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Article
Optimizing the Efficiency of Machine Learning Techniques
Communications in Computer and Information Science
  • Anwar Ullah, Gomal University
  • Muhammad Zubair Asghar, Gomal University
  • Anam Habib, Gomal University
  • Saiqa Aleem, Zayed University
  • Fazal Masud Kundi, Gomal University
  • Asad Masood Khattak, Zayed University
Document Type
Conference Proceeding
Publication Date
1-1-2020
Abstract

© 2020, Springer Nature Singapore Pte Ltd. The prediction of judicial decisions based on historical datasets in the legal domain is a challenging task. To answer the question about how the court will render a decision in a particular case has remained an important issue. Prior studies conducted on the prediction of judicial case decisions have datasets with limited size by experimenting less efficient set of predictors variables applied to different machine learning classifiers. In this work, we investigate and apply more efficient sets of predictors variables with a machine learning classifier over a large size legal dataset for court judgment prediction. Experimental results are encouraging and depict that incorporation of feature selection technique has significantly improved the performance of predictive classifier.

ISBN
9789811575297
Publisher
Springer
Disciplines
Keywords
  • Feature selection,
  • Judicial case decisions,
  • Machine learning,
  • Random forest,
  • Statistical test
Scopus ID
85090024958
Indexed in Scopus
Yes
Open Access
No
https://doi.org/10.1007/978-981-15-7530-3_42
Citation Information
Anwar Ullah, Muhammad Zubair Asghar, Anam Habib, Saiqa Aleem, et al.. "Optimizing the Efficiency of Machine Learning Techniques" Communications in Computer and Information Science Vol. 1210 CCIS (2020) p. 553 - 567 ISSN: <a href="https://v2.sherpa.ac.uk/id/publication/issn/1865-0929" target="_blank">1865-0929</a>
Available at: http://works.bepress.com/asad-khattak/68/