You are here

Back to top

Data Preprocessing for Classifying Medical Dataset (Paperback)

Data Preprocessing for Classifying Medical Dataset Cover Image
$36.00
Special Order

Description


The book would provide an in-depth guide to the various techniques and methods used in preprocessing and preparing medical datasets for classification tasks. The book would start by discussing the importance of data preprocessing in machine learning and how it affects the overall performance of a classifier.


It would then cover various topics such as data cleaning, data transformation, normalization, outlier detection, and imputation, with a focus on their applications in medical datasets. The book would also delve into feature scaling, selection, and encoding categorical variables, providing readers with practical examples and case studies.


Additionally, the book would explore the challenges posed by class imbalance and multi-collinearity in medical datasets, and provide techniques for data balancing and data reduction. The book would also provide guidance on feature engineering and its impact on the performance of classifiers.


The book would be aimed at data scientists, machine learning engineers, and medical professionals with a background in data analysis and programming who are interested in using machine learning to classify medical datasets. The book would provide a comprehensive and hands-on approach to preprocessing medical datasets for classification tasks, equipping readers with the knowledge and skills necessary to tackle real-world problems.


Data mining engine can perform functions like Characterization, Association and Correlation Analysis, Classification, Prediction, Cluster analysis, Sequential patterns, Outlier analysis, and Evolution analysis. Besides the

effectiveness of data mining, there are also many challenges faced while performing data

mining task. The factors influencing data mining are: Mining Methodology and User

Interaction, Performance Issues, Diverse Data Types, Uncertainty Handling, Dealing with Missing

Values and Outliers, Efficiency of Algorithms, Incorporating Domain Knowledge, Size

and Complexity of Data.



Product Details
ISBN: 9783150626191
ISBN-10: 3150626196
Publisher: Mrs. M.S Padmavathi
Publication Date: February 1st, 2023
Pages: 216
Language: English