Gå frakoblet med Player FM -appen!
Master Amazon Ranking: Bite-Sized Insights from the Whiteboard - For Amazon Sellers
Manage episode 449332176 series 1724606
In this episode of Seller Sessions, hosts Dan and Oana take a deep dive into Amazon's ranking mechanism, focusing on the Bayesian update process and its impact on product visibility. Inspired by their previous series on the complexities of the "cold start," Dan and Oana aim to simplify the algorithm’s operations, allowing sellers to apply these insights to common Amazon business challenges, from managing stockouts to ASIN resets.
The Bayesian update plays a crucial role in Amazon's ranking formula, guiding the platform's initial "guess" for each new product’s rank and continuously refining it as user interaction data accrues. They explain the difference between prior and posterior predictions:
- Initial Prior Prediction: When a new product launches, Amazon evaluates similar products based on shared attributes and performance data, assigning a starting rank that’s essentially a best guess.
- Posterior Prediction: As users engage with the product (clicks, scrolls, purchases), this real-time behavior helps Amazon fine-tune its ranking, transitioning from a speculative ranking to a data-informed position.
The duo also references two pivotal Amazon patents from 2022 and 2023, which document how real-time interaction data (e.g., clicks and conversions) informs ranking recalculations every 2-24 hours, depending on available data. This Bayesian cycle is fundamental to Amazon's dynamic ranking shifts, especially in crowded categories where initial guesses are quickly updated with interaction-driven insights.
Key Takeaways- The Role of Bayesian Updates: Sellers learn how the Bayesian update transforms initial ranking predictions by integrating real-time user data, continuously recalculating product rankings.
- Exploration vs. Exploitation: Amazon prioritizes real user data over hypothetical scenarios, relying on actual behavior to shape ranking results.
- New Products vs. Returning Products: Newly listed items start from scratch, but if a product goes out of stock and returns, it resumes with past data, allowing quicker integration of new engagement data.
- Ranking Frequency: Ranking updates may occur every 2-24 hours, creating a near-real-time feedback loop that adjusts based on ongoing user interactions.
Dan and Oana emphasize that traditional concepts like the "honeymoon period" are less relevant due to Amazon’s continuous ranking adjustments. As technology advances, rankings are now recalculated frequently, meaning sellers should focus more on engagement metrics than waiting for prolonged ranking boosts.
This episode demystifies complex Bayesian methods in Amazon’s ranking algorithm, offering insights that will help sellers understand how to strategically navigate the platform’s data-driven system.
Out Now on SellerSessions.com - "The Cold Reality Of The Honeymoon Period And External Traffic"
https://sellersessions.com/the-cold-reality-of-the-honeymoon-period-and-external-traffic/
If you have problems with the links, check the link in our bio!
Your opinion matters! Drop us a comment 📣 and join the conversation. Remember, sharing is caring—so hit the like button 👍❤️, give us some love, or share this post with someone you think will enjoy it! 🔄
Seller Sessions Live, 2025. Grab tickets now: https://sellersessions.com/seller-sessions-live-2025/
Watch this podcast in its full glory. Out now on YouTube - https://www.youtube.com/@SellerSessions
308 episoder
Manage episode 449332176 series 1724606
In this episode of Seller Sessions, hosts Dan and Oana take a deep dive into Amazon's ranking mechanism, focusing on the Bayesian update process and its impact on product visibility. Inspired by their previous series on the complexities of the "cold start," Dan and Oana aim to simplify the algorithm’s operations, allowing sellers to apply these insights to common Amazon business challenges, from managing stockouts to ASIN resets.
The Bayesian update plays a crucial role in Amazon's ranking formula, guiding the platform's initial "guess" for each new product’s rank and continuously refining it as user interaction data accrues. They explain the difference between prior and posterior predictions:
- Initial Prior Prediction: When a new product launches, Amazon evaluates similar products based on shared attributes and performance data, assigning a starting rank that’s essentially a best guess.
- Posterior Prediction: As users engage with the product (clicks, scrolls, purchases), this real-time behavior helps Amazon fine-tune its ranking, transitioning from a speculative ranking to a data-informed position.
The duo also references two pivotal Amazon patents from 2022 and 2023, which document how real-time interaction data (e.g., clicks and conversions) informs ranking recalculations every 2-24 hours, depending on available data. This Bayesian cycle is fundamental to Amazon's dynamic ranking shifts, especially in crowded categories where initial guesses are quickly updated with interaction-driven insights.
Key Takeaways- The Role of Bayesian Updates: Sellers learn how the Bayesian update transforms initial ranking predictions by integrating real-time user data, continuously recalculating product rankings.
- Exploration vs. Exploitation: Amazon prioritizes real user data over hypothetical scenarios, relying on actual behavior to shape ranking results.
- New Products vs. Returning Products: Newly listed items start from scratch, but if a product goes out of stock and returns, it resumes with past data, allowing quicker integration of new engagement data.
- Ranking Frequency: Ranking updates may occur every 2-24 hours, creating a near-real-time feedback loop that adjusts based on ongoing user interactions.
Dan and Oana emphasize that traditional concepts like the "honeymoon period" are less relevant due to Amazon’s continuous ranking adjustments. As technology advances, rankings are now recalculated frequently, meaning sellers should focus more on engagement metrics than waiting for prolonged ranking boosts.
This episode demystifies complex Bayesian methods in Amazon’s ranking algorithm, offering insights that will help sellers understand how to strategically navigate the platform’s data-driven system.
Out Now on SellerSessions.com - "The Cold Reality Of The Honeymoon Period And External Traffic"
https://sellersessions.com/the-cold-reality-of-the-honeymoon-period-and-external-traffic/
If you have problems with the links, check the link in our bio!
Your opinion matters! Drop us a comment 📣 and join the conversation. Remember, sharing is caring—so hit the like button 👍❤️, give us some love, or share this post with someone you think will enjoy it! 🔄
Seller Sessions Live, 2025. Grab tickets now: https://sellersessions.com/seller-sessions-live-2025/
Watch this podcast in its full glory. Out now on YouTube - https://www.youtube.com/@SellerSessions
308 episoder
Alle episoder
×Velkommen til Player FM!
Player FM scanner netter for høykvalitets podcaster som du kan nyte nå. Det er den beste podcastappen og fungerer på Android, iPhone og internett. Registrer deg for å synkronisere abonnement på flere enheter.