Effective Classification Algorithms and Feature Selection for Bio-Medical Data using IoT
- Resource Type
- Authors
- Amala Rajan; Fawad Masood; Junaid Masood; Muhammad Shahzad; Sheeraz Ahmed; Zahoor Ali Khan; Vishesh Akre
- Source
- 2020 Seventh International Conference on Information Technology Trends (ITT).
- Subject
- Set (abstract data type)
Statistical classification
Computer science
Feature extraction
Word error rate
Sample (statistics)
Feature selection
Data mining
computer.software_genre
Raw data
computer
Field (computer science)
- Language
Data mining is the process to predict future trends. Data mining involving searching of patterns whose general purpose is to extract information using intelligent methods from a set of data and information turn it into an understandable structure for later use. Data mining using IoT becomes one of the leading providers applicable in several areas. The method of extracting usable data from larger set of arbitrary raw data is called data mining. This includes the analysis of sample data in large amounts of data with one or more programs. Concentrate on large amounts of data and databases to analyze, we use predictive analysis in the field of medicine. In this study, we examine the performance of algorithms along with the use of IoT that analyses large amounts of scattered information to make sense of it and turn it into knowledge. For this we used feature selection and classification algorithm on hepatitis data to get best result with minimum error rate and compare feature selection with classification algorithm so that to check which method is best according to results.