Bart Baesens

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Fraud Detection using Analytics in R (E-learning)

📅 Self-Paced E-learning course
🌍 English

The Association of Certified Fraud Examiners estimates that fraud costs organizations worldwide $3.7 trillion a year and that a typical company loses five percent of annual revenue due to fraud. Fraud attempts are expected to even increase further in future, making fraud detection highly necessary in most industries. This course will show how learning fraud patterns from historical data can be used to fight fraud. Some techniques from robust statistics and digit analysis are presented to detect unusual observations that are likely associated with fraud. Two main challenges when building a supervised tool for fraud detection are the imbalance or skewness of the data and the various costs for different types of misclassification. We present techniques to solve these issues and focus on artificial and real datasets from a wide variety of fraud applications.

👩‍🏫 Lecturers

Prof. dr. Bart Baesens
Professor at KU Leuven

🏢 Location

Anywhere (e-learning).

🏫 Organizer

DataCamp

💼 Register

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Price and Registration

Please visit the organizer's web site for more information and registration options for this course.

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