Listen "AI underwriting compared to Human underwriting "
Episode Synopsis
Speed & EfficiencyAI Underwriting:Processes applications in seconds to minutes.1.Can instantly pull data from multiple sources (credit reports, bank statements, income verification, property valuations, etc.).Ideal for high-volume, standardized cases.Human Underwriter:Takes hours to days, depending on complexity.Manually reviews documents, contacts third parties, and applies professional judgment.Slower, especially for complex or edge cases.2. Data HandlingAI:Uses algorithms and machine learning to analyze massive datasets.Can detect patterns humans might miss (e.g., spending behavior, alternative data like utility payments, even digital footprints in some markets).Human:Relies on traditional documentation (pay stubs, tax returns, appraisals).Limited by human bandwidth—can’t process as much raw data at once.3. Consistency & BiasAI:Decisions are consistent with its rules and training data.However, if the data it’s trained on is biased, the system can replicate or even amplify those biases.Human:Brings subjective judgment. Can weigh special circumstances that don’t fit a neat rule.Risk of inconsistency—two underwriters might interpret the same file differently.May have unconscious bias, but also flexibility to override rigid criteria.4. Risk AssessmentAI:Excels at quantifiable risks (credit scores, loan-to-value ratios, historical claim data).Weak at unstructured or nuanced factors (e.g., a borrower with an unusual income stream, or a claim with unclear circumstances).Human:Strong at contextual judgment—understanding unique borrower situations, exceptions, or “gray areas.”Can pick up on red flags that an algorithm might miss (e.g., forged documents, conflicting information).5. Regulation & AccountabilityAI:Regulators are still catching up. Requires transparency in decision-making (explainable AI).Hard to appeal an AI decision if it can’t explain its reasoning clearly.Human:Provides a clear chain of accountability—borrower can request explanations or escalate.Easier for compliance teams to audit decision-making.6. Cost & ScalabilityAI:Scales cheaply—one system can process thousands of applications simultaneously.Lower ongoing labor costs once implemented.Human:Labor-intensive, costs grow with volume.Better suited for complex, high-value, or unusual cases rather than mass processing.✅ Bottom line:AI underwriting is best for speed, scale, and straightforward cases.Human underwriters are best for nuanced judgment, exceptions, and handling edge cases.Most modern institutions use a hybrid model: AI handles the bulk of simple files, while humans step in for complex or flagged cases.tune in and learn https://www.ddamortgage.com/blogdidier malagies nmls#212566dda mortgage nmls#324329 Support the show
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