Index Investing News
Sunday, May 11, 2025
No Result
View All Result
  • Login
  • Home
  • World
  • Investing
  • Financial
  • Economy
  • Markets
  • Stocks
  • Crypto
  • Property
  • Sport
  • Entertainment
  • Opinion
  • Home
  • World
  • Investing
  • Financial
  • Economy
  • Markets
  • Stocks
  • Crypto
  • Property
  • Sport
  • Entertainment
  • Opinion
No Result
View All Result
Index Investing News
No Result
View All Result

ChatGPT and Large Language Models: Their Risks and Limitations

by Index Investing News
October 31, 2023
in Investing
Reading Time: 7 mins read
A A
0
Home Investing
Share on FacebookShare on Twitter


For more on artificial intelligence (AI) in investment management, check out The Handbook of Artificial Intelligence and Big Data Applications in Investments, by Larry Cao, CFA, from the CFA Institute Research Foundation.


Performance and Data

Despite its seemingly “magical” qualities, ChatGPT, like other large language models (LLMs), is just a giant artificial neural network. Its complex architecture consists of about 400 core layers and 175 billion parameters (weights) all trained on human-written texts scraped from the web and other sources. All told, these textual sources total about 45 terabytes of initial data. Without the training and tuning, ChatGPT would produce just gibberish.

We might imagine that LLMs’ astounding capabilities are limited only by the size of its network and the amount of data it trains on. That is true to an extent. But LLM inputs cost money, and even small improvements in performance require significantly more computing power. According to estimates, training ChatGPT-3 consumed about 1.3 gigawatt hours of electricity and cost OpenAI about $4.6 million in total. The larger ChatGPT-4 model, by contrast, will have cost $100 million or more to train.

OpenAI researchers may have already reached an inflection point, and some have admitted that further performance improvements will have to come from something other than increased computing power.

Still, data availability may be the most critical impediment to the progress of LLMs. ChatGPT-4 has been trained on all the high-quality text that is available from the internet. Yet far more high-quality text is stored away in individual and corporate databases and is inaccessible to OpenAI or other firms at reasonable cost or scale. But such curated training data, layered with additional training techniques, could fine tune the pre-trained LLMs to better anticipate and respond to domain-specific tasks and queries. Such LLMs would not only outperform larger LLMs but also be cheaper, more accessible, and safer.

But inaccessible data and the limits of computing power are only two of the obstacles holding LLMs back.

Hallucination, Inaccuracy, and Misuse

The most pertinent use case for foundational AI applications like ChatGPT is gathering, contextualizing, and summarizing information. ChatGPT and LLMs have helped write dissertations and extensive computer code and have even taken and passed complicated exams. Firms have commercialized LLMs to provide professional support services. The company Casetext, for example, has deployed ChatGPT in its CoCounsel application to help lawyers draft legal research memos, review and create legal documents, and prepare for trials.

Yet whatever their writing ability, ChatGPT and LLMs are statistical machines. They provide “plausible” or “probable” responses based on what they “saw” during their training. They cannot always verify or describe the reasoning and motivation behind their answers. While ChatGPT-4 may have passed multi-state bar exams, an experienced lawyer should no more trust its legal memos than they would those written by a first-year associate.

The statistical nature of ChatGPT is most obvious when it is asked to solve a mathematical problem. Prompt it to integrate some multiple-term trigonometric function and ChatGPT may provide a plausible-looking but incorrect response. Ask it to describe the steps it took to arrive at the answer, it may again give a seemingly plausible-looking response. Ask again and it may offer an entirely different answer. There should only be  one right answer and only one sequence of analytical steps to arrive at that answer. This underscores the fact that ChatGPT does not “understand” math problems and does not apply the computational algorithmic reasoning that mathematical solutions require.

Data Science Certificate Tile

The random statistical nature of LLMs also makes them susceptible to what data scientists call “hallucinations,” flights of fancy that they pass off as reality. If they can provide wrong yet convincing text, LLMs can also spread misinformation and be used for illegal or unethical purposes. Bad actors could prompt an LLM to write articles in the style of a reputable publication and then disseminate them as fake news, for example. Or they could use it to defraud clients by obtaining sensitive personal information. For these reasons, firms like JPMorgan Chase and Deutsche Bank have banned the use of ChatGPT.

How can we address LLM-related inaccuracies, accidents, and misuse? The fine tuning of pre-trained large LLMs on curated, domain-specific data can help improve the accuracy and appropriateness of the responses. The company Casetext, for example, relies on pre-trained ChatGPT-4 but supplements its CoCounsel application with additional training data — legal texts, cases, statutes, and regulations from all US federal and state jurisdictions — to improve its responses. It recommends more precise prompts based on the specific legal task the user wants to accomplish; CoCounsel always cites the sources from which it draws its responses.

Certain additional training techniques, such as reinforcement learning from human feedback (RLHF), applied on top of the initial training can reduce an LLM’s potential for misuse or misinformation as well. RLHF “grades” LLM responses based on human judgment. This data is then fed back into the neural network as part of its training to reduce the possibility that the LLM will provide inaccurate or harmful responses to similar prompts in the future. Of course, what is an “appropriate” response is subject to perspective, so RLHF is hardly a panacea.

“Red teaming” is another improvement technique through which users “attack” the LLM to find its weaknesses and fix them. Red teamers write prompts to persuade the LLM to do what it is not supposed to do in anticipation of similar attempts by malicious actors in the real world. By identifying potentially bad prompts, LLM developers can then set guardrails around the LLM’s responses. While such efforts do help, they are not foolproof. Despite extensive red teaming on ChatGPT-4, users can still engineer prompts to circumvent its guardrails.

Another potential solution is deploying additional AI to police the LLM by creating a secondary neural network in parallel with the LLM. This second AI is trained to judge the LLM’s responses based on certain ethical principles or policies. The “distance” of the LLM’s response to the “right” response according to the judge AI is fed back into the LLM as part of its training process. This way, when the LLM considers its choice of response to a prompt, it prioritizes the one that is the most ethical.

Tile for Gen Z and Investing: Social Media, Crypto, FOMO, and Family report

Transparency

ChatGPT and LLMs share a shortcoming common to AI and machine learning (ML) applications: They are essentially black boxes. Not even the programmers at OpenAI know exactly how ChatGPT configures itself to produce its text. Model developers traditionally design their models before committing them to a program code, but LLMs use data to configure themselves. LLM network architecture itself lacks a theoretical basis or engineering: Programmers chose many network features simply because they work without necessarily knowing why they work.

This inherent transparency problem has led to a whole new framework for validating AI/ML algorithms — so-called explainable or interpretable AI. The model management community has explored various methods to build intuition and explanations around AI/ML predictions and decisions. Many techniques seek to understand what features of the input data generated the outputs and how important they were to certain outputs. Others reverse engineer the AI models to build a simpler, more interpretable model in a localized realm where only certain features and outputs apply. Unfortunately, interpretable AI/ML methods become exponentially more complicated as models grow larger, so progress has been slow. To my knowledge, no interpretable AI/ML has been applied successfully on a neural network of ChatGPT’s size and complexity.

Given the slow progress on explainable or interpretable AI/ML, there is a compelling case for more regulations around LLMs to help firms guard against unforeseen or extreme scenarios, the “unknown unknowns.” The growing ubiquity of LLMs and the potential for  productivity gains make outright bans on their use unrealistic. A firm’s model risk governance policies should, therefore, concentrate not so much on validating these types of models but on implementing comprehensive use and safety standards. These policies should prioritize the safe and responsible deployment of LLMs and ensure that users are checking the accuracy and appropriateness of the output responses. In this model governance paradigm, the independent model risk management does not examine how LLMs work but, rather, audits the business user’s justification and rationale for relying on the LLMs for a specific task and ensures that the business units that use them have safeguards in place as part of the model output and in the business process itself.

Graphic for Handbook of AI and Big data Applications in Investments

What’s Next?

ChatGPT and LLMs represent a huge leap in AI/ML technology and bring us one step closer to an artificial general intelligence. But adoption of ChatGPT and LLMs comes with important limitations and risks. Firms must first adopt new model risk governance standards like those described above before deploying LLM technology in their businesses. A good model governance policy appreciates the enormous potential of LLMs but ensures their safe and responsible use by mitigating their inherent risks.

If you liked this post, don’t forget to subscribe to Enterprising Investor.


All posts are the opinion of the author. As such, they should not be construed as investment advice, nor do the opinions expressed necessarily reflect the views of CFA Institute or the author’s employer.

Image credit: ©Getty Images /Yuichiro Chino


Professional Learning for CFA Institute Members

CFA Institute members are empowered to self-determine and self-report professional learning (PL) credits earned, including content on Enterprising Investor. Members can record credits easily using their online PL tracker.



Source link

Tags: ChatGPTlanguageLargeLimitationsmodelsRisks
ShareTweetShareShare
Previous Post

What we learned in NFL Week 8: Feed Tyreek Hill and A.J. Brown; Jets in playoff hunt?

Next Post

What Is a Real Estate Agent? (Definition, Types, Role)

Related Posts

The way to Put money into Actual Property Throughout a Recession (2025 Replace)

The way to Put money into Actual Property Throughout a Recession (2025 Replace)

by Index Investing News
May 9, 2025
0

A recession isn’t a time to panic—it’s a time to construct wealth. In case you’re listening to this podcast, you’re...

The ,000/Month Facet Hustle YOU Can Use to Purchase Leases (Rookie Reply)

The $4,000/Month Facet Hustle YOU Can Use to Purchase Leases (Rookie Reply)

by Index Investing News
May 9, 2025
0

Want extra money to purchase your first (or subsequent) rental property? The proper actual property aspect hustle may provide help...

The best way to Create Enormous Tax Financial savings Funding Your Child’s Faculty (& FIRE on Time!)

The best way to Create Enormous Tax Financial savings Funding Your Child’s Faculty (& FIRE on Time!)

by Index Investing News
May 9, 2025
0

Paying for school is likely one of the largest monetary hurdles households face—at the same time as you’re chasing or...

Is the Housing Market Truly “Wholesome”? This is My Scorecard to Discover Out

Is the Housing Market Truly “Wholesome”? This is My Scorecard to Discover Out

by Index Investing News
May 8, 2025
0

Libraries Are Nonetheless Helpful!

Libraries Are Nonetheless Helpful!

by Index Investing News
May 9, 2025
0

Next Post
What Is a Real Estate Agent? (Definition, Types, Role)

What Is a Real Estate Agent? (Definition, Types, Role)

Stop Crying and Buy Bonds

Stop Crying and Buy Bonds

Leave a Reply Cancel reply

Your email address will not be published. Required fields are marked *

RECOMMENDED

Mint Explainer: Should India fret the reset in the US-Pak ties?

Mint Explainer: Should India fret the reset in the US-Pak ties?

October 17, 2022
Jordan Henderson makes astonishing claim about England fans booing him

Jordan Henderson makes astonishing claim about England fans booing him

October 16, 2023
Kathy Hilton Denies Erika Jayne’s Claim She Used Gay Slur, Calls Lisa Rinna ‘Biggest Bully’ on RHOBH Reunion

Kathy Hilton Denies Erika Jayne’s Claim She Used Gay Slur, Calls Lisa Rinna ‘Biggest Bully’ on RHOBH Reunion

October 27, 2022
Voss Capital desires to maximise worth at Worldwide Cash Specific

Voss Capital desires to maximise worth at Worldwide Cash Specific

September 14, 2024
Paramount shares pop after BDT Capital bets on the media giant’s key shareholder

Paramount shares pop after BDT Capital bets on the media giant’s key shareholder

May 26, 2023
Faraday Future: One other Probability To Promote (NASDAQ:FFAI)

Faraday Future: One other Probability To Promote (NASDAQ:FFAI)

March 28, 2025
Magic Sq. Raises  Million in Binance-Led Seed Funding Spherical

Magic Sq. Raises $3 Million in Binance-Led Seed Funding Spherical

July 1, 2022
Shopping for Emma Sleep Returns: What You Must Know

Shopping for Emma Sleep Returns: What You Must Know

July 21, 2022
Index Investing News

Get the latest news and follow the coverage of Investing, World News, Stocks, Market Analysis, Business & Financial News, and more from the top trusted sources.

  • 1717575246.7
  • Browse the latest news about investing and more
  • Contact us
  • Cookie Privacy Policy
  • Disclaimer
  • DMCA
  • Privacy Policy
  • Terms and Conditions
  • xtw18387b488

Copyright © 2022 - Index Investing News.
Index Investing News is not responsible for the content of external sites.

No Result
View All Result
  • Home
  • World
  • Investing
  • Financial
  • Economy
  • Markets
  • Stocks
  • Crypto
  • Property
  • Sport
  • Entertainment
  • Opinion

Copyright © 2022 - Index Investing News.
Index Investing News is not responsible for the content of external sites.

Welcome Back!

Login to your account below

Forgotten Password?

Retrieve your password

Please enter your username or email address to reset your password.

Log In