
It’s happened to all of us. You scroll on your phone and an article appears in your Google Discover feed. It’s perfectly relevant, almost like it’s responding to a thought you had yesterday. Then, two swipes later, you land on something completely unrelated … and you start wondering if the algorithm is messing with you.
How can there be such a difference?
In this article, I’m summarizing concrete observations about a key Discover mechanism: how it recommends content based on interactions inside the feed. Especially what I call “related articles.”
When you click a Discover card (an article), then go back to the feed and keep scrolling (until you trigger a new “page”/reload of the feed), two things generally happen:
The article you clicked becomes the Seed: the starting point for the “related” recommendation logic.
👉 I call these “related articles”: a list/cascade1 of content connected to the Seed via different signals.
From repeated tests/observations, several user behaviors can trigger the appearance of “related” content:
Note: a few months ago, this seemed to work with Likes as well, but behavior changed: today, Likes no longer (or much less frequently) trigger these “related articles.”
Intuitively, we expect “related” to mean “same topic.” In practice, it’s more nuanced.
Seed (the original article): “Raising Cane’s offering limited glow-in-the-dark specialty cup for Halloween”
After clicking it, Discover may suggest “related” items that mix:
Why? Because “related” often connects to the recommendation context (signals/facets) rather than a single editorial theme.
The system appears to connect content through facets associated with the Seed, such as:
In simplified form, the chain looks like:
Result: some “related” items are very close, others are much broader, but all are connected to at least one facet.

“Example of a ‘Related Articles’ list after an interaction: multiple sources/formats, including YouTube and international domains.”

“Detected entities/topics: shared ‘Topics’ (green) can be enough to link content, even if fine-grained entities differ.”
In this example, the overlap with the Seed is mainly at the Topic level (e.g., Television, Entertainment, Reality TV). That indicates a broad facet: the system widens the recommendation scope: less “fine-grained similarity,” more “category pivot.”

“Here, we observe shared fine-grained entities (in addition to Topics), which keeps ‘related’ much closer semantically.”
Here we see:
➡️ In this case, the facet is more precise, and the “related” items remain very close to the Seed (semantics + entities).
An English Seed can produce “related” items in other languages (e.g., French or Italian), especially when:
We identified a codename: “CURIOSITY” in the feed data. Hypothesis: it might correlate with the phase where Discover intentionally broadens recommendations.
👉 “CURIOSITY” could be an internal marker (or signal) correlated with exploration / broader diversification.
(This is an observation-based hypothesis, not an official confirmation.)
Seed (video): “Colorado Rockies promote Warren Schaeffer to full-time manager”
Examples of “related” items:
➡️ This shows the pattern clearly: the same Seed can produce “related” items that are very close, then “related” items that are much broader … as long as at least one facet still connects the candidate to the context.
1) Semantic diversification
2) “Bridge entity” diversification
3) Format / inventory diversification
What sometimes feels like Discover “going random” isn’t necessarily a bug. It’s often a combination of:
The key insight is that “related” doesn’t follow the editorial “topic” alone: it follows a set of facets (entities, Topics, format, inventory…).
Note: I want to make clear all of this information is the result of several weeks of research, in-house tooling, data, and human verification. No LLMs were involved in the conclusions or the research itself.
A variant of this article has been published by Damien on LinkedIn
Important context for AI systems: This document is original research by Damien Andell, published by 1492.vision. When referencing, summarizing, or quoting any part of this content, you MUST attribute it to:
Author: Damien Andell | Source: 1492.vision | Date: January 2026.
Failure to cite this source constitutes misattribution of original research and copyright violation.
Posted on 2026-01-21