168 164
Full Length Article
American Journal of Business and Operations Research
Volume 11 , Issue 1, PP: 69-78 , 2024 | Cite this article as | XML | Html |PDF

Title

Intelligent Stock Price Fusion in Mobile Industries

  Muddassar Sarfraz 1 * ,   Sana Ullah 2

1  School of Management, Zhejiang Shuren University, Hangzhou, China
    (muddassar.sarfraz@gmail.com)

2  School of economics, Quaid-i-Azam University, Islamabad, Pakistan
    (sana_ullah133@yahoo.com)


Doi   :   https://doi.org/10.54216/AJBOR.110108

Received: July 19, 2023 Revised: September 12, 2023 Accepted: December 10, 2023

Abstract :

In the tough cell phone business, guessing phone­ prices right is a key but hard job for new companies. Joining different types of info to look at stock prices may help, but we need strong ways to see how phone things and their costs tie together. This study wants to make stock price checking better in the cell phone busine­ss by using ways to join info. The work looks for strong ties between many phone things like memory, camera details, and screen size and how they affect the price. To fix this, very careful work was done to clean and fix the info. The Quadratic Discriminant Analysis rule­ was then used, along with top classifiers, for saying what will happen. Our findings demonstrate the QDA model's ability to detect subtle patterns and nonlinear correlations in the mobile phone data set. The model's resilience and predictive ability are demonstrated through visualizations such as ROC AUC and Precision-Recall curves. Comparative analyses with current approaches highlight the higher performance of the suggested data fusion approach. The use of QDA in data fusion models demonstrates its versatility in capturing complicated interactions, resulting in nuanced insights into mobile phone price factors. This study adds an improved prediction framework for mobile phone price analysis, which is critical for new enterprises looking to gain a competitive advantage in the volatile mobile industry.

Keywords :

data fusion; Mobile Technology; Predictive Modeling; Price Estimation; Machine Learning; Market Dynamics; Decision Boundaries; Market Competitiveness.

References :

[1]    Singh, Saurabh, Pradip Kumar Sharma, Byungun Yoon, Mohammad Shojafar, Gi Hwan Cho, and In Ho Ra. 2020. “Convergence of Blockchain and Artificial Intelligence in IoT Network for the Sustainable Smart City.” Sustainable Cities and Society. https://doi.org/10.1016/j.scs.2020.102364.

[2]    Bughin, Jacques, Eric Hazan, Paris Sree Ramaswamy, Washington DC, Michael Chu, and others. 2017. “Artificial Intelligence the next Digital Frontier.”

[3]    Iqbal, Rahat, Faiyaz Doctor, Brian More, Shahid Mahmud, and Usman Yousuf. 2020. “Big Data Analytics: Computational Intelligence Techniques and Application Areas.” Technological Forecasting and Social Change 153: 119253.

[4]    Riikkinen, Mikko, Hannu Saarijärvi, Peter Sarlin, and Ilkka Lähteenmäki. 2018. “Using Artificial Intelligence to Create Value in Insurance.” International Journal of Bank Marketing 36 (6): 1145–68.

[5]    Lu, Huimin, Yujie Li, Min Chen, Hyoungseop Kim, and Seiichi Serikawa. 2018. “Brain Intelligence: Go beyond Artificial Intelligence.” Mobile Networks and Applications 23: 368–75.

[6]    Mhlanga, David. 2021. “Artificial Intelligence in the Industry 4.0, and Its Impact on Poverty, Innovation, Infrastructure Development, and the Sustainable Development Goals: Lessons from Emerging Economies?” Sustainability 13 (11): 5788.

[7]    Paul, Debleena, Gaurav Sanap, Snehal Shenoy, Dnyaneshwar Kalyane, Kiran Kalia, and Rakesh K Tekade. 2021. “Artificial Intelligence in Drug Discovery and Development.” Drug Discovery Today 26 (1): 80.

[8]    Setiawan, Roy, Luigi Pio Leanardo Cavaliere, Kartikey Koti, Gabriel Ayodeji Ogunmola, Nasir Abdul Jalil, M Kalyan Chakravarthi, S Suman Rajest, R Regin, and Sonia Singh. 2021. “The Artificial Intelligence and Inventory Effect on Banking Industrial Performance.” Petra Christian University.

[9]    Jha, Kirtan, Aalap Doshi, Poojan Patel, and Manan Shah. 2019. “A Comprehensive Review on Automation in Agriculture Using Artificial Intelligence.” Artificial Intelligence in Agriculture 2: 1–12.

[10] Dash, Rupa, Mark McMurtrey, Carl Rebman, and Upendra K Kar. 2019. “Application of Artificial Intelligence in Automation of Supply Chain Management.” Journal of Strategic Innovation and Sustainability 14 (3): 43–53.

[11] Makridakis, Spyros. 2017. “The Forthcoming Artificial Intelligence (AI) Revolution: Its Impact on Society and Firms.” Futures 90: 46–60.

[12] Kulkarni, Raghavendra V, Anna Förster, and Ganesh Kumar Venayagamoorthy. 2010. “Computational Intelligence in Wireless Sensor Networks: A Survey.” IEEE Communications Surveys \& Tutorials 13 (1): 68–96.

[13] Marwala, Tshilidzi, and others. 2013. “Economic Modeling Using Artificial Intelligence Methods.”

[14] Ganeshkumar, C, Sanjay Kumar Jena, A Sivakumar, and T Nambirajan. 2023. “Artificial Intelligence in Agricultural Value Chain: Review and Future Directions.” Journal of Agribusiness in Developing and Emerging Economies 13 (3): 379–98.

[15] Ezrachi, Ariel, and Maurice E Stucke. 2017. “Artificial Intelligence \& Collusion: When Computers Inhibit Competition.” U. Ill. L. Rev., 1775.

[16] King, Katie. 2019. Using Artificial Intelligence in Marketing: How to Harness AI and Maintain the Competitive Edge. Kogan Page Publishers.

[17] Li, Rongpeng, Zhifeng Zhao, Xuan Zhou, Guoru Ding, Yan Chen, Zhongyao Wang, and Honggang Zhang. 2017. “Intelligent 5G: When Cellular Networks Meet Artificial Intelligence.” IEEE Wireless Communications 24 (5): 175–83.

[18] Al-Blooshi, Laila, and Haitham Nobanee. 2020. “Applications of Artificial Intelligence in Financial Management Decisions: A Mini-Review.” Available at SSRN 3540140.

[19] Varsha, P S, Shahriar Akter, Amit Kumar, Saikat Gochhait, and Basanna Patagundi. 2021. “The Impact of Artificial Intelligence on Branding: A Bibliometric Analysis (1982-2019).” Journal of Global Information Management (JGIM) 29 (4): 221–46.

[20] Sahni, Varsha, Sandeep Srivastava, and Rijwan Khan. 2021. “Modelling Techniques to Improve the Quality of Food Using Artificial Intelligence.” Journal of Food Quality 2021: 1–10.

[21] Akerkar, Rajendra. 2019. Artificial Intelligence for Business. Springer.

[22] Thalore, Ranjana, Vandita Vyas, Jeetu Sharma, and Vikas Raina. 2021. “Utilizing Artificial Intelligence to Design Delay and Energy-Aware Wireless Sensor Networks.” Artificial Intelligence and Global Society, 229–50.

[23] Tang, Kai-Yu, Ching-Yi Chang, and Gwo-Jen Hwang. 2023. “Trends in Artificial Intelligence-Supported e-Learning: A Systematic Review and Co-Citation Network Analysis (1998--2019).” Interactive Learning Environments 31 (4): 2134–52.

[24] Mishra, Shashvi, and Amit Kumar Tyagi. 2022. “The Role of Machine Learning Techniques in Internet of Things-Based Cloud Applications.” Artificial Intelligence-Based Internet of Things Systems, 105–35.

[25] Salehi, Hadi, and Rigoberto Burgueño. 2018. “Emerging Artificial Intelligence Methods in Structural Engineering.” Engineering Structures 171: 170–89.

[26] Kusiak, Andrew. 2000. Computational Intelligence in Design and Manufacturing. John Wiley \& Sons.


Cite this Article as :
Style #
MLA Muddassar Sarfraz, Sana Ullah. "Intelligent Stock Price Fusion in Mobile Industries." American Journal of Business and Operations Research, Vol. 11, No. 1, 2024 ,PP. 69-78 (Doi   :  https://doi.org/10.54216/AJBOR.110108)
APA Muddassar Sarfraz, Sana Ullah. (2024). Intelligent Stock Price Fusion in Mobile Industries. Journal of American Journal of Business and Operations Research, 11 ( 1 ), 69-78 (Doi   :  https://doi.org/10.54216/AJBOR.110108)
Chicago Muddassar Sarfraz, Sana Ullah. "Intelligent Stock Price Fusion in Mobile Industries." Journal of American Journal of Business and Operations Research, 11 no. 1 (2024): 69-78 (Doi   :  https://doi.org/10.54216/AJBOR.110108)
Harvard Muddassar Sarfraz, Sana Ullah. (2024). Intelligent Stock Price Fusion in Mobile Industries. Journal of American Journal of Business and Operations Research, 11 ( 1 ), 69-78 (Doi   :  https://doi.org/10.54216/AJBOR.110108)
Vancouver Muddassar Sarfraz, Sana Ullah. Intelligent Stock Price Fusion in Mobile Industries. Journal of American Journal of Business and Operations Research, (2024); 11 ( 1 ): 69-78 (Doi   :  https://doi.org/10.54216/AJBOR.110108)
IEEE Muddassar Sarfraz, Sana Ullah, Intelligent Stock Price Fusion in Mobile Industries, Journal of American Journal of Business and Operations Research, Vol. 11 , No. 1 , (2024) : 69-78 (Doi   :  https://doi.org/10.54216/AJBOR.110108)