Quantitative Investment Strategies: A Quick Guide (2024)

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Coresignal

February 18, 2022

The widespread application of quantitative investment strategies is a relatively recent trend. Over the past few decades, the field of quant investing has made significant advancements in the world of finance. Additionally, the field has been evolving to create new investment technologies that ultimately simplify the process. This article will provide you with a better understanding of quant investing and how it can be implemented for better decision-making and increased portfolio returns. Let's start by taking a closer look at the evolution of quantitative investing.

The emergence of quantitative investing

Sam Eisenstadt established the roots of quant investing in 1965. He created the first quantitative ranking system using 6-month trailing performance and discovered that the top stocks were outperforming the bottom-ranked stocks.

Nowadays, most of the investment community has adopted quant investment strategies. Many funds and institutional investors use them to outperform stocks and increase their returns. Let’s have a closer look at quantitative investing and why it attracted the attention of many investors.

What is quantitative investing?

Quantitative investing, often called systematic investing, refers to adopting investment strategies that analyze historical quantitative data. You can conduct data analysis and use advanced models to calculate probabilities and identify the optimal moment to make profitable investment transactions.

Quant investing consists of two essential parts: research, which could be based on proprietary research, and implementation.

What is a quant investing strategy?

A quant investing strategy is an advanced mathematical model developed by industry professionals, including programmers, statisticians, and investment analysts. The purpose is to identify stocks with a higher probability of outperforming an index using a broad range of characteristics. Different models are available and may consider various factors, as we discuss in the next section below regarding different types of investing strategies.

On a side note, quantitative techniques also help with asset allocation and risk management as well as aligning portfolios according to the needs of the clients.

Early adopters are now investing in public web data sources and methods to interpret large amounts of information using machine-learning models. This data, as opposed to traditional data sources, comes from web scraping which refers to collecting data from websites. Machine-learning models are a branch of artificial intelligence (AI) that allows you to compile and interpret a large volume of information to make better investment decisions.

Narrowing down the scope of public web data, historical headcount data could be one of the metrics to track. With this information, you can draw up a graph and see the changes in headcount in a company to determine its growth. Headcount data allows you to see how well a company is doing in terms of its size and hiring tendencies. A stagnant graph line might indicate that the company is standing still and not making any significant moves or expansion decisions.

Quantitative Investment Strategies: A Quick Guide (6)

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Track headcount growth over time to identify company growth trends.

For instance, you can see Tesla's headcount data below and decide for yourself what insights you can gather. No words are better than getting to see the data used in practice.

Quantitative Investment Strategies: A Quick Guide (7)

Quantitative Investment Strategies: A Quick Guide (8)

Quantitative investing, often called systematic investing, refers to adopting investment strategies that analyze historical quantitative data.

Types of quantitative investment strategies

Most quantitative strategies are known as relative value or directional. One aspect these strategies have in common is that they use software and computer models to predict outcomes using historical data. Quantitative investing is also known as data-driven investing.

Relative value quant strategies aim to identify pricing relationships and capitalize on them. For example, investors may use a model that finds a predictable pricing relationship between short-term government bonds and long-term government bonds.

Directional strategies follow trends or other patterns that might suggest price increases or decreases. For instance, these aim to find historical evidence using quantitative data to increase the long-term government bond prices in the future.

Some common quant investment strategies:

  • Quantitative value strategy uses all the information in a company’s income statement and balance sheet. The model calculates an aggregated score and ranks equities;
  • Event-driven arbitrage refers to strategies that analyze data regarding events, such as changes in regulations, corporate actions, and more. Buying and selling transactions occur if the model establishes a specific pattern in price movements;
  • Risk parity funds refer to the concept that gains in one asset class offset losses in another asset class. This strategy may improve risk-adjusted returns over a long period;
  • Passive investors use smart beta strategies (i.e., in mutual funds or ETFs) to improve the risk-adjusted returns using other factors than the market cap;
  • Statistical arbitrage seeks to identify misplaced securities using the relationship between them. This strategy often employs financial ratios to open short and long positions. It's one of the active trading strategies;
  • Investors initially used managed futures strategies on future markets to follow the major trends on the market. Nowadays, they have become more common in the stock markets, too;
  • Factor-investing strategies use one or more factors that led to outperforming a benchmark index in the past. Some examples include growth, momentum, market cap, and value. The mathematical model scores each stock according to these factors and then uses the aggregate score to rank each of them;
  • Systematic global macro strategies seek to identify countries and regions with favorable fundamentals. In other words, the model allocates the funds by analyzing the economy in various areas around the world;
  • AI and big data strategies are the newest types of quant strategies. Generally, AI investing involves utilizing public web data. Additionally, it is important to note that research has reported that machine-learning-based quant strategies tend to be more efficient than traditional quantitative investments.
  • Multi-asset strategies refer to combining several different types of assets into one diverse portfolio. The types of assets could range from stocks and bonds to real estate or cash.

Most quantitative strategies are known as relative value or directional.

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Quantitative Investment Strategies: A Quick Guide (10)

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Benefits of quant investing

Now that we have unpacked the more common investment strategies, let’s see why investors are increasingly adopting these strategies.

Consistent and reliable

Quantitative trading does not include emotional or psychological factors. Since a computer ranks and makes investment decisions, historical data and numbers are the only considered factors, so they are highly consistent. It makes quantitative models more reliable and allows for better risk management since there is no room for human error in terms of calculations.

Cost-efficient investing

Given that there is no human input apart from developing the model, quant investing is more cost-efficient than other investment types. There is no need to hire experienced analysts or portfolio managers. Computers analyze all the data available and then make the transactions.

Easier to match the investor’s profile

Since quantitative analysis uses only historical numbers, investors can more easily predict risk and expected returns. This makes it easier to match a particular risk profile or create a portfolio for specific needs.

A larger pool of securities

Because a complex mathematical model conducts the process, there is no need for a sizable quantitative analyst team to identify outperforming stocks. Furthermore, investors can adjust the model according to relevant variables and apply it to any market and any volume of securities.

Overall

Given these benefits, it is clear that quantitative investors increasingly consider the clear potential of public web data and machine-learning methods to generate improved returns. Nowadays, most if not all strategies use software and advanced mathematical models to rank financial assets and make investment decisions on your behalf. To understand how this works, let’s examine quant investing strategies.

Quant investing offers the following benefits: consistency, reliability, cost-efficiency, easier predictions, and identification of outperforming stocks.

Challenges of quant investing

Shortcomings of using historical data

Like any other model or theory developed by humans, the quantitative investment strategy used is as efficient as the person who created it. One famous example is Long-Term Capital Management, a quant hedge fund that was extremely successful during the 1990s.

Led by Nobel prize winners Robert C. Merton and Myron S. Scholes, the fund attracted funds from all types of investors and enjoyed extra returns by identifying and exploiting market inefficiencies. Unfortunately, the model they used did not consider the possibility that the Russian government may default on its debt. When this happened, its founders had to liquidate it.

Since the quant hedge fund had deep roots in the world markets, its collapse had dramatic consequences. The Federal Reserve, other investment funds, and even banks had to intervene to support the fund from causing more damage.

Quantitative funds

Quantitative strategies require a relatively high amount of holdings since it's based on expected returns and probabilities. Also, they demand extensive periods of time to perform, and under the circ*mstances of a shorter time period, they will most likely underperform. However, this does not apply to all quant funds and additional data sources are employed to enable the short-term generation of alpha.

Sudden changes

There are unexpected changes or situations that only humans might recognize – such as a corporate scandal or management change that computers cannot identify. Although, one workaround could be implementing a mention tool in your system that could track negative sentiment and provide you with data to identify some of the changes.

However, once qualitative data is finally enabled in AI models, these issues will no longer be a problem.

The future of quantitative investing

Nowadays, numerous investors focus on technology and, particularly, machine-learning methods; for instance, more research focuses on the benefits of machine learning methods in venture capital. When used together with the investment strategies mentioned earlier, analysts may uncover relationships and patterns that haven’t been used before.

This has the potential of leading to significant improvements in the predictive models generated by quant investing models while minimizing their shortcomings, such as enabling artificial intelligence to include qualitative data in its models.

Quantitative Investment Strategies: A Quick Guide (13)

Quantitative Investment Strategies: A Quick Guide (14)

Summary

Quantitative investing is a systematic method that uses evidence-based data to make investment decisions. This lowers the overall costs of investments, requires less labor, and ultimately minimizes human input in the process. While a quant strategy is not a fool-proof one, the advances in artificial intelligence and big data indicate that the industry’s future may soon uncover unexpected opportunities for investors.

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Quantitative Investment Strategies: A Quick Guide (2024)

FAQs

Quantitative Investment Strategies: A Quick Guide? ›

Quantitative investing, often called systematic investing, refers to adopting investment strategies that analyze historical quantitative data. You can conduct data analysis and use advanced models to calculate probabilities and identify the optimal moment to make profitable investment transactions.

What are the quantitative investment strategies? ›

Quantitative investment strategies include statistical arbitrage, factor investing, risk parity, machine learning techniques, and artificial intelligence approaches. Commonly used factors in quantitative analyses include value, momentum, size, quality, and volatility.

What is a QIS strategy? ›

What are Quantitative Investment Strategies? QIS are systematic non-discretionary trading strategies that generally take the form of indices.

What is the quantitative method of investment? ›

Quantitative investing, also known as systematic investing, is an investment approach that uses advanced mathematical modelling, computer systems and data analysis to calculate the optimal probability of executing a profitable trade.

What are the best quant strategies? ›

Six of the most common strategies used in quant trading include momentum investing, trend following, mean reversion, statistical arbitrage, algorithmic pattern recognition, and sentiment analysis.

What is an example of a quantitative strategy? ›

Some examples of quantitative investment strategies are; portfolio rebalancing (ETF fund flow), momentum investing and risk-parity investing.

What is BlackRock quantitative investing? ›

A ground-breaking quantitative investment team that applies the latest Big Data and Machine Learning techniques to the world of investing to achieve superior outcomes for our clients, including large institutional investors, retirement plans of the world's leading companies and individual investors saving for the ...

How much do quant investment bankers make? ›

Compensation in the field of finance tends to be very high, and quantitative analysis follows this trend. 45 It is not uncommon to find positions with posted salaries of $250,000 or more, and when you add in bonuses, a quant could earn $500,000+ per year.

What is a Qi hedge fund? ›

The Investec Specialist Investments SA Credit Co- investment (QI) Hedge Fund (the “Fund”) is a specialist portfolio that aims to provide the investor with income and capital growth by investing in diversified credit opportunities originated by Investec Bank.

What are the 5 quantitative methods? ›

There are five types of quantitative research designs, and they are:
  • Descriptive Research.
  • Survey Research.
  • Correlational Research.
  • Quasi-experimental Research Design.
  • Experimental Research.

What is an example of a quantitative investment? ›

Quantitative investing is also known as data-driven investing. Relative value quant strategies aim to identify pricing relationships and capitalize on them. For example, investors may use a model that finds a predictable pricing relationship between short-term government bonds and long-term government bonds.

Which asset is the most liquid? ›

Cash is the most liquid asset possible as it is already in the form of money. This includes physical cash, savings account balances, and checking account balances.

Who is the most famous quant investor? ›

James Harris Simons (born 25 April 1938) is an American hedge fund manager, investor, mathematician, and philanthropist. He is the founder of Renaissance Technologies, a quantitative hedge fund based in East Setauket, New York.

Who is the most famous quant trader? ›

One popular trader known for using quantitative strategies is James Simons. He is a mathematician, hedge fund manager, and founder of Renaissance Technologies, a highly successful and secretive quantitative hedge fund.

What is the most successful quant trading strategy? ›

One of the most successful quant trading strategies is called “mean reversion.” This strategy is based on the idea that prices of stocks and other financial instruments tend to revert to their average values over time.

What are the 4 types of quantitative research? ›

There are four main types of Quantitative research: Descriptive, Correlational, Causal-Comparative/Quasi-Experimental, and Experimental Research. attempts to establish cause- effect relationships among the variables.

Which of these are common types of quantitative trading strategies? ›

Relative Value Strategies
  • Government securities of two different countries.
  • Government securities of two different lengths to maturity.
  • Corporate vs. mortgage bond securities.
  • The differential in implied volatility between two derivatives.
  • Equity prices vs. ...
  • Corporate bond yield spreads vs.

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