Whitepaper

Machine Learning for Fraud Detection:
What Risk Professionals Need to Know

Today’s customer places speed and convenience at the heart of their purchasing and decision-making process, whether they are making a weekly grocery shop, or managing financial products.

At the same time, fraudsters are rapidly evolving their method of attack - particularly in the digital space - meaning businesses are fighting to protect their customers while providing a seamless experience.

The opportunities offered by machine learning are setting the stage for a positive balance between customer protection and reducing customer friction.

    This detailed whitepaper answers:

    • What is machine learning and how does a machine learning system work?
    • How can risk and fraud professionals take advantage of real-time machine learning to achieve a competitive edge in their relevant markets?
    • Why is the time right for machine learning in fraud and risk management?

    Access your free copy below.

    Privacy Statement

    Your personal contact details, provided above, will be used to send your download. Your details will be stored securely in our Salesforce database.

    If you have opted-in to further communications, we (Featurespace) will use your name and email to send occasional updates about Featurespace, our products and events, machine learning and fraud industry news or insights, which may be of interest you and/or your business. We will use your company and industry information to ensure these communications are relevant to you.

    If you would like to amend your preferences or unsubscribe at any time, please click here

    All data is stored securely with Salesforce in the UK, France and Germany. By submitting your personal data, you agree to this transfer, storing or processing. Where data is transferred outside the EEA we will take all steps reasonably necessary to ensure that your data is treated securely and in accordance with our privacy policy.

    For more information view our full privacy policy here.