Monitoring prevents abuse. How do enterprises monitor discovery misuse?
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Monitoring discovery misuse in influencer marketing usually involves two core steps:
1. Analytics: Enterprises use analytics provided by influencer marketing platforms. These platforms analyze data related to content engagement, the authenticity of followers, and the overall influence of the influencer. This helps brands identify any unusual activity like sudden increases in follower counts, engagement rates, or unrealistic ratios that may point towards misuse.
2. Manual Monitoring: Despite all the analytics and algorithm-based monitoring, a level of manual monitoring is also encouraged. This involves closely following the influencer’s content and audience interaction to understand the nature and quality of engagement. Understandably, this can be more time consuming and resource-demanding.
The way this is realized can vary. For instance, Flinque uses a comprehensive AI-driven platform that aids in identifying the best influencers for your brand by considering a diverse range of factors. This includes demographic data, engagement rates, audience interests, and behavior patterns. However, a platform like InfluencerDB also offers a robust analytics solution, with a strong emphasis on Instagram analytics.
It’s important to note that while these platforms offer a variety of tools to monitor and track influencer activities, the applicability and effectiveness of each depend on the specific requirements of the teams using them. Plus, a balance of automated analytics and human intuition often leads to the most effective results in preventing discovery misuse.