AI Pattern Detection - Disclosurely AI Features

Detect patterns across reports, identify emerging trends, recognize related incidents, network analysis, and automated pattern alerts for whistleblowing.

Pattern Detection

AI-powered pattern detection analyzes your organization's whistleblowing reports to identify trends, recurring issues, related incidents, and systemic problems that might not be obvious from individual cases. This powerful feature helps investigators spot serial offenders, emerging risks, and organizational vulnerabilities before they escalate.

What is AI Pattern Detection?

Disclosurely's Pattern Detection engine continuously analyzes all cases in your organization to identify meaningful patterns, connections, and trends. By examining similarities across allegations, subjects, departments, timeframes, and outcomes, the AI reveals insights that would take months of manual analysis to uncover.

Key Capabilities:

  • Similar Case Detection: Find reports with related allegations, subjects, or circumstances
  • Trend Identification: Spot emerging issues before they become widespread problems
  • Serial Offender Recognition: Identify individuals with multiple complaints over time
  • Department Risk Mapping: Highlight departments with recurring misconduct
  • Network Analysis: Discover connections between people, departments, and incidents
  • Temporal Pattern Analysis: Detect cyclical or time-based patterns in misconduct
  • Automated Alerts: Receive notifications when patterns reach significance thresholds

How AI Pattern Detection Works

Intelligent Analysis Engine

The AI examines multiple dimensions simultaneously to identify patterns:

  1. Data Collection: Analyzes all historical and current cases (with proper access controls)
  2. Feature Extraction: Identifies key characteristics of each case (type, people, department, severity, etc.)
  3. Similarity Matching: Compares cases across multiple dimensions using advanced algorithms
  4. Pattern Recognition: Identifies statistically significant patterns and trends
  5. Confidence Scoring: Assigns confidence levels to detected patterns (High, Medium, Low)
  6. Alert Generation: Notifies investigators when significant patterns emerge
  7. Continuous Learning: Refines pattern detection as more cases are processed

Pattern Analysis Dimensions

The AI analyzes patterns across 15+ dimensions:

People-Based Patterns:

  • Multiple reports about the same individual (serial offender)
  • Repeated complainants (may indicate retaliation or ongoing issue)
  • Common witnesses across cases
  • Supervisory chain patterns
  • Department or team patterns

Allegation-Based Patterns:

  • Similar misconduct types
  • Escalating severity of related allegations
  • Common policy violations
  • Related compliance issues
  • Similar evidence types

Location-Based Patterns:

  • Department or team clustering
  • Geographic location patterns
  • Remote vs. on-site patterns
  • Cross-departmental patterns

Temporal Patterns:

  • Time-of-year seasonality
  • Day-of-week patterns
  • Incident timing clusters
  • Investigation duration patterns
  • Cyclical reporting patterns

Outcome Patterns:

  • Similar investigation outcomes
  • Common recommended actions
  • Policy change triggers
  • Substantiation rates by type
  • Resolution effectiveness

Key Features

1. Similar Case Detection

Automatically identify cases related to the current investigation.

When Viewing a Case:

  • AI displays "Similar Cases" panel
  • Shows cases ranked by similarity (0-100% match)
  • Explains why cases are similar
  • Links to related investigations
  • Suggests pattern investigation approach

Example:

SIMILAR CASES DETECTED

Current Case: WB-2024-0342 (Harassment by Manager Sarah J.)
Similarity Threshold: 65%+

CASE #1: WB-2023-0189 (Similarity: 87%)
Type: Workplace Harassment
Subject: Sarah J. (same person)
Date: 6 months ago
Outcome: Verbal warning, management training
Key Similarity: Same subject, similar harassment allegations

CASE #2: WB-2023-0421 (Similarity: 72%)
Type: Hostile Work Environment
Subject: Sarah J. (same person)
Date: 1 year ago
Outcome: Coaching provided
Key Similarity: Same subject, related behavioral issues

CASE #3: WB-2024-0198 (Similarity: 68%)
Type: Management Misconduct
Subject: Different manager in same department
Date: 2 months ago
Outcome: In progress
Key Similarity: Same department, similar management issues

PATTERN ALERT: Serial Offender
Subject Sarah J. has 3 reports in 18 months. Previous interventions
(training, coaching) have not resolved behavior. Consider escalation.

2. Trend Analysis

Identify emerging issues before they become widespread problems.

Trend Types Detected:

Volume Trends:

  • Increasing reports of specific misconduct types
  • Department-specific report volume changes
  • Seasonal variations in reporting
  • Post-intervention trend changes

Severity Trends:

  • Escalating seriousness of similar allegations
  • Risk score trends over time
  • Investigation complexity increasing
  • Impact severity patterns

Behavioral Trends:

  • New types of misconduct emerging
  • Policy violation frequency changes
  • Compliance issue increases
  • Cultural indicators

Effectiveness Trends:

  • Investigation outcome patterns
  • Intervention effectiveness
  • Policy change impact
  • Training effectiveness indicators

Access Trends:

  1. Dashboard > Analytics > Trends
  2. View trend charts and graphs
  3. Filter by timeframe, department, type
  4. Export trend reports
  5. Set trend-based alerts

Example Trend Alert:

TREND ALERT: Emerging Pattern Detected

TREND: Discrimination Complaints Increasing in Engineering Department

Data Points:
• Q1 2024: 2 reports
• Q2 2024: 5 reports (150% increase)
• Q3 2024: 8 reports (60% increase)
• Q4 2024 (partial): 6 reports (projected 12 for full quarter)

Pattern Details:
• All reports from Engineering department
• 70% involve age or disability discrimination
• Multiple subjects (not single serial offender)
• Common themes: Promotion decisions, project assignments
• Substantiation rate: 60% (above organizational average of 40%)

Risk Assessment:
• Risk Level: HIGH
• Potential systemic discrimination issue
• Legal exposure significant
• Reputational risk if pattern continues
• May indicate cultural or policy problem

Recommended Actions:
1. Conduct department-wide culture assessment
2. Review recent promotion and assignment decisions for bias
3. Enhance manager training on discrimination prevention
4. Consider external expert review
5. Implement enhanced monitoring for Engineering department
6. Review hiring and promotion policies

3. Serial Offender Identification

Automatically flag individuals with multiple complaints.

Serial Offender Criteria:

  • Multiple reports about same person (configurable threshold: 2+, 3+, etc.)
  • Timeframe analysis (e.g., 3 reports in 12 months vs. 3 reports in 5 years)
  • Severity consideration (multiple serious allegations vs. minor issues)
  • Outcome patterns (repeat after interventions vs. first-time substantiated)
  • Escalation tracking (are allegations becoming more serious?)

Alert Trigger: When a new report is filed about someone with previous complaints, the AI immediately alerts investigators:

SERIAL OFFENDER ALERT

New Report: WB-2024-0456
Subject: Michael T., Senior Manager

PREVIOUS REPORTS:
• WB-2023-0234 (8 months ago): Bullying - SUBSTANTIATED
  Outcome: Written warning, coaching
• WB-2023-0712 (4 months ago): Retaliation - SUBSTANTIATED
  Outcome: Final written warning, management training
• WB-2024-0456 (NEW): Harassment - Under Investigation

PATTERN ASSESSMENT:
• 3 reports in 10 months
• 100% substantiation rate on closed cases
• Progressive discipline applied
• Behavior worsening despite interventions
• Multiple complainants (no repeat reporters)

RISK LEVEL: CRITICAL
• Serial offender pattern confirmed
• Previous interventions ineffective
• Legal liability high
• Termination recommended if substantiated

RECOMMENDED IMMEDIATE ACTIONS:
1. Expedite investigation (treat as urgent)
2. Consider interim suspension
3. Engage legal counsel
4. Review all previous cases for pattern
5. Prepare for potential termination
6. Monitor for additional complaints from others

4. Department Risk Mapping

Visualize which departments have recurring compliance issues.

Department Analysis Metrics:

  • Report volume by department (per 100 employees)
  • Substantiation rates by department
  • Severity of issues by department
  • Types of misconduct by department
  • Investigation durations by department
  • Policy violations by department

Visual Risk Heat Map:

DEPARTMENT RISK HEAT MAP (Last 12 Months)

Department          Reports  Risk Score  Primary Issues
------------------------------------------------------------
Engineering         24       HIGH ██████  Discrimination, Harassment
Sales               18       MEDIUM ████  Fraud, Expense Abuse
Operations          12       MEDIUM ████  Safety Violations
Finance             8        LOW ██      Confidentiality Breaches
HR                  6        LOW ██      Policy Violations
Marketing           4        LOW █       Minor Issues

Drill-Down Analysis:

  • Click any department for detailed breakdown
  • View specific cases within department
  • Identify common subjects or patterns
  • Compare to organizational benchmarks
  • Track improvement over time

Actionable Insights:

DEPARTMENT INSIGHT: Engineering Department

Risk Level: HIGH (24 reports, risk score 78/100)

Key Findings:
• 70% higher report rate than organizational average
• Discrimination complaints 3x higher than other departments
• 2 serial offenders identified
• Manager training completion: 65% (below 90% target)
• Recent policy changes not yet effective

Root Cause Hypothesis:
• Rapid growth (50% headcount increase in 2 years)
• Many new managers promoted without training
• Competitive culture may contribute to discrimination
• Work-from-home transition challenges

Recommended Actions:
1. Mandatory manager training for all Engineering leaders
2. Culture assessment by external consultant
3. Review promotion and compensation practices
4. Enhance new hire onboarding for culture fit
5. Implement 360-degree feedback for managers
6. Monthly compliance check-ins with Engineering leadership

5. Network Analysis

Discover hidden connections between people, departments, and incidents.

Network Analysis Reveals:

  • Common supervisors across multiple cases
  • Interconnected groups of complainants
  • Departments with cross-functional issues
  • Reporting patterns (e.g., reports often go through specific channels)
  • Witness networks and credibility patterns

Visual Network Graph: Shows connections between:

  • Subjects of multiple complaints
  • Departments with related issues
  • Common witnesses
  • Shared supervisors
  • Related case clusters

Example Network Pattern:

NETWORK PATTERN DETECTED

Central Figure: David L., Executive Vice President

Connected Cases: 8 reports in 12 months

Network Analysis:
• David L. is direct or indirect supervisor in 8 recent cases
• 5 of 8 cases involve his direct reports as subjects
• 3 of 8 cases involve whistleblowers reporting to him
• 2 cases name him as witness to misconduct
• 60% of cases in his division vs. 20% in other divisions

Pattern Assessment:
This network pattern suggests either:
1. Toxic culture in David L.'s division
2. David L. is aware of but not addressing misconduct
3. David L. may be contributing to problematic environment
4. His division has particularly strong speak-up culture (positive)

Recommended Investigation:
• Review David L.'s knowledge of and response to prior reports
• Interview current and former employees in his division
• Assess divisional culture independently
• Review his performance management of problem employees
• Consider whether he should recuse from future investigations

6. Temporal Pattern Analysis

Identify time-based patterns in misconduct and reporting.

Time Patterns Detected:

Seasonal Patterns:

  • Year-end expense fraud increases (bonus season)
  • Q4 discrimination complaints (promotion cycle)
  • Summer harassment reports (office social events)

Cyclical Patterns:

  • Weekly patterns (Monday reports higher - weekend reflection)
  • Monthly patterns (end-of-month financial misconduct)
  • Annual patterns (performance review season)

Event-Triggered Patterns:

  • Post-reorganization complaints spike
  • After layoff announcements
  • Following policy changes
  • Training session aftermath (increased awareness)

Example Temporal Alert:

TEMPORAL PATTERN ALERT

Pattern: Expense Fraud Reports Peak in January

Historical Data (Last 3 Years):
• January average: 12 expense fraud reports/month
• Other months average: 3 expense fraud reports/month
• Pattern: 4x increase every January
• Timing: Reports submitted in January for December expenses

Hypothesis:
• Year-end bonus and vacation spending leads to cash flow issues
• Personal expenses mistakenly (or intentionally) claimed as business
• Rushed year-end expense processing reduces scrutiny
• Year-end audit preparation prompts discovery of fraud

Preventive Actions:
• Increase expense audit sampling in December
• Send fraud prevention reminder in November
• Enhanced approval scrutiny for December expenses
• Finance team training on fraud red flags before year-end
• Consider delaying expense reimbursement for high-risk claims

Expected Impact:
• 50% reduction in January fraud reports
• Earlier detection of year-end fraud attempts
• Deterrent effect from increased scrutiny

7. Automated Pattern Alerts

Receive real-time notifications when significant patterns emerge.

Alert Types:

Threshold Alerts:

  • Serial offender (2nd, 3rd, or more report about individual)
  • Department risk threshold exceeded
  • Trend velocity alert (rapid increase in issue)
  • Severity escalation (similar cases becoming more serious)

Anomaly Alerts:

  • Unusual spike in reports
  • New type of misconduct appearing
  • Department dramatically above baseline
  • Investigation durations lengthening

Compliance Alerts:

  • Pattern suggests regulatory violation
  • Systemic issue requiring reporting
  • Policy inadequacy identified
  • Training effectiveness concerns

Configure Alerts:

  1. Dashboard > Settings > Pattern Alerts
  2. Set thresholds for each alert type
  3. Choose notification method (email, dashboard, SMS)
  4. Assign alert recipients by role
  5. Set alert frequency (immediate, daily digest, weekly)

Example Alert Configuration:

Pattern Alert Configuration

Serial Offender Alert:
✅ Enabled
Threshold: 2 or more substantiated reports in 12 months
Recipients: Compliance Officer, HR Director
Notification: Immediate email + dashboard alert

Trend Alert:
✅ Enabled
Threshold: 50% increase in specific issue type over previous quarter
Recipients: Compliance Team
Notification: Weekly digest

Department Risk Alert:
✅ Enabled
Threshold: Department risk score exceeds 70/100
Recipients: Department Head, HR Business Partner, Compliance Officer
Notification: Immediate email

Network Pattern Alert:
✅ Enabled
Threshold: 5+ cases connected to single individual (as subject, supervisor, or witness)
Recipients: Chief Compliance Officer
Notification: Immediate email + dashboard alert

Privacy and Security

Data Access Controls

Pattern Detection Respects Permissions:

  • AI only analyzes cases the user has permission to view
  • Cross-organizational patterns not visible (multi-tenant isolation)
  • Confidential information protected in pattern reports
  • Anonymous reporter identities never included in patterns

GDPR and Privacy Compliance

Privacy by Design:

  • Pattern analysis uses pseudonymized data where possible
  • Personal data minimized in pattern reports
  • Purpose limitation: Patterns used only for compliance and risk management
  • Data subjects can request pattern data deletion (subject to legal retention)
  • See GDPR Compliance for full details

Bias Prevention

Avoiding Algorithmic Bias:

  • AI does not profile based on protected characteristics
  • Patterns based on behavior and incidents, not demographics
  • Regular bias audits of pattern detection algorithm
  • Human oversight required for pattern-based decisions
  • Investigators can contest or override pattern assessments

Configuration and Setup

Enabling Pattern Detection

Prerequisites:

  • Enterprise or Pro plan
  • At least 20 historical cases (for meaningful pattern detection)
  • AI features enabled
  • Proper data retention policies configured

Setup Steps:

  1. Enable Pattern Detection

    • Dashboard > Settings > AI Features
    • Toggle "Pattern Detection" to ON
    • Agree to terms of use
  2. Configure Detection Sensitivity

    • High: Detects more patterns (may include false positives)
    • Medium: Balanced approach (recommended)
    • Low: Only strong, clear patterns
  3. Set Alert Thresholds

    • Define what constitutes "serial offender"
    • Set department risk score thresholds
    • Configure trend velocity alerts
    • Set network pattern complexity thresholds
  4. Assign Alert Recipients

    • Compliance officer
    • HR leadership
    • Legal team
    • Department heads (for their departments)
  5. Configure Privacy Settings

    • Anonymize subjects in department-level patterns
    • Set visibility restrictions by role
    • Configure data retention for pattern reports

Best Practices

Do's: ✅ Investigate Patterns: Don't ignore pattern alerts - they indicate real risk ✅ Combine with Human Judgment: Patterns inform, not determine, decisions ✅ Act on Systemic Issues: Use patterns to identify root causes and fix them ✅ Monitor Effectiveness: Track whether interventions reduce patterns ✅ Share Appropriately: Brief leadership on significant patterns ✅ Update Regularly: Review pattern settings quarterly

Don'ts: ❌ Don't Profile Individuals: Use patterns to assess behavior, not predict misconduct ❌ Don't Ignore Context: Patterns need investigation, not automatic action ❌ Don't Violate Privacy: Respect confidentiality even when patterns detected ❌ Don't Dismiss Outliers: Individual cases matter even without patterns ❌ Don't Over-React: Correlation doesn't always mean causation

Integration with Other AI Features

Pattern Detection + Risk Assessment

AI Risk Assessment uses pattern data to adjust risk scores:

  • Cases involving serial offenders: +20% risk score
  • Cases in high-risk departments: +10% risk score
  • Cases matching concerning trends: +15% risk score
  • Pattern-based prioritization recommendations

Pattern Detection + Case Helper

AI Case Helper leverages patterns in its recommendations:

  • "This subject has 2 prior substantiated complaints"
  • "Similar cases resolved with X outcome"
  • "Department has pattern requiring systemic intervention"
  • "Consider whether this is isolated or part of larger issue"

Pattern Detection + Content Generation

AI Content Generation incorporates pattern insights:

  • Investigation reports mention relevant patterns
  • Policy recommendations address systemic issues
  • Executive summaries highlight trend concerns
  • Communications reference pattern context where appropriate

Reporting and Analytics

Pattern Analytics Dashboard

Access Pattern Insights:

  1. Dashboard > Analytics > Patterns
  2. View all detected patterns
  3. Filter by pattern type, confidence, date range
  4. Drill down into specific patterns
  5. Export pattern reports

Key Metrics:

  • Total patterns detected (by type)
  • Pattern confidence distribution
  • Serial offenders identified
  • High-risk departments
  • Trending issues
  • Pattern resolution rate

Executive Pattern Reports

Generate comprehensive pattern reports for leadership:

Board-Level Pattern Report:

  • High-level organizational risk patterns
  • Year-over-year trend analysis
  • Department comparison
  • Effectiveness of interventions
  • Emerging risks
  • Recommendations

Export Formats:

  • PDF (formatted for presentation)
  • PowerPoint (slides for board deck)
  • CSV (data for further analysis)
  • Interactive dashboard (live view)

Pricing and Availability

Available On:

  • Enterprise Plan: Full pattern detection with unlimited cases and advanced features
  • Pro Plan: Pattern detection for up to 500 cases
  • Basic Plan: Not available

Upgrade: Contact sales to enable Pattern Detection.


AI Pattern Detection - Disclosurely AI Features | Disclosurely Docs