5 new canonical articles plus 4 cross-listings from the Kim, Shazeer, and 65 Google Patents sections. Tong is co-inventor with Marc Pearson and Sergey Brin on the related-query ranking patent (US 7,505,964), with Pearson on the population-information ranking patent (US 7,454,417), solo on country biasing (US 20040254932), with Bem/Harik/Levenberg/Shazeer on the pre-Transformer large-scale ML ranking infrastructure (US 7,222,127), and with Ghemawat/Piscitello/Cutts on the user-document-removal patent (US 8,417,697, the structural ancestor of Personal Blocklist and crowd-sourced spam signals). Cross-listings cover the Navboost implicit-feedback family, the CTR-as-ranking-factor patent, the historical-data patent, and the large-dataset-ranking continuation. Spans 2003 to 2017+.
About the Simon Tong, Google Click-Driven Ranking, Population Signals & Anti-Spam Patents track
5 new canonical articles plus 4 cross-listings from the Kim, Shazeer, and 65 Google Patents sections. Tong is co-inventor with Marc Pearson and Sergey Brin on the related-query ranking patent (US 7,505,964), with Pearson on the population-information ranking patent (US 7,454,417), solo on country biasing (US 20040254932), with Bem/Harik/Levenberg/Shazeer on the pre-Transformer large-scale ML ranking infrastructure (US 7,222,127), and with Ghemawat/Piscitello/Cutts on the user-document-removal patent (US 8,417,697, the structural ancestor of Personal Blocklist and crowd-sourced spam signals). Cross-listings cover the Navboost implicit-feedback family, the CTR-as-ranking-factor patent, the historical-data patent, and the large-dataset-ranking continuation. Spans 2003 to 2017+.
Crowd & Cross-Query Ranking Signals
- Improving Search Ranking Using Related Queries (US 7,505,964 · March 17, 2009)
- Improving Search Ranking Using Population Information (US 7,454,417 · November 18, 2008)
- Country Biasing of Search Results (US 20040254932 · December 16, 2004)
Implicit Feedback & Click-Driven Ranking (cross-list)
- Modifying Search Result Ranking Based on Implicit User Feedback (Navboost) (US 8,661,029 · February 25, 2014)
- Click-Through Rate as a Ranking Factor (US 10,229,166 · March 12, 2019)
Pre-Transformer Learned Ranking
- Large-Scale Machine Learning Systems and Methods for Ranking (US 7,222,127 · May 22, 2007)
- Ranking Documents Based on Large Data Sets (continuation) (US 9,116,976 · August 25, 2015)
- Historical Data (Information Retrieval Based on Historical Data) (US 7,346,839 · March 18, 2008)
Crowd-Sourced Anti-Spam Signals
- Permitting Users to Remove Documents from Search Results (US 8,417,697 · April 9, 2013)
Why this inventor matters
Each inventor track inside the Nizam SEO War Room patents archive isolates one engineer's research arc — typically a decade or more of continuations, divisionals, and follow-up patents on a coherent research thread. Reading by inventor (rather than by topic) recovers the narrative: how the original disclosure evolved, what the continuations added, which claims got carved out into divisional applications, and how the thread eventually intersected with other research lines at Google or Microsoft. This is how working SEOs build durable intuition about search-engine internals — not by memorizing claim language, but by following the research bibliography that shipped the algorithms we now optimize against.
How to read this track
Start with the earliest filing — it sets the foundational disclosure. Continuations refine the claims; divisional applications split out separable inventions; the follow-up patents tend to introduce performance optimizations, edge-case handling, or downstream integration with other systems. Each patent on this site is annotated with the ranking surface it touches — query understanding, document retrieval, ranking, behavioral signals, knowledge graph, or AI search — so the practitioner can map the research back to the algorithm output observed on live SERPs.