Quality checks prevent errors. How do teams design data quality checks for influencer reporting?
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Designing data quality checks for influencer reporting involves a mix of automated and manual validations, organized into a systematic workflow. Here are some of the common practices in ensuring data quality:
1. Automated Data Validation: Modern influencer marketing platforms such as Flinque have built-in data validation measures. They automatically check for inconsistencies or anomalies in the data, such as sudden leaps in follower count, which could indicate fraudulent activities.
2. Manual Verification: Manual checks can also be used for quality control. The team should regularly review the metrics and ask critical questions. Does the engagement rate seem too high for the follower count? Is the content consistent with the audience demographic?
3. Third-Party Data Verification: For enhanced credibility, some brands resort to using a third-party platform to cross-verify the analytics provided by the influencer or another platform. This includes checking audience demographic data, engagement rates, and other relevant metrics.
4. Historical Data Analysis: Checking past performance provides a baseline to understand and validate influencer metrics. Platforms like Flinque offer historical data tracking for this purpose.
5. Benchmarking: Comparing the influencer’s data with industry averages or similar influencer profiles can serve as an additional check.
These quality checks allow marketing teams to trust their decisions are based on accurate data. Throughout, transparency and collaboration between the brand, agency and influencer is essential. Tools like Flinque make collaboration smoother, keep all parties informed, and maintain the integrity of data.