How to Find the Cause of a Metric Change: A Step-by-Step Framework
When your KPIs move unexpectedly, here's the exact framework to find out why—in minutes instead of hours.
How to Find the Cause of a Metric Change
**Quick Answer:** Find the cause of a metric change by decomposing it across dimensions (time, segment, channel), isolating the driving factors, correlating with potential causes, and validating with additional data. This process typically takes 2-4 hours manually or under 5 minutes with AI tools like OLARI.
The 5-Step Framework for Root Cause Analysis
Step 1: Confirm the Change Is Real
Before investigating, rule out false alarms:
**Example:** A 5% revenue drop might be noise; a 15% drop warrants investigation.
Step 2: Decompose by Dimensions
Break down the metric by every available dimension:
**Goal:** Find which segment(s) account for the change.
Example:
Step 3: Isolate the Driver
Once you've found the segment, dig deeper:
Example:
Step 4: Correlate with Causes
Match the timing and segment with potential causes:
Internal causes:
External causes:
Example:
Step 5: Validate the Hypothesis
Confirm your theory with additional data:
Real-World Example: Conversion Rate Drop
**The Problem:** Conversion rate dropped 20% week-over-week.
Step 1: Confirm
Step 2: Decompose
**Finding:** Mobile + Paid traffic is the primary driver.
Step 3: Isolate
**Finding:** Traffic volume up but quality down on mobile paid.
Step 4: Correlate
**Finding:** New ad creative attracting wrong audience.
Step 5: Validate
How OLARI Automates This Process
The manual process above takes 2-4 hours. OLARI does it in minutes:
1. **Ask:** "Why did conversion drop last week?"
2. **Get:** Complete decomposition, isolation, and correlation
3. **Act:** Specific recommendations based on the analysis
Example OLARI Response:
"Conversion dropped 20% due to mobile paid traffic. The new ad creative launched Wednesday is attracting lower-intent users—mobile paid bounce rate is up 45%. Recommendation: Revert ad creative or adjust targeting to match previous audience quality."
Key Takeaways
1. Always confirm the change is real before investigating
2. Decompose systematically across all dimensions
3. Isolate until you find the specific driver
4. Correlate timing with potential causes
5. Validate before acting
[Start finding metric causes in minutes →](/pricing)