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Alogram Payment Fraud Blocker

Protect your Shopify store with AI-driven risk scoring, automated fulfillment holds, and real-time loss prevention metrics.

Connect Your Store

Enter your .myshopify.com domain to install the app.

What Alogram Protects

Stop the fraud that Shopify merchants actually deal with. Alogram Payment Fraud Blocker is designed for modern fraud and abuse patterns, including:

Chargebacks & Disputes

Friendly fraud, unauthorized use, and payment disputes handled automatically.

Refund & Return Abuse

Identify serial returners and item-not-received patterns before they impact margin.

Policy & Promo Manipulation

Stop coupon stacking and repeated “new customer” account abuse.

Account-Level Attacks

Detect bot signups and account takeover signals in real-time.

High-Risk Orders

Flag velocity anomalies and suspicious patterns across multiple sessions.

How Alogram Works

Alogram analyzes signals across the shopper journey and order context to produce a risk decision quickly.

Behavioral Signals

Unusual browsing patterns, rapid navigation, and abnormal checkout timing.

Device Context

Device fingerprinting, IP/geolocation anomalies, and network risk indicators.

Order Context

Cart composition, value anomalies, and shipping/billing mismatches.

Why It's Different

Fraud prevention shouldn't destroy conversion. Alogram focuses on high-precision detection to avoid unnecessary customer friction.

Fewer False Declines

Keep your good customers moving smoothly through checkout.

Fewer Chargebacks

Stop fraudulent orders before they turn into costly disputes.

Faster Resolution

Clear ambiguous orders quickly with AI-powered evidence.

AI vs Rules

Detect patterns instead of fixed conditions that attackers easily learn.

Human-in-the-Loop

AI handles the obvious cases, and humans review the uncertain ones. Automation without losing control.

Review Faster

Alogram flags only the orders that truly need a human eye, saving hours of manual labor.

Capture Edge Cases

Surface complex fraud patterns that automated models aren't fully confident about.

Continuous Feedback

Your decisions train the model, improving accuracy for your specific store over time.

Key Features

Shopify-native workflow built for merchant operations.

Risk Scoring

Prioritize what to review first based on depth of risk.

Automated Tagging

Instantly route risky orders into your internal processes.

Review-Ready Insights

Deep-dive into the “Why” behind every flagged order.

Configurable Thresholds

Choose how aggressive you want your automated detection to be.

Common Use Cases

“We're getting hit with friendly fraud and disputes.”

“Refunds are spiking from a small set of repeat customers.”

“Promo abuse is killing our margin.”

“We need to catch fraud before fulfillment, not after chargebacks.”

Frequently Asked Questions

How does AI detect fraud in real time on Shopify?

Alogram evaluates behavioral, device, location, and order context signals to score risk quickly so merchants can prevent losses before fulfillment.

Is AI fraud detection better than rules engines?

AI typically outperforms rules-only approaches because it detects patterns across many signals and adapts to new fraud behaviors without constant rule rewriting.

What is human-in-the-loop fraud prevention?

Human-in-the-loop combines AI automation with targeted human review for uncertain cases, improving accuracy while keeping merchant control.

Can AI stop refund and policy abuse?

Yes. Alogram is designed to detect repeat abuse patterns such as serial refunds/returns, promo manipulation, and suspicious customer behavior over time — not just stolen cards.

How do I reduce chargebacks in ecommerce?

Reduce chargebacks by preventing high-risk orders before fulfillment, tightening identity and behavior checks, using targeted review for ambiguous orders, and monitoring repeat dispute behavior.

What are modern fraud detection techniques?

Modern techniques combine behavioral analytics, device intelligence, anomaly detection, supervised ML risk scoring, and human-in-the-loop review workflows.

How does Alogram’s real-time model work?

The model processes multiple real-time signals to produce a risk score and confidence, enabling actions like tagging, review queuing, or merchant-defined workflows.

Why does frictionless fraud detection matter?

Over-blocking hurts revenue. Frictionless detection reduces fraud while protecting conversion by minimizing false positives and unnecessary steps for legitimate customers.