ETFOptimize | High-performance ETF-based Investment Strategies

Quantitative strategies, Wall Street-caliber research, and insightful market analysis since 1998.


ETFOptimize | HOME
Close Window

New AI Suggestibility Score shows how artificial intelligence decides which experts to elevate

Artificial intelligence has become the primary gatekeeper for who appears as an expert online, who is considered credible, and who is quietly ignored. In response to this shift, Dr. Tamara “Tami” Patzer has introduced the AI Suggestibility Score™, a new metric designed to measure how likely it is that an AI system will select, elevate, and trust a specific professional.

The AI Suggestibility Score™ is a central component of Patzer’s broader FirstAnswer Authority System™, a framework that explains how modern AI models evaluate identity rather than just content.

“AI no longer acts like a neutral index of information,” Patzer said. “It evaluates identity. Suggestibility has become the new visibility. If AI does not find you suggestible, it does not select you, no matter how good your work is.”

The score examines machine-readable identity signals, cross-platform consistency, corroborated credentials, and trust patterns to determine whether AI systems are likely to treat a given expert as a reliable source.

The launch of the AI Suggestibility Score™ comes at a time when journalism organizations and AI platforms are both focused on identity, verification, and trust. In 2025, the Poynter Institute, Columbia Journalism Review, Nieman Lab at Harvard, the International Fact-Checking Network, the American Press Institute, the Trust Project, the News Literacy Project, the Knight Foundation, the Reuters Institute for the Study of Journalism at Oxford, and UNESCO’s media integrity programs all highlighted the growing risk of identity confusion and misattribution in an AI-driven information ecosystem.

At the same time, major AI systems have increased their reliance on structured identity and authority signals. Search and conversational platforms now place more weight on which person or organization appears to be the most stable, visible, and corroborated entity associated with a name or topic.

“Journalism is tightening its standards for identity and sourcing at the same time AI systems are tightening theirs,” Patzer said. “The people who do not have a clear, machine-readable identity are the ones who disappear first.”

A key risk the AI Suggestibility Score™ surfaces is what Patzer calls Identity Collision™, a phenomenon in which AI confuses two people who share a similar or identical name. In those cases, the system often defaults to the better-known or more frequently indexed individual.

For example, an author releasing a new book may share a name with a well-known actor. When someone searches that name, AI may highlight the actor’s biography, credits, and interviews, while the author and their work remain effectively invisible unless a user knows additional details to narrow the search.

“When all someone knows is your first and last name, AI tends to default to the most famous or most saturated version of that identity,” Patzer said. “Your name alone used to be enough for people to find you. In an AI-filtered world, that is no longer guaranteed.”

Patzer’s AI Reality Check™ diagnostic incorporates the AI Suggestibility Score™, an Identity Collision Risk Score™, and other proprietary measures to show professionals how AI currently interprets them and whether the system is likely to recommend them, ignore them, or confuse them with someone else. The framework is designed for doctors, executives, authors, consultants, and other experts whose work depends on being accurately recognized and surfaced in digital environments.

“Experts assume that because they exist, they are visible,” Patzer said. “What we are seeing in 2025 is that visibility is no longer automatic. It has to be engineered.”

Dr. Patzer describes her work as AI Identity Engineering™, an emerging discipline that brings together AI behavior, journalism ethics, and digital trust. Her FirstAnswer Authority System™ is built to help the right experts become the first answer AI delivers in their field, while aligning with the identity and integrity standards promoted by leading journalism and media organizations.

About Dr. Tamara Patzer

Dr. Tamara “Tami” Patzer is a Pulitzer Prize–nominated journalist and the founder of AI Identity Engineering™ and the FirstAnswer Authority System™. Her work sits at the intersection of AI visibility, expert verification, and journalism ethics. She is the creator of the AI Reality Check™, Identity Collision™, the AI Suggestibility Score™, and a suite of visibility metrics designed for professionals, corporations, and institutions that depend on accurate digital recognition.

LinkedIn: https://www.linkedin.com/in/tamarapatzer/

Recent Quotes

View More
Symbol Price Change (%)
AMZN  227.35
+0.59 (0.26%)
AAPL  273.67
+1.48 (0.54%)
AMD  213.43
+12.37 (6.15%)
BAC  55.27
+1.01 (1.86%)
GOOG  308.61
+4.86 (1.60%)
META  658.77
-5.68 (-0.85%)
MSFT  485.92
+1.94 (0.40%)
NVDA  180.99
+6.85 (3.93%)
ORCL  191.97
+11.94 (6.63%)
TSLA  481.20
-2.17 (-0.45%)
Stock Quote API & Stock News API supplied by www.cloudquote.io
Quotes delayed at least 20 minutes.
By accessing this page, you agree to the Privacy Policy and Terms Of Service.


 

IntelligentValue Home
Close Window

DISCLAIMER

All content herein is issued solely for informational purposes and is not to be construed as an offer to sell or the solicitation of an offer to buy, nor should it be interpreted as a recommendation to buy, hold or sell (short or otherwise) any security.  All opinions, analyses, and information included herein are based on sources believed to be reliable, but no representation or warranty of any kind, expressed or implied, is made including but not limited to any representation or warranty concerning accuracy, completeness, correctness, timeliness or appropriateness. We undertake no obligation to update such opinions, analysis or information. You should independently verify all information contained on this website. Some information is based on analysis of past performance or hypothetical performance results, which have inherent limitations. We make no representation that any particular equity or strategy will or is likely to achieve profits or losses similar to those shown. Shareholders, employees, writers, contractors, and affiliates associated with ETFOptimize.com may have ownership positions in the securities that are mentioned. If you are not sure if ETFs, algorithmic investing, or a particular investment is right for you, you are urged to consult with a Registered Investment Advisor (RIA). Neither this website nor anyone associated with producing its content are Registered Investment Advisors, and no attempt is made herein to substitute for personalized, professional investment advice. Neither ETFOptimize.com, Global Alpha Investments, Inc., nor its employees, service providers, associates, or affiliates are responsible for any investment losses you may incur as a result of using the information provided herein. Remember that past investment returns may not be indicative of future returns.

Copyright © 1998-2017 ETFOptimize.com, a publication of Optimized Investments, Inc. All rights reserved.