DATA MINING TECHNIQUES
| Institution | UNIVERSITY |
| Course | FORENSICS |
| Year | 1st Year |
| Semester | Unknown |
| Posted By | Brian Mike |
| File Type | |
| Pages | 21 Pages |
| File Size | 545.18 KB |
| Views | 1865 |
| Downloads | 0 |
| Price: |
Buy Now
|
Description
The paper presents application of data mining techniques to fraud analysis. We
present some classification and prediction data mining techniques which we
consider important to handle fraud detection. There exist a number of data
mining algorithms and we present statistics-based algorithm, decision treebased algorithm and rule-based algorithm. We present Bayesian classification model to detect fraud in automobile insurance. Naïve Bayesian visualization is selected to analyze and interpret the classifier predictions. We illustrate how ROC curves can be deployed for model assessment in order to provide a more intuitive analysis of the models
Below is the document preview.
SPA 2412; Financial Risk Management Notes 4th Year
Trending!
Financial risk management is a process to deal with key factors affecting interest rates,exchange rates and commodity prices.
99 Pages
3193 Views
2 Downloads
1.31 MB
SPA 2403; Survival Analysis Notes 4th year
Trending!
These are simplified survival analysis notes to help the student to pass his or her exams.
67 Pages
2223 Views
1 Downloads
184.36 KB
Curriculum development notes 2nd year
Trending!
Simple and clear notes
51 Pages
2407 Views
2 Downloads
565.08 KB
SPA 2410; Life Assurance Notes 4th year
These are simplified Life Assurance notes to help the student to study and pass exams easily
177 Pages
1857 Views
0 Downloads
712.34 KB
4th year
This notes provide comprehensive knowledge of data mining basic knowledge of machine learning.
125 Views
0 Downloads
333.5 KB
A letter to my former teacher, novel
Trending!
Teachers' impact on the performance of students.
60 Pages
3767 Views
0 Downloads
410.7 KB
KMTC Research policy booklet
Trending!
This a simplified KMTC Research policy booklet
22 Pages
2257 Views
1 Downloads
635.94 KB