Gartner Research

Begin Investing Now in Enhanced Machine-Learning Capabilities for Fraud Detection

Published: 14 July 2017

ID: G00324126

Analyst(s): Avivah Litan , Tricia Phillips , Danny Luong

Summary

Security and risk management leaders must cut through the hype about machine learning and AI to understand the emerging types of machine learning available and the use cases appropriate for each method. This research will help guide sound investment decisions that can improve overall fraud results.

Table Of Contents
  • Key Challenges

Introduction

Analysis

  • Define Your Use Cases and Which Type of Machine Learning Is Applicable
  • Understand What Your Existing Providers Can Offer
  • Start With Complementary Implementation, Rather Than Rip and Replace
  • Summary

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