Performance and Evaluation of Data Mining Techniques in Cancer Diagnosis
Journal Title: IOSR Journals (IOSR Journal of Computer Engineering) - Year 2013, Vol 15, Issue 5
Abstract
We analyze the breast Cancer data available from the WBC, WDBC from UCI machine learning with the aim of developing accurate prediction models for breast cancer using data mining techniques. Data mining has, for good reason, recently attracted a lot of attention, it is a new Technology, tackling new problem, with great potential for valuable commercial and scientific discoveries. The experiments are conducted in WEKA. Several data mining classification techniques were used on the proposed data. There are many classification techniques in data mining such as Decision Tree, Rules NNge, Tree random forest, Random Tree, lazy IBK. The aim of this paper is to investigate the performance of different classification techniques. The data breast cancer data with a total 286 rows and 10 columns will be used to test and justify the different between the classification methods and algorithm.
Authors and Affiliations
R. M. Chandrasekar Ph. D
Breast Cancer Monitoring and Tracking System using Soft Computing and Expert System for Healthcare Support
Abstract:The decision process for selecting the best-suited follow-up treatment for suspected breast cancer cases are strongly dependent upon the correct diagnosis and assessment of the breast cancer risk. This stu...
Performance Analysis of Adaptive Approach for Congestion Control In Wireless Sensor Networks
WSN consists of hundreds / thousands of wireless nodes distributed within the geographical area. The wireless nodes gather information and supply towards the central node for further processing. There are different facto...
Secured Lossless Medical Image Compression Based On Adaptive Binary Optimization
Image and data compression is of vital importance and has great significance in many practical applications. Large amount of medical image sequences are available in various hospitals and medical,organizations, which occ...
An Analytical Study of Genetic Algorithm for Generating Frequent Itemset and Framing Association Rules At Various Support Levels
Abstract: In customary, frequent itemsets are propogated from large data sets by employing association rule mining algorithms like Apriori, Partition, Pincer-Search, Incremental and Border algorithm etc., which gains ino...
A Parallel Hybrid Technique for Multi-Noise Removal from Grayscale Medical Images
Abstract: Medical imaging is the technique used to create images of the human body or parts of it for clinical purposes. Medical images always have large sizes and they are commonly corrupted by single or multiple noise...