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Fraud Detection in Python

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Course Report - Fraud Detection in Python

Course Report

Find detailed report of this course which helps you make an informed decision on its relevance to your learning needs. Find out the course's popularity among Careervira users and the job roles that would find the course relevant for their upskilling here. You can also find how this course compares against similar courses and much more in the course report.

Course Features

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Duration

4 hours

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Delivery Method

Online

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Available on

Limited Access

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Accessibility

Mobile, Desktop, Laptop

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Language

English

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Subtitles

English

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Level

Intermediate

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Teaching Type

Self Paced

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Video Content

4 hours

Course Description

Fraud costs an average company 5% of its annual revenues. This course will show you how to fight fraud using data. To identify fraud activity, you will be able to use both supervised and unsupervised learning techniques. Learn how to effectively deal with high-stakes data in fraud analytics. This course covers both theoretical and technical aspects. It also teaches you how to implement fraud detection methods. This course will provide you with tips and advice based on real-world experiences that can help you avoid common mistakes in fraud analytics.

Course Overview

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Virtual Labs

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International Faculty

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Post Course Interactions

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Hands-On Training,Instructor-Moderated Discussions

Skills You Will Gain

Prerequisites/Requirements

Supervised Learning with scikit-learn

Unsupervised Learning in Python

What You Will Learn

Learn how to detect fraud using Python

You'll learn about the typical challenges associated with fraud detection, and will learn how to resample your data in a smart way, to tackle problems with imbalanced data

You will use classifiers, adjust them, and compare them to find the most efficient fraud detection model

You will segment customers, use K-means clustering and other clustering algorithms to find suspicious occurrences in your data

In this final chapter, you will use text data, text mining, and topic modeling to detect fraudulent behavior

Course Instructors

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Charlotte Werger

Director of Advanced Analytics at Nike

Dr. Charlotte Werger currently works at Nike as a Director of Advanced Analytics. Charlotte is a data scientist with a background in econometrics and finance. She loves applying Machine Learning to a...

Course Reviews

Average Rating Based on 3 reviews

5.0

100%

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