A Comparative Study of Parameters Measuring in Data Mining Function Using SVM
Journal: International Journal of Computer Science and Mobile Computing - IJCSMC (Vol.10, No. 8)Publication Date: 2021-08-30
Authors : Meghna Utmal;
Page : 15-22
Keywords : ML; classification; text mining; SVM; accuracy;
Abstract
Due to the vast amount of data available on the internet nowadays, it is necessary to categorise the data, and fast, accurate, and resilient algorithms for data analysis are required. Support vector machines (SVMs) are a form of machine learning technique that is commonly used to solve a variety of statistical learning issues. It's been designed as a reliable categorization tool, and it's especially useful when there's a lot of data. Machine learning is an area of artificial intelligence (AI) and computer science that focuses on using data and algorithms to mimic the way humans learn, with the goal of steadily improving accuracy. Algorithms are trained to create classifications by using statistical approaches. These should ideally have an impact on important growth measures. In this study, we found that employing the Support Vector Machine technique provides the best accuracy and efficiency for our dataset. Our work is based on the evaluation of parameters like accuracy, recall and precision.
Other Latest Articles
- Economic and Mathematical Modelling of the Effectiveness of the National System for Combatting Cyber Fraud and Legalisation of Criminal Proceeds Based on Survival Analysis Methods
- Edge Computing and Its Convergence with Blockchain in 6G: Security Challenges
- Customs Management: International Supply Chains Maintenance and Implementation of a Customs Policy to Counter the COVID-19 Crisis
- The Specifics of the Fiscal Mechanism Operation in the Ukrainian Lands in Cossack Times
- Conceptual Foundations of Innovative Development of National Economy in the Context of Technological Ways and Power Innovations
Last modified: 2021-08-17 17:19:40