PaymentsJournal
No Result
View All Result
SIGN UP
  • Commercial
  • Credit
  • Debit
  • Digital Assets & Crypto
  • Digital Banking
  • Emerging Payments
  • Fraud & Security
  • Merchant
  • Prepaid
PaymentsJournal
  • Commercial
  • Credit
  • Debit
  • Digital Assets & Crypto
  • Digital Banking
  • Emerging Payments
  • Fraud & Security
  • Merchant
  • Prepaid
No Result
View All Result
PaymentsJournal
No Result
View All Result

The 5 Ws of Artificial Intelligence Training Data:

By PaymentsJournal
October 14, 2020
in Artificial Intelligence, Emerging Payments, Truth In Data
0
0
SHARES
0
VIEWS
Share on FacebookShare on TwitterShare on LinkedIn

Don’t miss another episode of Truth In Data! Click on the red bell in the lower-left corner of your screen to receive notifications as soon as the episode publishes.

Data for today’s episode is provided by Mercator Advisory Group’s report – Tracking Mistakes in AI: Using Vigilance to Avoid Errors

The 5 Ws of Artificial Intelligence Training Data:

  • WHO: Who supplied the data? Who is the data demographically?
  • WHAT: What are the access rights? What is the data structure?
  • WHEN: When was the data collected? When does the data expire?
  • WHERE: Where was the data collected geographically? Where is the general study area?
  • WHY: Why was the data collected? Why are any values missing?
  • HOW: How was the data collected and created? How is the data related to other data?

About Report

AI models reflect existing biases if these biases are not explicitly eliminated by the data scientists developing the systems. Constant monitoring of the entire operation is required to detect these shifts. The remedy for such lack of focus is training.

Mercator Advisory Group’s latest research Report, Tracking Mistakes in AI: Use Vigilance to Avoid Errors, discusses modes in which data models can deliver biased results, and the ways and means by which financial institutions (FIs) can correct for these biases.

“AI solutions can unwittingly go astray,” comments Tim Sloane, the Report’s author and director of Mercator Advisory Group’s Emerging Technology Advisory Service and its VP Payments Innovation. “Applying AI to issues that can have large negative social consequences should be avoided. One example of this is using AI to implement the business plan of social networks Facebook, You Tube, and others, as presented in the documentary “The Social Dilemma.” The documentary contends that social networks have optimized AI to drive advertising revenue at the expense of the individual and society. To drive revenue, social networks build psychographic models for each user to predict exactly which content will best engage that user.”

0
SHARES
0
VIEWS
Share on FacebookShare on TwitterShare on LinkedIn
Tags: AIArtificial IntelligenceDataData ManagementTruth In Data

    Get the Latest News and Insights Delivered Daily

    Subscribe to the PaymentsJournal Newsletter for exclusive insight and data from Javelin Strategy & Research analysts and industry professionals.

    Must Reads

    gift card strategy

    The Gift Card Shift: From Convenience to Core Shopping Strategy

    February 18, 2026
    Tina Shirley

    From Cross-Border Payments to Community Banks: The Future of Zelle®

    February 17, 2026
    Startups: Fintechs Data Streaming Technology in Banking, corporates Enriched Data vs Faster Payments

    Fighting Fraud in the Era of Faster Payments

    February 13, 2026
    cross-border payments

    Solving for Fraud in Cross-Border Payments Requires Better Counterparty Verification

    February 12, 2026
    agentic commerce

    Demystifying the Agentic Commerce Enigma

    February 11, 2026
    payment gateways

    How Payment Gateways for Businesses Can Help You Offer Your Customers More Options

    February 10, 2026
    Reserve Bank of India (RBI) Extends Mandate for Tokenization to June '22

    Late Payments? Governments Are Taking Action

    February 9, 2026
    ai phishing

    The Fraud Epidemic Is Testing the Limits of Cybersecurity

    February 6, 2026

    Linkedin-in X-twitter
    • Commercial
    • Credit
    • Debit
    • Digital Assets & Crypto
    • Digital Banking
    • Commercial
    • Credit
    • Debit
    • Digital Assets & Crypto
    • Digital Banking
    • Emerging Payments
    • Fraud & Security
    • Merchant
    • Prepaid
    • Emerging Payments
    • Fraud & Security
    • Merchant
    • Prepaid
    • About Us
    • Advertise With Us
    • Sign Up for Our Newsletter
    • About Us
    • Advertise With Us
    • Sign Up for Our Newsletter

    ©2024 PaymentsJournal.com |  Terms of Use | Privacy Policy

    • Commercial Payments
    • Credit
    • Debit
    • Digital Assets & Crypto
    • Emerging Payments
    • Fraud & Security
    • Merchant
    • Prepaid
    No Result
    View All Result