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WayanEko
Apr 27, 2023 11:50 PM

When Less is More Education

S&P 500SP

Description

Let’s say you are trying to make a tough decision, you know like everyone did in their life. You've got loads of information at your fingertips, but how do you know what's most important? Should you spend hours analyzing every detail, using all the information, flooding your brain with the information or should you trust your gut and take a leap of faith?

It turns out this is a classic problem that experts have been studying for years. Their findings might surprise you.

You might think that more information is always better, I once felt the same. But that's not necessarily true. In fact, having too much information can actually lead to worse decisions and overconfidence in your abilities or simply just make your head hurt.

Let's look at a study where 25 experienced bookmakers were asked to predict the top five horses in 45 races. The bookmakers were given a list of 88 variables commonly found on a past performance chart of a racehorse, and they had to rank the importance of each one. Then, they were given past data on the races in increments of 5, 10, 20, and 40 variables, which they had previously selected as the most important.

What did the study find? Well, when the bookmakers only had five pieces of information, their accuracy and confidence were closely related. But as they received more information, their accuracy plateaued, and their confidence skyrocketed.

With 40 pieces of information, the bookmakers' confidence was over 30%, even though their accuracy remained the same. In other words, more information doesn't lead to more accuracy; it just leads to higher overconfidence.

A similar study looked at the ability of college football fans to predict the outcomes of 15 NCAA games. Participants had to demonstrate their knowledge of football before the study, and they were given a range of statistics, such as fumbles, turnover margin, and yards gained, to help them make their predictions.

The computer model was given the same data to see if more information would lead to better predictions.


So how did it go? The computer model's accuracy increased as more information was added, but the human experts' accuracy did not improve with more information. In fact, their accuracy remained about the same, regardless of whether they had six or 30 pieces of information. But just like the bookmakers, their confidence increased with the amount of information available, even though it didn't actually make them more accurate.

Related to stock analysis, a study was conducted where financial analysts were given the task to forecast fourth-quarter earnings in 45 cases. The information was presented in three different formats.


The first format consisted of the past three quarters of EPS, net sales, and stock price, which is the baseline data.
The second format included baseline data plus redundant or irrelevant information
The third format included baseline data plus non redundant information that should have improved forecasting ability, such as the fact that the dividend was increased.

The analysts were asked to provide their forecast and their confidence in their forecast.

Interestingly, both the redundant and nonredundant information significantly increased the forecast error, meaning that more information did not lead to better accuracy.

However, the analysts' self-reported confidence ratings for each of their forecasts increased significantly with the amount of information available. This suggests that more information did not help the analysts make better forecasts, but it did make them more overconfident in their predictions.

So what does all this mean? Well, it suggests that sometimes, less is more. When it comes to decision-making in trading or investing, it's important to consider the quality of the information you have, not just the quantity.

This reminds me of Joel Greenblatt, a prominent American investor and hedge fund manager, who has shown that when it comes to picking stocks, less is often more.

In fact, Greenblatt's strategy is refreshingly simple: he focuses on only two metrics - return on capital employed (ROCE) and earnings yield - to identify undervalued companies that have the potential to deliver strong returns.
While this may seem like an overly simplistic approach in today's world of big data and complex algorithms, Greenblatt's track record speaks for itself.

His investment firm, Gotham Capital, reportedly generated an average annualized return of 40% from 1985 to 2005, a remarkable feat that many attribute to his disciplined use of these two key metrics.
In a world where we are bombarded with endless amounts of data and information, it's refreshing to see that sometimes the simplest approach can be the most effective.
Comments
TradingView
This is a must-read for all traders, investors! Simplicity is so important. Featured in Editors' Picks.
ReallyMe
Many smart financial experts have already studied the topic of "less is more". If one takes this to the extreme, one comes to the conclusion:

“A blindfolded monkey throwing darts at a newspaper’s financial pages could select a portfolio that would do just as well as one carefully selected by experts.”
-Burton Malkiel, asset manager and author of “A Random Walk Down Wall Street”.

Why do you think that is? Because that's the very nature of markets. They are not predictable by themselves, so a judgment by an "expert" is often little better than that of a four-year-old child.
uttkarsh183
@ReallyMe, good
ReallyMe
@uttkarsh183, Thanks. Another common saying that expresses the same thing is: "Too much trend-chasing leads to the poorhouse".
quickinfo2emma
My greatest lesson from this piece is that I should always use the 20% that bring me the 80% needed result and discard the 80% that contributes only the 20% chances of victory according to pareto's 80/20 rule. The rule states that 80% of observed effect is actually caused by 20% of the input. Same thing 80% of the wastages are caused by 20% of the inputs. so go ahead and use the 20% of your qualitative inputs while eliminating the 20% that causes the most damages. Also seldomly use the remaining 60% that will generate average profits. My take. Thanks, it's been a wonderful article.
WayanEko
@quickinfo2emma, ah The Pareto principle. Good one.
reviewsily
This is an investing strategy, not a trading strategy.
vaibhavmathur
@reviewsily I have been doing swing trading using just three EMAs, and the simple strategy I follow is highly profitable.
I had been using Supertrend, RSI and Stochastics as well in that strategy earlier, but on removing them, the backtesting results still looked very similar, so I do not use these any more, and am still making as much profit as earlier. There is no reason to over-complicate your strategy.
GhileClint
yeah... sometimes less is more.
all you need is a simplistic approach or method that you can follow in a disciplined manner. if this does this, I will do that
ThewitcherCrypto
Good to know also that when you manage specific strategy and develop it much better than 1000 strategy you cant stick with .
Good content bro 😎
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