Having evolved from arboreal primates who relied on their senses and instincts to survive, most humans now occupy a highly sophisticated artificial environment that is at least as much data as nature. Data is everywhere: in phones, cars, homes, workplaces, and media. Data shapes our decisions, beliefs, behaviours, emotions, and identities. According to some estimates, several quintillion bytes of data are created daily 1. A quintillion is 1 with 18 zeros after it. A DVD holds about 5 Gb, and a Gigabyte is a 1 with 9 zeros, so every day humans create of the order of 1,000,000,000 DVDs-worth of data.

Information overload is the difficulty the human mind has in understanding an issue when swamped by too much data. According to a 2023 paper published by the US Federal Reserve, information overload can increase both information risk and estimation risk2. Its authors argue that “information overload [may be] increasing information and estimation risk and deteriorating investors’ decision accuracy because of their limited attention.”

Behavioural biases

How can we cope with so much data? Our brains are not computers, they work differently. We simplify. We tell stories. We fall in love with a narrative.

Trusting stories may be hard wired into our genes, because humans evolved the ability to create and comprehend stories as a survival strategy. Storytelling helped our ancestors to communicate vital information, to cooperate and coordinate with others, to enhance social bonding and group identity, and to simulate and plan future scenarios. Stories provided meaning and purpose, emotional regulation and coping skills.

Believing in stories may have conferred an adaptive advantage to early humans. While this worked well in the wild, it can disadvantage us when it comes to investing in the modern world. Stories often confirm group beliefs, are memorable, and convincing, but they can lead us into making mistakes. Our love of narrative can make us susceptible to behavioural biases, such as the following: Firstly, it can make us prone to confirmation bias, the tendency to seek out and interpret information that confirms our existing beliefs, while ignoring or discounting evidence that contradicts them. Confirmation bias can lead us to overestimate the validity and reliability of our own opinions, and disregard alternative explanations or perspectives.

Second, it can make us susceptible to the availability heuristic, the tendency to judge the likelihood or frequency of an event based on how easily we can recall examples of it from memory. The availability heuristic can cause us to overestimate the probability of rare or dramatic events and underestimate the probability of common or mundane events.

Third, it can make us vulnerable to the framing effect, the tendency to be influenced by the way information is presented, rather than by the information itself. The framing effect can affect our decisions and preferences depending on how the options are worded, ordered, or emphasised. For example, we may be more willing to accept a gamble if it is framed as a potential gain rather than a potential loss, even if the expected value is the same.

These and other behavioural biases affect many investors, and, in our view, their effects can be detected in markets. For example, herding occurs when investors mimic the behaviour of others, which they may do especially when faced by highly uncertain outcomes. Herding behaviour may part of the reason for boom-and-bust cycles.

Herding behaviour can often be found in nature … and in markets too. 

Are markets herding?  

Are behavioural biases present in current markets? Global equity markets have generally been very strong over the past few months, as investors have become more optimistic about the US economy and about the technology sector in particular. The promise of Artificial Intelligence (AI) has grabbed the headlines. Chat GPT has not only been the world’s faster-ever growing application but has spurred people’s imaginations about what may lie ahead.

The first powered aircraft was built in 1903. Before that kites and balloons were in use, but it might have seemed crazy that objects with metal wings and a gasoline engine could fly. Until recently, it might have seemed crazy that other objects made of metal and silicon – computers – could think intelligently. But now many believe that to be possible in the near future. ChatGPT was released in 2022, almost 120 years after the Wright brothers first flew their plane. ChatGPT, and other Large Language Models, do not exhibit artificial general intelligence (AGI). In essence, they make predictions of, and can generate, words that probabilistically follow next in a sentence. Large Language Models are essentially brilliant mimics of human language and lack the ability to perceive or reason about the world. They certainly are not conscious, although their skill in language generation can sometimes give the illusion that they are.

Excitement over AI is partly why the technology sector has dominated stockmarkets over recent months. The price of shares in Nvidia, whose chips are widely used in AI, has quadrupled since early 2023. The Magnificent Seven (Apple, Nvidia, Microsoft, Amazon, Google, Meta, Tesla) now account for 28% of the S&P 500 by market cap. An example of herding behaviour?
Magnificent seven

Source: Bloomberg, as at 21.03.2024. Bloomberg Magnificent 7 Total Return Index, NASDAQ 100 Total Return index, S&P 500 Total Return Index, normalised from 30.12.2022.

Investing in a passive fund tracking a market cap weighted index (such as the S&P 500) is not allocating an equal amount of money to each stock in that index but allocating more to the large cap stocks in the index. This is fine if they maintain their leadership, but historically this has not always been the case. The largest cap stocks in the S&P 500 in 1990 were Exxon, IBM, Loews, Raytheon, and Bristol-Myers Squibb. Which will they be in 2035? Perhaps not the same as they are today. 

Largest stocks in S&P 500
(Market cap of largest in brackets)
1990 Exxon ($63bn), IBM, Loews, Raytheon, Bristol-Myers Squibb
2000 Microsoft ($604bn), General Electric, Cisco, Walmart, Exxon
2010 Exxon ($322bn), Microsoft, Walmart, Google, Apple
2020 Apple ($1.3tr), Microsoft, Google, Amazon, Meta
2024 Apple ($3tr), Microsoft, Google, Amazon, Nvidia

The recent divergence of the Magnificent Seven shows the need to analyse each company individually in depth, and not be caught up in the herd.

The 7 have diverged

Source: Bloomberg, 21.3.2024. Normalised from 28.7.2023. 

We would suggest caution. The economic outlook still remains very uncertain. As data from the US Federal Reserve shows, the Global Economic Policy Uncertainty Index is well above its 20-year average.

Economic uncertainty remains high

Source: US Federal Reserve Economic Data, 01.02.2024 Global Economic Policy Uncertainty Index

There is great uncertainty over the number and timing of rate cuts. The US Federal Reserve is looking for greater confidence that inflation is on a sustainable downward path, before cutting interest rates, but job growth remains strong, and services prices are still increasing. It is unclear where rates will be by the end of 2024, as the dot plot shows. 

Bloomberg data trends

Source: Bloomberg, FOMC Dot Plot, as at 01.03.2024.

Part of the uncertainty is geopolitical, with wars in Ukraine and Gaza. In 2024, countries representing more than half the world’s GDP will have elections. The list of elections below cumulates in the US election. That will probably be between Biden and Trump, but the result could easily be tipped either way by how many votes the main candidates lose to an outsider, such as Robert F Kennedy Jr.

2024 key equity dates

Source: Jupiter, as at 29.02.24.

Will there be a resurgence in populism? If so, there could be important consequences for global trade and stability. Potential risks include continued Russian expansionism and China’s designs on Taiwan.

Amidst all this uncertainty, we think the pursuit of diversification make sense. Our market neutral strategy is designed to provide genuine diversification, with returns not correlated to either equity or bonds. It is based on a large opportunity set and a repeatable, dispassionate approach. We don’t put much faith in stories. We prefer hard data.

In order to mitigate behavioural biases, we have developed a highly rigorous, systematic investment process. Rather than employing traditional techniques, such as manually scrutinising company annual reports, meeting management teams, and studying by hand third-party analysis, we prefer to use computer-based techniques to analyse huge volumes of publicly available information. This allows us to scrutinise a large universe of global stocks against our diverse set of proprietary stock selection criteria, which we have developed, scientifically researched and refined over years.
1 https://financesonline.com/how-much-data-is-created-every-day/
2 Alejandro Bernales, Marcela Valenzuela, and Ilknur Zer (March 2023), Effects of Information Overload on Financial Markets: How Much Is Too Much? Board of Governors of the Federal Reserve System, International Finance Discussion Papers, Number 1372. Available at https://www.federalreserve.gov/econres/ifdp/files/ifdp1372.pdf