R-Squared for Investing: What It Is & How to Calculate It | Titan (2024)

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Table of Contents

What is r-squared?

How is r-squared used in investing?

How to use r-squared

Calculating r-squared

R-squared and investing style

R-squared and other statistics

Assessing goodness of fit in a regression model

R-squared FAQ

The bottom line

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R-Squared for Investing: What It Is & How to Calculate It

Sep 9, 2022

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9 min read

Learn all about how R-squared can be a good yardstick for investors to decide if they want investments that closely track an index, such as index funds.

R-Squared for Investing: What It Is & How to Calculate It | Titan (1)

Many investors, especially professional money managers and analysts, want to make comparisons. Are the stocks and funds in their portfolios keeping up with or lagging behind the stock market or a market index? And is there any connection between their investments and some benchmark like the Standard & Poor’s 500 Index? Do they move in tandem or in different directions? Is one driven by the other?

Statistics are used to help investors make these comparisons and see the tie between their investments and benchmarks. One of the most-cited statistics is known as r-squared, or the coefficient of determination.

What is r-squared?

In statistics, the term r-squared is a measure of the relationship between two things, called variables. R-squared is used to assess how much a change in one variable (call it Y, the investment) is determined by the change in the other variable (call it X, the benchmark or index). A statistical model is created to test the degree of relationship between the variables by comparing the actual values of Y (the investment’s returns) on a chart against the predicted returns represented by a line on the chart.

R-squared is derived from r, the symbol used to denote correlation, so it’s simply correlation squared. In finance and investing, correlation measures how often returns for two investments are moving in the same direction, or the opposite direction, with statistical values known as coefficients of between -1 and 1. Two assets in perfect positive correlation (both always rising) have a correlation value or coefficient of 1; two in perfect negative or inverse correlation (one always falling when the other is rising or vice versa) have a coefficient of -1. A coefficient of zero means the two investments have no correlation. Almost all correlations fall somewhere between these perfect extremes.

How is r-squared used in investing?

R-squared is often used to assess the degree to which an investment, typically a fund or portfolio, generates returns in line with the benchmark. Said another way, the r-squared statistic sizes up how much the investment’s returns are determined by the benchmark’s returns.

So an investor with a portfolio of stocks or stock funds might ask, “How much do my returns depend on the broad market’s returns?” A common example of this r-squared evaluation is a fund or stock portfolio in relation to the , the most widely used proxy for the U.S. stock market.

For example, if the XYZ Large Cap Fund has a correlation coefficient of 0.70 with the S&P 500, that means the fund returns and index returns are rising together 70% of the time.

R-squared, or correlation squared, for the XYZ Large Cap Fund then is:

0.7 X 0.7 = 0.49

R-squared is always smaller than r because it’s the product of two decimals. For investors it’s expressed more intuitively as a percentage, so 0.49 means 49% of XYZ’s returns are determined by the returns of its benchmark, the S&P 500.

How to use r-squared

The main value of r-squared in statistics is in quickly assessing whether the statistical model is a good fit for the data set—does the data support the hypothesized relationship between X and Y? In other words, how well did the model predict the investment’s results?

For investors, r-squared explains how much the performance of an investment is explained by the performance of a benchmark such as an index. A higher value of r-squared, closer to 1.0 or 100%, suggests it has greater power as a forecasting tool for the performance of a fund or portfolio. A low r-squared, all other things equal, usually indicates the model is not good for forecasting.

Beyond this simple explanation of the relationship between correlation and determination, the value of r-squared can also be found through statistical analysis of variables on a chart, called regression analysis. A regression model is meant to help forecast returns on an investment by using a data sample, such as the daily price changes for the investment and the benchmark for a certain period (three months, six months, one year, etc.). Each of the daily changes would be a data point on the regression chart.

Regression analysis involves creating a model hypothesis, or equation, of the relationship between the variables:

  • Dependent variable, Y, the stock, fund, or portfolio
  • Independent variable, X, the benchmark (S&P 500)

The regression is depicted on the chart with a straight line and a number of dots on or around the line. Here is an example:

R-Squared for Investing: What It Is & How to Calculate It | Titan (2)

The line, typically upward sloping, represents the equation meant to quantify the relationship between the variables. A basic model equation might look like this:

Y = bX + a

In the equation, a and b are constants—their value doesn’t change. For equations plotted on a chart, the constant a represents the intercept—the value where the sloping regression line intersects the Y axis. And b represents the slope, or beta, of the line, whether it’s steep or flat.

Let’s assume the constant a has a value of 1, and the constant b has a value of 2. The equation then is:

Y = 2X + 1

In plain English, the model’s equation is hypothesizing that the rate of return on Y (the investment) will be two times the rate of X (the benchmark/index), with a minimum rate of 1%.

Here’s another example of a regression chart, with the straight line of the model’s equation and the individual observations of the fund/portfolio returns as dots scattered around the line. Because the model’s simple equation produces a straight line, this is called linear regression.


R-Squared for Investing: What It Is & How to Calculate It | Titan (3)

Calculating r-squared

One purpose of regression analysis is to place the line through the scattered dots in a way that minimizes the average distance of the dots away from the line—that is, to discern a linear pattern through the scatter. This is called finding the best fit for the model to the data. It’s achieved through a series of calculations of the spread between the dots and the line, called least-squares regression.

The graph below shows an r-squared of 15% for a mutual fund, which means that only 15% of its returns are attributable to the returns of the index. The graph shows how widely the data points—the returns of the fund—are scattered away from the regression line. So an investor can intuitively see the weak relationship between the fund’s returns and the benchmark’s.


R-Squared for Investing: What It Is & How to Calculate It | Titan (4)

By contrast, the next graph below shows a much stronger relationship between the two variables—the plotted observations of the fund returns are clustered close to the regression line. The r-squared is 85%, meaning 85% of the fund’s returns are attributable to the index’s performance, and they show a better fit for the model’s proposed relationship between the two variables.

R-Squared for Investing: What It Is & How to Calculate It | Titan (5)

R-squared and investing style

Investors can look at r-squared values in relation to their investing style:

  • Passive investing:

    This usually involvesindex funds or exchange-traded funds (ETFs) that seek to match a broad market benchmark. Investors want high r-squared. For example, the Vanguard 500 Index Admiral Fund and the Fidelity 500 Index Fund have r-squared values at or close to 100%, or 1. Passive investments tend to cost less for investors because they only need to mimic the benchmark, and less effort is needed to construct and maintain the portfolio.

  • Active investing

    : The goal is to find investments that will beat the market. Investors expect lower r-squared because active portfolio managers seek stocks that don’t just match the index. A hedge fund would presumably have a lower r-square. Otherwise, an actively managed fund with higher costs but an r-squared of 97%, for example, might make investors question why they’re paying higher fees for a fund whose returns are mostly the result of changes in an index, when a lower-cost index fund produces about the same returns.

R-squared and other statistics

Some other variations of r-squared include:

Adjusted r-squared

This is used for linear regressions with more than one independent variable—for example, the benchmark return and the price of gold—that try to explain the dependent variable’s return. In statistics, adding another independent variable to a regression model will increase the r-squared reading.

R-squared only works as intended in a simple linear regression model with one explanatory variable. With a multiple regression made up of several independent variables, the r-squared must be adjusted lower to compensate for the possibility that the extra variables add no explanatory power to the model.

Beta

The slope of the regression line measures the magnitude of volatility in a portfolio’s returns relative to the benchmark. A beta of 1, for example, means that if the benchmark rises or falls 1% the portfolio rises or falls 1%. A beta of less than 1, for example 0.8, means that the portfolio is less volatile than the index— it rises or falls 0.8% when the benchmark rises or falls 1%. A beta of 1.2 means the portfolio is more volatile—it changes 1.2% when the benchmark changes 1%.

Investors can look at r-squared together with beta for a fuller understanding of the performance of their funds or portfolios. A fund with a high r-squared closely tracks the benchmark’s return. If it also has a high beta, above 1, that could mean outperforming the benchmark in a rising stock market—or doing worse than the benchmark when markets are declining.

Assessing goodness of fit in a regression model

Goodness of fit refers to how closely the scattered dots on the regression graph crowd around the regression line.

These differences should be free of what is called systematic bias—the data points should be randomly scattered around the regression line. Bias is indicated by another pattern in the scatterplot of data points, meaning another independent variable besides the benchmark –possibly a different benchmark—may explain the investment’s returns. Detecting bias requires a visual inspection of the scatterplot in the regression chart.

R-squared FAQ

Are low r-squared values inherently bad or good?

A low r-squared value can still provide some information about the general direction of investment returns, even with the wider dispersion of returns from the benchmark. But it can be a problem if the investor wants a forecast to be more precise, with a smaller range around the forecast. Higher r-squared values generally provide more precise forecasts.

What does an r-squared of 0.9 mean?

A value of 0.9 would mean that 90% of the return for a fund or portfolio is attributable to the return on a benchmark. In the stock market, that would mean 90% of an equity fund’s performance stems from the performance of an index such as the S&P 500.

The bottom line

R-squared can be a good yardstick for investors to decide if they want investments that closely track an index, such as index funds, or investments that correlate less with an index, such as actively managed funds and hedge funds. Although some familiarity with the concept of r-squared can be useful for the average investor, it primarily is a tool used by professionals in managing and constructing investment portfolios.

At Titan, we are value investors: we aim to manage our portfolios with a steady focus on fundamentals and an eye on massive long-term growth potential. Investing with Titan is easy, transparent, and effective.

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Certain information contained in here has been obtained from third-party sources. While taken from sources believed to be reliable, Titan has not independently verified such information and makes no representations about the accuracy of the information or its appropriateness for a given situation. In addition, this content may include third-party advertisem*nts; Titan has not reviewed such advertisem*nts and does not endorse any advertising content contained therein.

This content is provided for informational purposes only, and should not be relied upon as legal, business, investment, or tax advice. You should consult your own advisers as to those matters. References to any securities or digital assets are for illustrative purposes only and do not constitute an investment recommendation or offer to provide investment advisory services. Furthermore, this content is not directed at nor intended for use by any investors or prospective investors, and may not under any circ*mstances be relied upon when making a decision to invest in any strategy managed by Titan. Any investments referred to, or described are not representative of all investments in strategies managed by Titan, and there can be no assurance that the investments will be profitable or that other investments made in the future will have similar characteristics or results.

Charts and graphs provided within are for informational purposes solely and should not be relied upon when making any investment decision. Past performance is not indicative of future results. The content speaks only as of the date indicated. Any projections, estimates, forecasts, targets, prospects, and/or opinions expressed in these materials are subject to change without notice and may differ or be contrary to opinions expressed by others. Please see Titan’s Legal Page for additional important information.

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R-Squared for Investing: What It Is & How to Calculate It | Titan (2024)

FAQs

What is R-squared for investing? ›

R-squared measures how closely each change in the price of an asset is correlated to a benchmark. Beta measures how large those price changes are relative to a benchmark. Used together, R-squared and beta can give investors a thorough picture of the performance of asset managers.

What is the R2 that you calculated and what does it tell us? ›

The coefficient of determination, or R2 , is a measure that provides information about the goodness of fit of a model.

How do you calculate the R-squared value? ›

My statistics textbook suggests that the total error would be the sum of the explained and the unexplained error which in this case would be 2.74 + 22.75. The book then calculates r squared as the explained error divided by the total error which in this case would be 22.75/(2.74+22.75) = 0.89.

What is your R square value and what does it imply? ›

R-Squared values range from 0 to 1. An R-Squared value of 0 means that the model explains or predicts 0% of the relationship between the dependent and independent variables. A value of 1 indicates that the model predicts 100% of the relationship, and a value of 0.5 indicates that the model predicts 50%, and so on.

Is it better for R-squared to be higher or lower? ›

R-squared measures the goodness of fit of a regression model. Hence, a higher R-squared indicates the model is a good fit, while a lower R-squared indicates the model is not a good fit.

Is a higher or lower R-squared better? ›

Higher R-squared values suggest a better fit, but it doesn't necessarily mean the model is a good predictor in an absolute sense.

What is the R-squared in simple terms? ›

R-Squared (R² or the coefficient of determination) is a statistical measure in a regression model that determines the proportion of variance in the dependent variable that can be explained by the independent variable. In other words, r-squared shows how well the data fit the regression model (the goodness of fit).

What does an R-squared value of 0.3 mean? ›

We often denote this as R2 or r2, more commonly known as R Squared, indicating the extent of influence a specific independent variable exerts on the dependent variable. Typically ranging between 0 and 1, values below 0.3 suggest weak influence, while those between 0.3 and 0.5 indicate moderate influence.

What does an R2 value of 0.75 mean? ›

An R2 of 0.75 means that 75% of the variation in Y can be explained by the values for X.

How does Excel calculate R-squared value? ›

You can use the RSQ() function to calculate R² in Excel. If your dependent variable is in column A and your independent variable is in column B, then click any blank cell and type “RSQ(A:A,B:B)”.

How do you adjust R-squared? ›

Adjusted R squared is calculated by dividing the residual mean square error by the total mean square error (which is the sample variance of the target field). The result is then subtracted from 1. Adjusted R2 is always less than or equal to R2.

What does R mean in R-squared? ›

Unlike correlation (R) which measures the strength of the association between two variables, R-squared indicates the variation in data explained by the relationship between an independent variable and a dependent variable. R2 value ranges from 0 to 1 and is expressed in percentage.

How to interpret R-squared example? ›

The simplest r squared interpretation is how well the regression model fits the observed data values. Let us take an example to understand this. Consider a model where the R2 value is 70%. Here r squared meaning would be that the model explains 70% of the fitted data in the regression model.

What is a bad R-squared value? ›

In fact, if R-squared is very close to 1, and the data consists of time series, this is usually a bad sign rather than a good one: there will often be significant time patterns in the errors, as in the example above.

What does a bad R-squared mean? ›

A low R-squared basically means that your model does do not include all [random] variables that are associated with the outcome. That is not necessarily a problem as long as the omitted variables are not correlated with your predictors.

Why is low R-squared bad? ›

A low R-squared value indicates that your independent variable is not explaining much in the variation of your dependent variable - regardless of the variable significance, this is letting you know that the identified independent variable, even though significant, is not accounting for much of the mean of your ...

What does a low R-squared but significant mean? ›

However, what if your model has independent variables that are statistically significant but a low R-squared value? This combination indicates that the independent variables are correlated with the dependent variable, but they do not explain much of the variability in the dependent variable.

What does a low R2 value mean? ›

A low R-squared basically means that your model does do not include all [random] variables that are associated with the outcome. That is not necessarily a problem as long as the omitted variables are not correlated with your predictors.

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