SayPro List 100 common data discrepancies found in M&E reports and how to correct them.”
SayPro is a Global Solutions Provider working with Individuals, Governments, Corporate Businesses, Municipalities, International Institutions. SayPro works across various Industries, Sectors providing wide range of solutions.
Email: info@saypro.online Call/WhatsApp: Use Chat Button 👇
Certainly! Here’s a detailed list of 100 common data discrepancies found in Monitoring & Evaluation (M&E) reports—along with corresponding corrective actions for each. The list is categorized for easier understanding.
I. Data Entry Errors
Discrepancy
Corrective Action
Typographical errors | Cross-check entries with source documents; correct and train staff.
Duplicate records | Deduplicate using unique IDs or filtering software tools.
Misaligned data columns | Review templates and align headers consistently.
Data entered in wrong fields | Train users and implement validation rules.
Copy-paste errors | Spot-check and compare with originals.
Omitted entries | Revisit source records and update missing data.
Incorrect date formats | Standardize date inputs (e.g., DD/MM/YYYY).
Decimal errors (e.g., 2.00 instead of 200) | Recalculate and verify from original forms.
Use of mixed number formats (e.g., comma vs dot for decimals) | Standardize format based on system settings.
Formula errors in spreadsheets | Audit and fix incorrect formulas using cell tracing.
II. Indicator Misinterpretation
Discrepancy
Corrective Action
Misunderstood indicator definitions | Provide clear guidance and job aids.
Confusion between numerator and denominator | Offer refresher training and validation checks.
Mixing up units (e.g., percentages vs absolute numbers) | Clarify expected units in reporting templates.
Inconsistent age disaggregation | Enforce consistent disaggregation criteria.
Gender data reversed or missing | Validate against registration records and retrain.
Over-reporting due to double-counting | Use unique identifiers or registration systems.
Under-reporting due to unrecognized sources | Cross-check all data sources for completeness.
Aggregating incompatible indicators | Define aggregation rules; separate incompatible data.
Overlooking null values as 0 | Differentiate between “zero” and “no data.”
Inclusion of ineligible participants | Review criteria and filter data based on eligibility.
III. Source Data Inconsistencies
Discrepancy
Corrective Action
Paper records don’t match digital versions | Reconcile with field logs or re-enter correctly.
Register totals don’t match summary sheets | Recalculate manually and verify.
Missing supporting documents | Request re-submission or recreate where possible.
Different figures across departments | Standardize and sync departmental databases.
Weekly/monthly totals don’t add up | Cross-check summations and calculations.
Use of outdated templates | Distribute current templates and phase out old ones.
Mismatched village/district codes | Update master lists and conduct data cleaning.
Inconsistent spellings of locations | Use dropdowns or coded entries.
Old versions of tools in use | Replace and archive old tools; provide training.
Data submitted outside reporting period | Flag and exclude non-compliant data.
IV. System and Software-Related Issues
Discrepancy
Corrective Action
Data loss during sync | Use cloud backups and test sync processes.
Software updates causing field changes | Confirm compatibility before updates.
Leave a Reply
You must be logged in to post a comment.