The Science Behind MAIA's Fraud Detection
Financial fraud is becoming increasingly sophisticated. Traditional rule-based systems catch obvious violations but miss the subtle patterns that indicate complex fraud schemes. MAIA employs a fundamentally different approach - combining multiple AI methodologies to create detection capabilities that adapt and improve with every investigation.
Our neurosymbolic architecture doesn't just flag anomalies; it understands financial relationships, traces transaction flows across systems, and provides the explainable reasoning that forensic accountants need for court presentations and regulatory submissions.
Behavioral Analysis
MAIA builds behavioral profiles for every entity in your financial ecosystem - employees, vendors, customers, and accounts. By understanding normal patterns, the system instantly recognizes when behavior deviates in ways that indicate potential fraud.
Temporal Pattern Recognition
Detects unusual timing of transactions, after-hours activity, and deadline manipulation
Relationship Mapping
Identifies hidden connections between entities that may indicate collusion
Velocity Analysis
Flags sudden changes in transaction frequency or amounts
Lifestyle Inconsistencies
Correlates financial activity with expected behavioral patterns
Statistical Anomaly Detection
Using advanced statistical models, MAIA identifies transactions and patterns that deviate from expected distributions. This methodology excels at detecting fraud that hides within normal-looking activity.
Benford's Law Analysis
Detects manipulated numbers through digit frequency analysis
Outlier Detection
Identifies transactions outside normal statistical bounds
Ratio Analysis
Monitors financial ratios for signs of manipulation
Trend Deviation
Flags unexpected departures from historical patterns
Network & Link Analysis
Fraud rarely happens in isolation. MAIA maps relationships between all entities in your data, revealing hidden networks, shell company structures, and collusion patterns that point-in-time analysis would miss.
Entity Resolution
Identifies same entities operating under multiple identities
Fund Flow Tracing
Follows money through complex transaction chains
Collusion Detection
Reveals coordinated activity between supposedly independent parties
Shell Company Detection
Identifies entities with fraud-indicative characteristics
Document & Text Analysis
MAIA analyzes unstructured data - invoices, contracts, emails, and supporting documents - to identify inconsistencies, altered documents, and suspicious language patterns that indicate fraud.
Document Matching
Identifies duplicate or altered documents across systems
Metadata Analysis
Examines creation dates, modifications, and authorship
Sentiment Analysis
Detects language patterns associated with deception
Cross-Reference Validation
Verifies document details against transaction records
Types of Fraud MAIA Detects
Embezzlement & Asset Misappropriation
Unauthorized fund transfers, personal use of company assets, ghost employees, and skimming schemes
Financial Statement Fraud
Revenue manipulation, expense understatement, improper asset valuation, and fraudulent disclosures
Procurement & Vendor Fraud
Kickbacks, bid rigging, shell company invoicing, and overbilling schemes
Expense Reimbursement Fraud
Fictitious expenses, inflated claims, duplicate submissions, and policy violations
Money Laundering
Structuring, layering transactions, round-dollar amounts, and suspicious fund movements
Payroll Fraud
Ghost employees, unauthorized overtime, bonus manipulation, and timecard fraud
Insurance & Claims Fraud
Staged losses, inflated claims, duplicate submissions, and fraud rings
Tax & Regulatory Fraud
Tax evasion schemes, false deductions, unreported income, and compliance violations
Continuous Learning Architecture
Unlike static rule-based systems, MAIA's detection capabilities evolve. Every investigation enriches the system's institutional memory, enabling increasingly sophisticated fraud identification.
How MAIA Learns
Pattern Library Expansion: When MAIA identifies new fraud patterns in your investigations, these patterns become part of its detection arsenal - not just for your practice, but anonymized and generalized across all implementations.
False Positive Reduction: As forensic accountants review flagged items and provide feedback, MAIA refines its models to reduce noise while maintaining detection sensitivity for actual fraud.
Industry-Specific Adaptation: MAIA learns the unique characteristics of different industries, adjusting detection thresholds and patterns for healthcare, financial services, manufacturing, retail, and other sectors.
See MAIA's Detection Methods in Action
Schedule a demonstration with your actual data to experience how MAIA transforms forensic accounting investigations.
Request Demo