ahp algorithm and un-supervised clustering in auto insurance fraud detection
thesis
- وزارت علوم، تحقیقات و فناوری - دانشگاه علامه طباطبایی - دانشکده اقتصاد
- author محسن سراج زاده
- adviser حسن رشیدی
- Number of pages: First 15 pages
- publication year 1389
abstract
this thesis is a study on insurance fraud in iran automobile insurance industry and explores the usage of expert linkage between un-supervised clustering and analytical hierarchy process(ahp), and renders the findings from applying these algorithms for automobile insurance claim fraud detection. the expert linkage determination objective function plan provides us with a way to determine which claims are fraudulent in this model and which input is outlier like fraud. empirical assessment is based on a data set of auto claims occurred in iran – alborz insurance company during 2008-2009. based on indices and anomaly analysis some outliers are fraud in insurance market. the main hypothesis of this research is existence of a relationship between the ahp, clustering and outlier analysis algorithms in their results and an expert system can indicate the truth of this hypothesis. this research concludes that there is a significant relationship between these used methods. ahp can be a parallel and efficient algorithm for solving the statistical problems same as data mining method. the time of occurrence of claim (interval between the time of occurred accident and policy start date) has highest level of important in fraud detection and the insured without any insurance record has a higher level of risk in comparison with the insured that has one or two previous claims also the probability of fraud and to be in subsection groups goes up if the premium of insured increases.
similar resources
the clustering and classification data mining techniques in insurance fraud detection:the case of iranian car insurance
با توجه به گسترش روز افزون تقلب در حوزه بیمه به خصوص در بخش بیمه اتومبیل و تبعات منفی آن برای شرکت های بیمه، به کارگیری روش های مناسب و کارآمد به منظور شناسایی و کشف تقلب در این حوزه امری ضروری است. درک الگوی موجود در داده های مربوط به مطالبات گزارش شده گذشته می تواند در کشف واقعی یا غیرواقعی بودن ادعای خسارت، مفید باشد. یکی از متداول ترین و پرکاربردترین راه های کشف الگوی داده ها استفاده از ر...
Detecting Auto Insurance Fraud by Data Mining Techniques
The paper presents fraud detection method to predict and analyze fraud patterns from data. To generate classifiers, we apply the Naïve Bayesian Classification, and Decision Tree-Based algorithms. A brief description of the algorithm is provided along with its application in detecting fraud. The same data is used for both the techniques. We analyze and interpret the classifier predictions. The m...
full textThe Impact of Insurance Fraud Detection
The purpose of this paper is to characterize the impact of fraud detection systems on the auditing procedure and the equilibrium insurance contract, when a policyholder can report a loss that never occurred. Insurers can only detect fraudulent claims through a costly audit (costly state verification). With fraud detection system insurers can depend their audit on the signal of the system and au...
full textFraud Detection in Mobile Communications Using Supervised Neural Networks 1 Fraud Detection in Mobile Communications Using Supervised Neural Networks
We present the results of the development of the rst prototype of a supervised neural network for the detection of fraud in mobile communications. We have developed this prototype in the framework of a project of the European Commission on Advanced Security for Personal Communications (ASPeCT) 1 , together with two other prototypes based on unsupervised neural networks and knowledge-based syste...
full textfraud detection using a fuzzy expert system in motor insurance
insurance industry experts believe that fraud is a destructive disaster in the insurance industry. over the years, many methods have been used in the literature for fraud detection, one of which is expert systems. fraud detection expert systems are based on the knowledge of experts in the field of insurance identify fraud. judgment of experts is mostly based on evidence, documents, qualitative ...
full textCombining Social Network Analysis with Semi-supervised Clustering: a case study on fraud detection
At time of crisis, when fraud permanently frightens the basis of modern societies, the existence of effective tools to prevent it, or just to identify it in time, is critical. However, the detection of fraud is naturally impaired (among other issues) by the difficulty on labelling data, due to the cost of identifying and attest fraud. Moreover, the inability to incorporate domain knowledge in t...
full textMy Resources
document type: thesis
وزارت علوم، تحقیقات و فناوری - دانشگاه علامه طباطبایی - دانشکده اقتصاد
Keywords
Hosted on Doprax cloud platform doprax.com
copyright © 2015-2023