惯性聚合 高效追踪和阅读你感兴趣的博客、新闻、科技资讯
阅读原文 在惯性聚合中打开

推荐订阅源

C
Cisco Blogs
Schneier on Security
Schneier on Security
T
Tor Project blog
Threat Intelligence Blog | Flashpoint
Threat Intelligence Blog | Flashpoint
T
Tenable Blog
C
Cyber Attacks, Cyber Crime and Cyber Security
T
Threat Research - Cisco Blogs
C
CERT Recently Published Vulnerability Notes
Security Latest
Security Latest
Exploit-DB.com RSS Feed
Exploit-DB.com RSS Feed
NISL@THU
NISL@THU
L
Lohrmann on Cybersecurity
Scott Helme
Scott Helme
Webroot Blog
Webroot Blog
Project Zero
Project Zero
Google Online Security Blog
Google Online Security Blog
The Last Watchdog
The Last Watchdog
Spread Privacy
Spread Privacy
Hacker News: Ask HN
Hacker News: Ask HN
PCI Perspectives
PCI Perspectives
cs.CL updates on arXiv.org
cs.CL updates on arXiv.org
W
WeLiveSecurity
Attack and Defense Labs
Attack and Defense Labs
D
Darknet – Hacking Tools, Hacker News & Cyber Security
N
News | PayPal Newsroom
Help Net Security
Help Net Security
The Hacker News
The Hacker News
H
Heimdal Security Blog
O
OpenAI News
S
Security @ Cisco Blogs
N
News and Events Feed by Topic
Cyberwarzone
Cyberwarzone
Simon Willison's Weblog
Simon Willison's Weblog
G
GRAHAM CLULEY
www.infosecurity-magazine.com
www.infosecurity-magazine.com
博客园 - 叶小钗
K
KPMG report finds enterprise disconnect between AI and its ROI | CIO
Hacker News - Newest:
Hacker News - Newest: "LLM"
T
Tailwind CSS Blog
大猫的无限游戏
大猫的无限游戏
A
Arctic Wolf
I
Intezer
钛媒体:引领未来商业与生活新知
钛媒体:引领未来商业与生活新知
S
Security Affairs
P
Proofpoint News Feed
S
Secure Thoughts
腾讯CDC
Google DeepMind News
Google DeepMind News
量子位
罗磊的独立博客

Mastercard Dynamic Yield

Email, SMS and push done right: A marketing leader’s guide to channel selection How Valamar engages travelers earlier with real-time booking context Gartner Recognizes Mastercard Dynamic Yield as an 8‑Time Leader in Personalization Engines— Mastercard Dynamic Yield 2026 Personalization Maturity: Disruption Is Redefining E-Commerce Success Modern customer journey orchestration: Latest capabilities, best practices and omnichannel strategies — Mastercard Dynamic Yield Saks Fifth Avenue Elevated Luxury With AI Personalization 2025 Personalization Maturity Report for E-commerce - ES — Mastercard Dynamic Yield 2025 Personalization Maturity Report for E-commerce - PT — Mastercard Dynamic Yield How to Drive More Subscribers to Your Mailing List: Proven Strategies for MarketersMastercard Dynamic Yield Reconnect by Mastercard Dynamic Yield: Smarter Customer Journey Orchestration Send-Time Optimization — Mastercard Dynamic Yield Channel Prioritization — Mastercard Dynamic Yield Real-Time Adaptation and Dynamic Optimization — Mastercard Dynamic Yield Post-click Experiences — Mastercard Dynamic Yield Search Ranking Optimization — Mastercard Dynamic Yield Visual Search — Mastercard Dynamic Yield Semantic Search — Mastercard Dynamic Yield How Bergzeit Increased Conversions 3x with Conversational AI Email Deliverability Best Practices: Reach the Inbox. Deliver the Experience. The enterprise guide to IP warming: Boost deliverability, ensure compliance, and power seamless journeys Visual Search Meets Multimodal AI: A New Era of Product Discovery Where human ingenuity fits in the AI-driven marketing era Infographic: The state of personalization maturity in e-commerce - 2025 AI and Personalization Are Revolutionizing E-commerce Search Transform product discovery with Experience Search: AI that understands your shoppers AI Fuels New Demands for Personalization — Is E-Commerce Maturing Fast Enough? From Fragmentation to Connection: Mastering User Identification for Personalization — Mastercard Dynamic Yield 2026 Personalization Maturity Report for E-commerce - PDF — Mastercard Dynamic Yield Add To Cart Recommendation Modal — Mastercard Dynamic Yield Shoppable Video Notification — Mastercard Dynamic Yield Dynamic Yield by Mastercard Recognized as a Leader by Gartner® and Forrester Leroy Merlin Gains 32% Purchases with ML Recommendations Conversational Commerce: Your Guide to This Market-Shifting Technology Your Global Test Could Be Limiting Your Personalization Growth — Mastercard Dynamic Yield Personalize with Empathy to Meet Evolving Customer Needs The Resource Constraints Blocking Banks’ Personalization Gain Steering by Data: How to Avoid Assumptions and Motivate Your Team — Mastercard Dynamic Yield AI and personalization can close the empathy gap between brands and their customers A Leader in the Gartner Magic Quadrant for Personalization - Dynamic Yield Black Friday Is Coming—Is Your Personalization Strategy Airtight? Personalization Blueprint Survey - Dynamic Yield by Mastercard How Personalization Fuels Success in Latin America's Digital Boom Signet Jewelers Sees 88% Conversion Lift from Personalization Solving Data Issues for Financial Services with Personalization — Mastercard Dynamic Yield How to Executive Reporting Can Help You Grow Your Personalization Program Breaking the personalization barrier for banks Bring the personal back to shopping this holiday season​ with Shopping Muse Dynamic Yield makes Personalization a Breeze for Issuer Dynamic Yield by Mastercard Is Making Personalization a Breeze for Banks How to Deliver a Less Frustrating Online Shopping Experience VIDEO: Banking's Personalization Revolution: Data-Driven Transformation Bunnings' Buyer Center Casas Bahia's Buyer Center Magalu's Buyer Center Carrefour's Buyer Center 3 Tips to Integrate GenerativeAI into Your Personalization Workflow — Mastercard Dynamic Yield TUI Cruises Sees 10.3% Uplift in Add to Cart from Personalization The Revenue Gains From Personalization That FIs Can’t Ignore Calling All UK Banks: Personalisation Is Crucial to Meeting the New Consumer Duty Mandate What Marketers Miss in the GenAI Discussion vidaXL's Buyer Center The 2 Breakthrough Technologies Driving Smarter Product Recommendations Fashion Retailers: Your Product Feed Needs Spring Cleaning, Too — Mastercard Dynamic Yield Tommy Hilfiger's Buyer Center G-Star Raw's Buyer Center Hunkemöller's Buyer Center Here's Why Your Customers Are Tuning You Out Intersport's Buyer Center How AI Is Ushering in the Future of Interactive Commerce Mastering Channel Prioritization: How to Optimize Re-Engagement with a Winning Strategy Clark's Buyer Center Optimized messaging for purchase completion Affinity-powered triggered messages - personalization use cases Anticipate customer's next best item - personalization use cases Charlotte Tilbury's Buyer Center Rituals' Buyer Center The Dynamic Duo of A/B Testing and Personalization Müller's Buyer Center Next's Buyer Center La Redoute's Buyer Center Why Gen Z Craves Personalized Restaurant Experiences The human advantage in the age of AI and personalization Sky Personalizes Subscription Management for Millions On Leverages Personalization to Build Community Build-A-Bear Workshop's Buyer Center Oak Furnitureland's Buyer Center Coach's Buyer Center The Perfect Match: Marry Your CMS and Personalization Systems for Customer Love 4 Signs You Need to Move Beyond Your ESP's Email Personalization Functionality Sainsbury's, meet Dynamic Yield Charles Tyrwhitt's Buyer Center Burberry's Buyer Center Personalization in QSR: The Possibilities You Didn’t Know Existed The State of Personalization Maturity in Grocery/CPG Chanel's Buyer Center Swarovski's Buyer Center Building the Right It: How “Pretotyping” Guides Product Decisions with Concrete Data The Power of a Primary Audience Strategy for Financial Services Similarity Badge — Mastercard Dynamic Yield How Deep Learning is Adding Predictive Personalization Prowess to User Affinity Profiling
Machine Learning Based Optimization vs. A/B Testing — Dynamic Yield
2018-04-02 · via Mastercard Dynamic Yield

Read the full transcript

As a data-driven company, we are obsessed with A/B testing. We A/B test every single thing we do. However, it is important to acknowledge the limitations of A/B testing.

First of all, if you’re just A/B testing for all your audience at the same time, you’re basically optimizing for the quote-on-quote average user, but what is the average user? You have your frequent shoppers.

You have first-time visitors. You have people who came from a Google campaign. You have people who came through your app.

So, we tie A/B testing technology very closely to segmentation’s strategy. But there is a limit to how many segments you can manage as a human being before it becomes too complicated and this why we introduced automated optimization. Which basically means that we’re using ad serving like techniques for changing the onsite experience.

So, what our customers do today is, instead of just doing an A/B test of five different banners or five different call-to-actions, they just create all these variations and they upload them to Dynamic Yield and we make a real-time machine learning-based decision on what variation to show each individual user based on all the data we have on that individual whether it’s first-party data or third-party data.

The other big advantage of optimization versus A/B testing is the duration of the test. When it comes to running, experimenting with real-time events for a holiday or you have like back-to-school. Instead of doing an A/B test, they go for automated optimization. And this is where the machine learning algorithms kick in and they start predicting for each individual user what we should show them in order to maximize revenue.

And then we keep a control group and after the holiday is over, you can see, oh my optimization mechanism has generated 10% more than my control group which was the variation I had before I started the test. So, the idea of using machine learning and real-time optimization versus A/B testing is very important for anything that is short-lived.

It’s no secret that human intuition is naturally subject to ego and bias, which is why marketers adopted the scientific method of A/B testing for evaluating and serving experiences instead of relying on gut-based decisions that produce subpar results and quickly diminishing returns.

As a data-driven company, we are obsessed with A/B testing — that’s why we’ve baked experimentation and into all areas of our omnichannel personalization platform. We also A/B test every single thing we do as a company.  

However, it is important to acknowledge the limitations of A/B testing.

Let’s start with A/B testing for your entire audience…

The Problem with the Average User

First of all, who is the average user?

There are so many different types of users or segments who interact with your brand, like:

  • Frequent shoppers
  • First-time visitors
  • Visitors from a Google campaign
  • Visitors who came through your app

Not to mention, only a small portion of these folks will end up responsible for actually contributing to a business in meaningful ways. Therefore, marketers can no longer optimize according to how they think the ‘average visitor’ is going to interact with their site, or even how a large segment of users will.

So, A/B testing technology needs to become very closely tied to segmentation strategies in order to optimize for conversions from the high-impact audiences who contribute most to a site’s KPIs.

But properly executed segmentation for true personalization is a tedious and data-heavy task requiring numerous test deployments with conclusive results, analyzed data, and measurement of every tested variation against each audience segment in order to determine optimal programmatic targeting rules for an experience.

Leading to another human shortcoming within A/B testing.

The Problem with Winner Takes All

No matter how mathematical an individual’s brain, there will always be a limit to how many segments can be managed before becoming too complicated. Especially when factoring in contextual data such as user activity, affinities, geography, etc. And with a host of permutations and combinations, picking a winning variation in the face of a constantly changing customer base becomes impossible.

So, while A/B testing might be a relatively easy-to-execute practice, most marketers will continue to faithfully serve a “winner takes all” approach in absence of being able to handle the heavy-duty analysis required despite knowing it will compromise the experience for a portion of their visitors.

Power True Personalization with AI-Driven Targeting
Automatically deliver the right experience to the right user at the right time

This strategy quickly dismantles an effective personalization program (even at the customer segment level) and leaves money on the table for any business looking to take their marketing to a 1:1 level.

And this is exactly why automated optimization is necessary.

Machine Learnings Pwns

By using ad serving-like techniques for changing the on-site experience, instead of doing an A/B test of five different banners or five different call-to-actions, marketers can create all the variations they need and let a real-time machine learning engine do the work. Using algorithms that constantly collect all user data and signals, the best variation can then be delivered to each individual user, regardless of where they arrive from, what device they are using, and so on.

In addition to ridding the marketer of infinite tedious data analysis, the other big advantage of optimization through machine learning versus A/B testing is the duration of the test and associated impact on revenue generated.

For instance, when it comes to experimenting with short-lived events for say, a holiday or back-to-school event, instead of running an A/B test and trying to optimize on the fly, machine learning algorithms are able to predict positive outcomes for each individual and thus maximize revenue over the duration of the entire campaign. Upon completion, marketers can compare the optimization mechanism against the control group and then validate their results.

The key to personalizing experiences that influence action is to treat each outcome as unique and dynamically respond to each customer individually, a feat which can only be scaled with machine learning.