Analyzing the Performance and Efficiency of Machine Learning Algorithms, such as Deep Learning, Decision Trees, or Support Vector Machines, on Various Datasets and Applications

Authors

  • Hassan Tanveer Department of Computer Sciences, College of Computing and Digital Media (CDM), Depaul University, Chicago
  • Muhammad Ali Adam Department of Computer Sciences, College of Computing and Digital Media (CDM), Depaul University, Chicago
  • Muzammil Ahmad Khan Sir Syed University of Engineering and Technology, Karachi Pakistan
  • Muhammad Awais Ali Department of Electrical Engineering, Bahria University Pakistan https://orcid.org/0009-0007-3223-7140
  • Abdul Shakoor Civil Engineering Department Abasyn University Islamabad Pakistan

DOI:

https://doi.org/10.62019/abbdm.v3i2.83

Keywords:

Digital Transformation, SMEs, Business Performance, Technology Adoption, Digital Literacy, Digital Infrastructure, Resource-Based View, Pakistani Enterprises, Organizational Strategy, Market Adaptability.

Abstract

This research endeavors to comprehensively evaluate and compare the performance of three prominent machine learning algorithms—Deep Learning (DL), Decision Trees (DT), and Support Vector Machines (SVM)—across a spectrum of diverse datasets and applications. The study is driven by specific objectives, including the quantitative analysis of accuracy, precision, recall, and F1 Score for each algorithm to discern their nuanced strengths and weaknesses in varied contexts. Additionally, the research aims to investigate the impact of algorithmic factors, such as complexity and interpretability, on the performance of these machine learning models. By exploring the trade-offs associated with sophisticated models and interpretable alternatives, the study contributes valuable insights to algorithm selection criteria. Another crucial objective is to analyze the effect of dataset characteristics, including size, complexity, and class imbalance, on algorithmic behavior, offering insights into challenges posed by different datasets and potential strategies for addressing issues such as imbalances and biases. Furthermore, the research seeks to assess the generalization capabilities of machine learning algorithms across diverse application domains, encompassing image classification, natural language processing, and numerical prediction. Lastly, the study delves into ethical considerations, specifically focusing on bias assessment and transparency measures in algorithmic decision-making. By emphasizing responsible AI deployment, the research addresses potential biases and ensures transparency through the availability of code and datasets. This structured approach to the research objectives provides a clear roadmap for an in-depth investigation into algorithmic performance, influential factors, and ethical considerations in the deployment of machine learning algorithms.

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Published

2024-01-15

How to Cite

Analyzing the Performance and Efficiency of Machine Learning Algorithms, such as Deep Learning, Decision Trees, or Support Vector Machines, on Various Datasets and Applications . (2024). The Asian Bulletin of Big Data Management , 3(2), 126-136. https://doi.org/10.62019/abbdm.v3i2.83

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