financetom
Technology
financetom
/
Technology
/
Both humans and AI hallucinate but in different ways
News World Market Environment Technology Personal Finance Politics Retail Business Economy Cryptocurrency Forex Stocks Market Commodities
Both humans and AI hallucinate but in different ways
Jun 17, 2023 7:52 AM

Vivienne Bentley, CSIRO and Claire Naughtin, Data61 Canberra (The Conversation) The launch of ever-capable large language models (LLMs) such as GPT-3.5 has sparked much interest over the past six months. However, trust in these models has waned as users have discovered they can make mistakes and that, just like us, they aren't perfect. An LLM that outputs incorrect information is said to be hallucinating, and there is now a growing research effort towards minimising this effect. But as we grapple with this task, it's worth reflecting on our own capacity for bias and hallucination and how this impacts the accuracy of the LLMs we create.

Link between AI's hallucinatory potential and our own, we can begin to create smarter AI systems that will ultimately help reduce human error. How people hallucinate It's no secret people make up information. Sometimes we do this intentionally, and sometimes unintentionally. The latter is a result of cognitive biases, or heuristics: mental shortcuts we develop through past experiences. These shortcuts are often born out of necessity. At any given moment, we can only process a limited amount of the information flooding our senses, and only remember a fraction of all the information we've ever been exposed to.

As such, our brains must use learnt associations to fill in the gaps and quickly respond to whatever question or quandary sits before us. In other words, our brains guess what the correct answer might be based on limited knowledge. This is called a confabulation and is an example of a human bias. Our biases can result in poor judgement. Take the automation bias, which is our tendency to favour information generated by automated systems (such as ChatGPT) over information from non-automated sources. This bias can lead us to miss errors and even act upon false information.

Another relevant heuristic is the halo effect, in which our initial impression of something affects our subsequent interactions with it. And the fluency bias, which describes how we favour information presented in an easy-to-read manner. The bottom line is human thinking is often coloured by its own cognitive biases and distortions, and these hallucinatory tendencies largely occur outside of our awareness.

In an LLM context, hallucinating is different. An LLM isn't trying to conserve limited mental resources to efficiently make sense of the world. Hallucinating in this context just describes a failed attempt to predict a suitable response to an input. Nevertheless, there is still some similarity between how humans and LLMs hallucinate, since LLMs also do this to fill in the gaps.

LLMs generate a response by predicting which word is most likely to appear next in a sequence, based on what has come before, and on associations the system has learned through training. Like humans, LLMs try to predict the most likely response. Unlike humans, they do this without understanding what they're saying. This is how they can end up outputting nonsense.

As to why LLMs hallucinate, there are a range of factors. A major one is being trained on data that are flawed or insufficient. Other factors include how the system is programmed to learn from these data, and how this programming is reinforced through further training under humans. Doing better together So, if both humans and LLMs are susceptible to hallucinating (albeit for different reasons), which is easier to fix? Fixing the training data and processes underpinning LLMs might seem easier than fixing ourselves. But this fails to consider the human factors that influence AI systems (and is an example of yet another human bias known as a fundamental attribution error).

The reality is our failings and the failings of our technologies are inextricably intertwined, so fixing one will help fix the other. Here are some ways we can do this. Responsible data management. Biases in AI often stem from biased or limited training data. Ways to address this include ensuring training data are diverse and representative, building bias-aware algorithms, and deploying techniques such as data balancing to remove skewed or discriminatory patterns.

ALSO READ: Offline world is here to stay, alongside AI: Varun Mayya of Scenes

Transparency and explainable AI. Despite the above actions, however, biases in AI can remain and can be difficult to detect. biases can enter a system and propagate within it, we can better explain the presence of bias in outputs. This is the basis of explainable AI, which is aimed at making AI systems' decision-making processes more transparent. Putting the public's interests front and centre. Recognising, managing and learning from biases in an AI requires human accountability and having human values integrated into AI systems. Achieving this means ensuring stakeholders are representative of people from diverse backgrounds, cultures and perspectives.

In this way, it's possible for us to build smarter AI systems that can help keep all our hallucinations in check. For instance, AI is being used within healthcare to analyse human decisions. These machine learning systems detect inconsistencies in human data and provide prompts that bring them to the clinician's attention. As such, diagnostic decisions can be improved while maintaining human accountability.

ALSO READ: AI has enabled these medical breakthroughs recently

In a social media context, AI is being used to help train human moderators when trying to identify abuse, such as through the Troll Patrol project aimed at tackling online violence against women. In another example, combining AI and satellite imagery can help researchers analyse differences in nighttime lighting across regions, and use this as a proxy for the relative poverty of an area (wherein more lighting is correlated with less poverty).

Importantly, while we do the essential work of improving the accuracy of LLMs, we shouldn't ignore how their current fallibility holds up a mirror to our own. (The Conversation)

(Edited by : Keshav Singh Chundawat)

Comments
Welcome to financetom comments! Please keep conversations courteous and on-topic. To fosterproductive and respectful conversations, you may see comments from our Community Managers.
Sign up to post
Sort by
Show More Comments
Related Articles >
Bitcoin (BTCUSD) breaches its current resistance -Analysis-11-08-2025
Bitcoin (BTCUSD) breaches its current resistance -Analysis-11-08-2025
Aug 10, 2025
The price of Bitcoin (BTCUSD) opened this week with strong gains on its last intraday levels, to breach the current resistance level at $118,00, supported by the dominance of the main bullish trend and its trading alongside a minor bias line on the short-term basis, reinforcing the strength of the positive momentum. The price is supported by the trading above...
Rumble considers near $1.2 billion offer for German AI cloud group Northern Data
Rumble considers near $1.2 billion offer for German AI cloud group Northern Data
Aug 10, 2025
(Reuters) -U.S.-listed video platform Rumble is considering a potential offer of about $1.17 billion (1 billion euro) for German AI cloud group Northern Data AG, according to separate statements from the companies and Reuters calculations. Rumble, also a cloud services provider, said a deal would integrate Northern Data's data center business and GPU cloud business with a significant number of...
Gold opens this week with sudden losses -Analysis-11-08-2025
Gold opens this week with sudden losses -Analysis-11-08-2025
Aug 10, 2025
The (Gold) declined in its last intraday trading, by the stability of the main resistance at $3,400, with the negative signals on the (RSI), despite the attempts to gain positive momentum to recover and breach this resistance, amid the dominance of minor bullish wave on the short-term basis, and the positive pressure that comes from its trading above EMA50. The...
Crude oil prices deepen its losses-Analysis-11-08-2025
Crude oil prices deepen its losses-Analysis-11-08-2025
Aug 10, 2025
The (crude oil) price kept declining in its last intraday trading, keeping its sharp bearish track alongside a minor bearish bias line on a short- term basis, and the selling pressures remain valid due to their stability below EMA50, these technical factors indicate the weakness of the bullish momentum and the continuation of the sellers dominance on the trading. The...
Copyright 2023-2026 - www.financetom.com All Rights Reserved