Spearleaf · Position Zero Playbook v11 · 2026-06-16 Start here Changelog
Reference

"Kyle Roof: LSI as Google's AI-Content Filter, Avalanche Theory, KGR, and Being Your Own LLM Source"

Kyle Roof argues Google turned up LSI scoring as a cheap mass-AI-content filter, then shows a three-filter term-selection method (Avalanche Theory plus KGR plus keyword difficulty) for winning terms fast and becoming your own cited source inside LLM answers.

On this page

Kyle Roof (on-page SEO, PageOptimizer Pro) opened on a recurring failure pattern: sites humming along on pure AI content that fell off a cliff. His theory is that Google does not need to detect human-vs-AI directly; it can cheaply discount pages whose contextual (LSI) term coverage is far below expectation, then discount the rest of the site. His positive method is a three-filter term-selection system that surfaces low-competition terms Google already trusts you for, lifting whole-site authority and letting the same content satisfy LLM query fan-out so you can cite yourself.

Main takeaways

  1. Google likely turned up LSI scoring as a cheap mass-AI-content filter, and almost no one passes it. Rather than detecting "human vs AI," Google can discount a page that is significantly below expected on LSI, then discount the rest of the site. LLMs are weak on LSI out of the box and people prompt poorly, so low LSI coverage is an easy, inexpensive signal to discount mass content. A 10,000-page audit showed 99.4% missing LSI.

  2. Stack Avalanche Theory, KGR, and a keyword-difficulty cap as a single filtering system. Used together (not as standalone tactics) this surfaces low-competition terms you can win roughly 70 to 80% of with minimal SEO, which raises whole-site authority, builds a moat, and targets terms competitors overlook ("SEO almost without SEO").

  3. Become your own source for LLMs. By weighting the selected terms, the content both makes Google trust the site fast (all boats rise) and satisfies the query fan-out for AI search engines, so you can get inserted into engines like ChatGPT and cite yourself. Roof reframes this GEO work as a slightly tweaked SEO package you can charge more for, not a new discipline.

Key points

The AI-content penalty theory (LSI)

Term-selection method (three filters)

Be your own source for LLMs

The 10,000-page audit

Closing metaphor

Source

Synthesized from the conference knowledge notes for the Day 1 Part 2 session (Kyle Roof, Chris Martinez, Chase Buckner); only Roof's portion is included here. No deck file was supplied for Roof's talk (he presented on-screen slides, but no deck text was provided), so no slides are embedded. Roof's target word count (about 2,200) and audit percentages are PageOptimizer Pro baselines from about one week of first-runs (roughly 10,000 pages), not independent third-party data. The Avalanche Theory free-course URL was not stated in the source.