010. doi: https://doi.org/10.1016/j.jcp.2020.110010
  4. Wang, Y., Bhattacharya, T., Jiang, Y., Qin, X., Wang, Y., Liu, Y. et. al. (2020). A novel deep learning method for predictive modeling of microbiome data. Briefings in Bioinformatics, 22 (3). doi: https://doi.org/10.1093/bib/bbaa073
  5. Saxena, P., Maheshwari, A., Maheshwari, S. (2020). Predictive Modeling of Brain Tumor: A Deep Learning Approach. Innovations in Computational Intelligence and Computer Vision, 275–285. doi: https://doi.org/10.1007/978-981-15-6067-5_30
  6. Sun, T., Li, H., Wu, K., Chen, F., Zhu, Z., Hu, Z. (2020). Data-Driven Predictive Modelling of Mineral Prospectivity Using Machine Learning and Deep Learning Methods: A Case Study from Southern Jiangxi Province, China. Minerals, 10 (2), 102. doi: https://doi.org/10.3390/min10020102
  7. Cantwell, C. D., Mohamied, Y., Tzortzis, K. N., Garasto, S., Houston, C., Chowdhury, R. A. et. al. (2019). Rethinking multiscale cardiac electrophysiology with machine learning and predictive modelling. Computers in Biology and Medicine, 104, 339–351. doi: https://doi.org/10.1016/j.compbiomed.2018.10.015
  8. Miotto, R., Li, L., Kidd, B. A., Dudley, J. T. (2016). Deep Patient: An Unsupervised Representation to Predict the Future of Patients from the Electronic Health Records. Scientific Reports, 6 (1). doi: https://doi.org/10.1038/srep26094
  9. Sun, M., Tang, F., Yi, J., Wang, F., Zhou, J. (2018). Identify Susceptible Locations in Medical Records via Adversarial Attacks on Deep Predictive Models. Proceedings of the 24th ACM SIGKDD International Conference on Knowledge Discovery & Data Mining. doi: https://doi.org/10.1145/3219819.3219909
  10. Rajkomar, A., Oren, E., Chen, K., Dai, A. M., Hajaj, N., Hardt, M. et. al. (2018). Scalable and accurate deep learning with electronic health records. Npj Digital Medicine, 1 (1). doi: https://doi.org/10.1038/s41746-018-0029-1
  11. Zhang, J., Wang, P., Gao, R. X. (2019). Deep learning-based tensile strength prediction in fused deposition modeling. Computers in Industry, 107, 11–21. doi: https://doi.org/10.1016/j.compind.2019.01.011
  12. Li, S., Laima, S., Li, H. (2021). Physics-guided deep learning framework for predictive modeling of bridge vortex-induced vibrations from field monitoring. Physics of Fluids, 33 (3), 037113. doi: https://doi.org/10.1063/5.0032402
  13. Beniwal, A., Dadhich, R., Alankar, A. (2019). Deep learning based predictive modeling for structure-property linkages. Materialia, 8, 100435. doi: https://doi.org/10.1016/j.mtla.2019.100435
  14. Reichstein, M., Camps-Valls, G., Stevens, B., Jung, M., Denzler, J., Carvalhais, N., Prabhat (2019). Deep learning and process understanding for data-driven Earth system science. Nature, 566 (7743), 195–204. doi: https://doi.org/10.1038/s41586-019-0912-1
  15. How to use less gas when driving with Google Maps. Popular Science. Available at: https://www.popsci.com/diy/fuel-efficient-route-google-maps/
  16. TLC Trip Record Data. Available at: https://www1.nyc.gov/site/tlc/about/tlc-trip-record-data.page

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Published

2022-06-30

How to Cite

Al-Shoukry, S., M. Jawad, B. J., Musa, Z., & Sabry, A. H. (2022). Development of predictive modeling and deep learning classification of taxi trip tolls . Eastern-European Journal of Enterprise Technologies, 3(3 (117), 6–12. https://doi.org/10.15587/1729-4061.2022.259242

Issue

Section

Control processes