Welcome to Scholar Publishing Group

International Journal of Big Data Intelligent Technology, 2021, 2(1); doi: 10.38007/IJBDIT.2021.020103.

Game Analysis between Stakeholders in the Online Car-hailing Industry Based on Perception Decision-making Based on Intelligent Edge Computing


Mohammed Kumar

Corresponding Author:
Mohammed Kumar

GLA University, India


Didi Taxi is a well-known taxi-hailing software. With the rapid development of the online ride-hailing industry, taxi-hailing software has slowly entered people's lives. Because of its much cheaper price than taxis, it is very popular among young people. Therefore, this article conducts a game analysis on the stakeholders of the online car-hailing industry, which is mainly attributed to the background of the perceptual decision-making of intelligent edge computing. This paper proposes to apply MEC to the ETSI standard, then builds the RACS structure, then builds the MEC server computing model through computational offloading, combines game theory and online car-hailing mode to analyze, and finally designs a new edge computing perception strategy model. In order to reduce the time delay of the new model, this paper designs the average response time delay minimization experiment, and then conducts the simulation experiment. Finally, combined with the game data collection, the edge computing perception strategy model is used to conduct game analysis on the stakeholders of the online car-hailing industry. The results show that the use of edge computing perception strategy model can increase the income of online car-hailing car owners by 11.23%, and can reduce the cost of online car-hailing users by 12.73%. Therefore, the edge computing perception strategy model can effectively increase the profit and income of the online car-hailing industry, and it has a great role in promoting the development of the online car-hailing industry.


Online Car-hailing Industry, Game Analysis, Edge Computing, Perceptual Decision-making

Cite This Paper

Mohammed Kumar. Game Analysis between Stakeholders in the Online Car-hailing Industry Based on Perception Decision-making Based on Intelligent Edge Computing. International Journal of Big Data Intelligent Technology (2021), Vol. 2, Issue 1: 18-39. https://doi.org/10.38007/IJBDIT.2021.020103.


[1] Chen X ,  Shi Q ,  Yang L , et al. ThriftyEdge: Resource-Efficient Edge Computing for Intelligent IoT Applications. IEEE Network, 2018, 32(1):61-65. https://doi.org/10.1109/MNET.2018.1700145

[2] Kehao, WANG, Zhenhua, et al. Joint time delay and energy optimization with intelligent overclocking in edge computing. Science China(Information Sciences), 2020, v.63(04):154-169. https://doi.org/10.1007/s11432-019-2780-0

[3] Dong X ,  Li X ,  Yue X , et al. Performance Analysis of Cooperative NOMA Based Intelligent Mobile Edge Computing System. China Communications, 2020, 17(8):45-57. https://doi.org/10.23919/JCC.2020.08.004

[4] Michaud F ,  Zao J K . Fog Computing: Securing the Intelligent Edge in Next-Generation Networks. Cutter IT Journal, 2018, 31(6):17-22.

[5] Patel P ,  Ali M I ,  Sheth A . On Using the Intelligent Edge for IoT Analytics. IEEE Intelligent Systems, 2017, 32(5):64-69. https://doi.org/10.1109/MIS.2017.3711653

[6] Haefner R ,  Berkes P ,  Fiser J . Perceptual Decision-Making as Probabilistic Inference by Neural Sampling. Neuron, 2016, 90(3):649-660.

[7] Maanen L V ,  Forstmann B U ,  Keuken M C , et al. The impact of MRI scanner environment on perceptual decision-making. Behavior Research Methods, 2016, 48(1):184-200.

[8] Dong, Kuk, Park, et al. An Analysis of Success Factors of Mobile Game for Decision-making of Publishing Business. Journal of The Korean Society for Computer Game, 2016, 29(2):65-73.

[9] Dautov, Rustem, Distefano, et al. Metropolitan intelligent surveillance systems for urban areas by harnessing IoT and edge computing paradigms. Software: Practice and experience, 2018, 48(8):1475-1492. https://doi.org/10.1002/spe.2586

[10] Kim K ,  Jang J S ,  Keum C , et al. Individual Presence-and-Preference-Based Local Intelligent Service System and Mobile Edge Computing. Journal of Korean Institute of Communications & Information Sciences, 2017, 42(2):523-535.

[11] Cassey P J ,  Gaut G ,  Steyvers M , et al. A generative joint model for spike trains and saccades during perceptual decision-making. Psychonomic Bulletin & Review, 2016, 23(6):1757-1778. https://doi.org/10.3758/s13423-016-1056-z

[12] Hameed A ,  Dai R ,  Balas B . A Decision-Tree-Based Perceptual Video Quality Prediction Model and Its Application in FEC for Wireless Multimedia Communications. IEEE Transactions on Multimedia, 2016, 18(4):764-774.

[13] Charles K ,  Ssematimba A ,  Malladi S , et al. Avian Influenza in the U.S. Commercial Upland Game Bird Industry: An Analysis of Selected Practices as Potential Exposure Pathways and Surveillance System Data Reporting. Avian Diseases, 2018, 62(3):307-315.

[14] Yamaguchi S ,  Iyanaga K ,  Sakaguchi H , et al. The Substitution Effect of Mobile Games on Console Games: An Empirical Analysis of the Japanese Video Game Industry. Review of Socionetwork Strategies, 2017, 11(2):1-16.

[15] Wang T ,  Y  Liang,  Y  Yang, et al. An Intelligent Edge-Computing-Based Method to Counter Coupling Problems in Cyber-Physical Systems. IEEE Network, 2020, 34(3):16-22. https://doi.org/10.1109/MNET.011.1900251

[16] Mukherjee M ,  Matam R ,  Mavromoustakis C X , et al. Intelligent Edge Computing: Security and Privacy Challenges. IEEE Communications Magazine, 2020, 58(9):26-31.

[17] Lak A ,  Nomoto K ,  Keramati M , et al. Midbrain Dopamine Neurons Signal Belief in Choice Accuracy during a Perceptual Decision. Current Biology, 2017, 27(6):821-832.

[18] Hanks T D ,  Summerfield C . Perceptual Decision Making in Rodents, Monkeys, and Humans. Neuron, 2017, 93(1):15-31.

[19] MD Nunez,  Vandekerckhove J ,  Srinivasan R . How attention influences perceptual decision making: Single-trial EEG correlates of drift-diffusion model parameters. Journal of Mathematical Psychology, 2017, 76(B):117-130.

[20] Sun D ,  Zhang K ,  Shen S . Analyzing spatiotemporal traffic line source emissions based on massive didi online car-hailing service data. Transportation Research Part D Transport & Environment, 2018, 62(JUL.):699-714. https://doi.org/10.1016/j.trd.2018.04.024

[21] Usman M ,  Jolfaei A ,  Jan M A . RaSEC: An Intelligent Framework for Reliable and Secure Multilevel Edge Computing in Industrial Environments. IEEE Transactions on Industry Applications, 2020, 56(4):4543-4551. https://doi.org/10.1109/TIA.2020.2975488

[22] Yang B ,  Wu D ,  Wang R . CUE: An Intelligent Edge Computing Framework. IEEE Network, 2019, 33(3):18-25.

[23] Liu Y ,  Yang C ,  Jiang L , et al. Intelligent Edge Computing for IoT-Based Energy Management in Smart Cities. IEEE Network, 2019, 33(2):111-117. https://doi.org/10.1109/MNET.2019.1800254

[24] Chen S ,  Wen H ,  Wu J , et al. Internet of Things based Smart Grids Supported by Intelligent Edge Computing. IEEE Access, 2019, 7(1):74089-74102.

[25] Hauser T U ,  Allen M ,  Rees G , et al. Metacognitive impairments extend perceptual decision making weaknesses in compulsivity. Rep, 2017, 7(1):173-181. https://doi.org/10.1038/s41598-017-06116-z

[26] Boehm U ,  Hawkins G E ,  Brown S , et al. Of monkeys and men: Impatience in perceptual decision-making. Psychonomic Bulletin & Review, 2016, 23(3):738-749. https://doi.org/10.3758/s13423-015-0958-5

[27] Diederich A . A Multistage Attention-Switching Model Account for Payoff Effects on Perceptual Decision Tasks With Manipulated Processing Order. Decision, 2016, 3(2):81-114. https://doi.org/10.1037/dec0000041