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Quantitative Investing Basics 2026: Make Decisions with Data

Quantitative investing is the future of investing. This article introduces the core concepts, basic framework, and practical steps of quantitative investing from scratch, helping you upgrade from gut-feel trading to data-driven investing.

Algo Lab TeamPublished on 2026-05-10 08:00

Key Takeaways

Core concepts of quantitative investing: 1) Data-driven -- make decisions with data, not feelings; 2) Systematic -- only execute with clear rules; 3) Backtest verification -- validate strategies with historical data. Basic framework: Data Collection / Factor Design / Strategy Development / Backtest Verification / Live Execution. Key metrics: Annualized Return, Maximum Drawdown (MDD), Sharpe Ratio, Win Rate, Profit/Loss Ratio. Advantages of quantitative investing: Objective, Verifiable, Efficient, Replicable.

Core Concepts of Quantitative Investing

Quantitative investing is about turning investment decisions into quantifiable rules, using data and models to guide trading. Its core belief is: Data is more reliable than gut feeling. Visit our Strategy Center to explore quantitative stock selection solutions.

Three Core Principles of Quantitative Investing

  1. Data-Driven: Make decisions with data, not feelings or tips
  2. Systematic: Only execute when clear rules exist; no rules, no trading
  3. Backtest Verification: Validate strategies with historical data instead of blind faith

Basic Framework of Quantitative Investing

Layer 1: Data Collection

Data TypeExamples
Price DataOpen, Close, High, Low
Volume DataDaily volume, volume change rate
Fundamental DataP/E, EPS, ROE, Debt Ratio
Technical IndicatorsMACD, RSI, Bollinger Bands, ATR

Layer 2: Factor Design

Factors are quantifiable characteristics that affect stock performance:

Factor TypeExamplesUse Case
Momentum FactorPast 6-month returnTrend following
Value FactorLow P/E, Low P/BValue investing
Quality FactorHigh ROE, Low debtSelect quality companies
Volatility FactorLow volatilityRisk control

Layer 3: Strategy Development

Turn factor combinations into executable trading rules:

If (Momentum Factor > 0) AND (Value Factor < Industry Average) AND (Quality Factor > 15%):
  Buy
If (Momentum Factor < 0) OR (Stop-loss triggered):
  Sell

Layer 4: Backtest Verification

Use historical data to test strategy performance. See Backtesting Basics for more details.

Layer 5: Live Execution

Put verified strategies into practice:

  • Start with small capital
  • Observe differences between live and backtest results
  • Continuously optimize the strategy

Key Performance Metrics

MetricCalculationTarget Value
Annualized ReturnAnnualized total return> 10%
Maximum Drawdown (MDD)Historical maximum loss< 20%
Sharpe Ratio(Return - Risk-free rate) / Volatility> 1.0
Win RateWinning trades / Total trades40-60%
Profit/Loss RatioAverage win / Average loss> 2:1

For more risk metrics, refer to Drawdown Management Strategy.


Advantages of Quantitative Investing

AdvantageDescription
ObjectivityLet data speak, free from emotional interference
VerifiabilityBacktests can prove strategy effectiveness
EfficiencyAutomate processing of large amounts of data
ReplicabilityGood strategies can be reused
Controllable RiskQuantitative models can precisely manage risk exposure

How to Start Quantitative Investing?

Beginner Stage

  1. Learn basic technical indicators (MACD, RSI, Moving Averages)
  2. Build simple screening criteria (e.g., Stock Screener)
  3. Execute trades manually according to rules

Intermediate Stage

  1. Learn backtesting methods
  2. Design your own multi-factor model
  3. Use quantitative platforms to assist decision-making

Advanced Stage

  1. Build an automated trading system
  2. Use machine learning to optimize factor weights
  3. Manage multi-strategy portfolios

Common Misconceptions

Misconception 1: "Quantitative Investing = Algorithmic Trading"

The core of quantitative investing is rule-based thinking, not code. You can absolutely execute quantitative strategies manually.

Misconception 2: "Quantitative Investing Requires Advanced Math"

Basic quantitative strategies only need addition, subtraction, multiplication, and division. What really matters is writing down your trading logic clearly.

Misconception 3: "Quantitative Strategies Never Lose Money"

Quantitative strategies also have losing periods. Their advantage isnt avoiding losses, but knowing why you lost and being able to systematically improve.


Summary

The core value of quantitative investing:

  1. From Subjective to Objective -- Replace feelings with data
  2. From Chaos to System -- Follow clear rules
  3. From Guesswork to Verification -- Prove strategy effectiveness through backtesting
  4. From Emotion to Calm -- Rules curb emotional interference, and use the Stock Radar for data-driven decisions

Remember: The essence of quantitative investing is not complex math, but making investment decisions using scientific methods. Start with systematic trading and gradually build your quantitative system.

#Quantitative Investing

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