Adaboost extensions for cost-sentive classification
CSExtension 1
CSExtension 2
CSExtension 3
CSExtension 4
CSExtension 5
AdaCost
Boost
CostBoost
Uboost
CostUBoost
AdaBoostM1
Implementation of all the listed algorithms of the cluster "cost-sensitive classification".
They are the meta algorithms which requires base algorithms e.g. Decision Tree
Moreover,
Voting criteria is also required e.g. Minimum expected cost criteria
Input also requires to load an arff file and a cost matrix (sample arff and cost files are uploaded for users' reference)
This extension uses weka for classification and generates the classification model along with confusion matrix. For given dataset and cost matrix
Features
- cost sensitive data mining
- data mining
- adaboost
- cost sensitive adaboost
Categories
HMILicense
Creative Commons Attribution LicenseFollow Cost-sensitive Classifiers
Other Useful Business Software
The Most Powerful Software Platform for EHSQ and ESG Management
Choose from a complete set of software solutions across EHSQ that address all aspects of top performing Environmental, Health and Safety, and Quality management programs.
Rate This Project
Login To Rate This Project
User Reviews
-
Link to the original research paper of this work is: http: //research.ijcaonline.org/volume44/number13/pxc3878677. pdf pls remove space before "//" and "pdf" in above url to make it work in your browser.