Why is it Important to understand TimeSeries in Algo Trading?

Time series analysis plays an important role in understanding and forecasting stock market behaviour

Time series analysis plays an important role in understanding and forecasting stock market behaviour

What is Algorithmic Trading?

Algorithmic trading, also known as algo trading, is a method of executing trades in financial markets using pre-programmed instructions that automatically execute trades based on certain criteria or market conditions.

Algo trading is commonly used by institutional investors such as hedge funds, banks, and pension funds, as well as by individual traders. The use of algorithms can lead to increased efficiency and speed of trading, as well as reduced transaction costs. However, algo trading can also come with risks, such as the potential for errors in the programming or unexpected market movements that could trigger unintended trades.

What is Time Series?

In the context of the stock market, a time series is a set of historical stock market data that is collected and organised over a period of time. This data typically includes the prices of a particular stock, index, or other financial instrument at different points in time, and can also include other metrics such as trading volume or market capitalisation.


If you're interested in trading, then you've likely heard of algorithmic trading, or algo trading for short. This approach uses sophisticated mathematical models and algorithms to analyze market data and identify buying and selling opportunities automatically. By doing so, algo trading eliminates the need for human intervention in executing trades.

When it comes to analyzing stock market data, one popular method is time series analysis. This technique involves studying historical data to identify patterns, trends, and relationships between different variables.

Technical analysts often use time series data to develop trading strategies and make predictions about future market movements. By using tools such as moving averages, chart patterns, and technical indicators, traders can identify patterns and trends in the data and make informed decisions about buying, selling, or holding stocks or other financial instruments.

By leveraging the power of algo trading and time series analysis, traders can gain a more profound understanding of the stock market and make more informed investment decisions.

Components of Stock Market Data

Stock market data typically includes a variety of components that can provide insights into the performance of individual stocks, as well as broader market trends. Some of the most common components of stock market data include:

  1. Stock prices: The prices of individual stocks at different points in time are a key component of stock market data. This includes the opening and closing prices, as well as intra-day highs and lows.

  2. Volume: The total number of shares traded for a particular stock over a given time period is known as volume. Volume can be an important indicator of market sentiment and can help investors understand the level of interest in a particular stock.

  3. Market capitalisation: Market capitalisation is the total value of a company's outstanding shares. It is calculated by multiplying the total number of shares by the current market price per share.

  4. Dividends: Dividends are payments made by companies to their shareholders as a share of profits. Dividend data can provide insights into a company's financial health and growth potential.

  5. Earnings: Earnings reports provide information on a company's financial performance, including revenues, expenses, and net income. This information can be used to evaluate the financial health and growth potential of a company.

  6. News and events: News and events that impact the stock market, such as company announcements, economic reports, and geopolitical events, can also be an important component of stock market data.

By analyzing these components and searching for patterns and trends, investors and traders can gain a more profound understanding of the stock market and make more informed investment decisions.

If you play close attention, most of these components are time—varying. Typically, Period and Interval are two aspects of time which are factored in. For example,

  • Stock Closing Price for a year with the interval being 1 day

  • Daily Volume for # of traded days

  • Ticker data (almost real-time or Second internal

  • Annual Earning Reports

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Components of Time Series

By identifying these components in a time series, analysts can gain a more in-depth understanding of the underlying patterns and trends in the data.

This information can be used to make predictions, develop forecasting models, and inform decision-making for Quantitative finance.

  1. Trend: A trend is a long-term increase or decrease in the data over time. It can be upward, downward, or stable.

  2. Seasonality: Seasonality refers to the regular and periodic fluctuations in the data that occur within a year or other fixed time period. For example, sales of winter clothing may be higher during the winter months, while sales of summer clothing may be higher in the summer months.

  3. Cyclical components: Cyclical components are fluctuations in the data that occur over a period longer than a year. They can be influenced by factors such as economic cycles or business cycles.

  4. Irregular components: Irregular components are unexpected fluctuations in the data that are not accounted for by trend, seasonality, or cyclical components. They may be due to random events, measurement error, or other factors.

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Putting Theory to Practise

We will look at two simple strategies that are purely time series based and are extremely popular in the trading world. I would like to point out that this is not a trading advice and the examples just illustrate the concept.

Golden Crossover strategy

The Golden Crossover Strategy is a popular technical analysis trading strategy used in the stock market. It involves using two moving averages of different lengths to identify buying and selling signals.

  • The two moving averages used in the Golden Crossover Strategy are the 50-day moving average and the 200-day moving average.

  • The 50-day moving average is calculated by taking the average price of a stock over the last 50 days, while the 200-day moving average is calculated by taking the average price of a stock over the last 200 days.

The Golden Crossover occurs when the 50-day moving average crosses above the 200-day moving average, indicating a bullish signal. This is interpreted as a buy signal, as it suggests that the stock is trending upwards and has the potential to increase in value.

import yfinance as yf import numpy as np

Download historical stock data for a given ticker symbol

stock_data = yf.download('AAPL', start='2020-01-01', end='2022-01-01')

Calculate the 50-day and 200-day moving averages

stock_data['50_day_ma'] = stock_data['Adj Close'].rolling(window=50).mean() stock_data['200_day_ma'] = stock_data['Adj Close'].rolling(window=200).mean()

Generate signals based on the Golden Crossover strategy

stock_data['signal'] = 0.0 stock_data['signal'][50:] = np.where(stock_data['50_day_ma'][50:] > stock_data['200_day_ma'][50:], 1.0, 0.0)

Calculate the positions based on the signals

stock_data['position'] = stock_data['signal'].diff()

Plot the stock prices, moving averages, and trading signals

import matplotlib.pyplot as plt

plt.figure(figsize=(10,5)) plt.plot(stock_data['Adj Close'], label='AAPL') plt.plot(stock_data['50_day_ma'], label='50-day MA') plt.plot(stock_data['200_day_ma'], label='200-day MA')

Plot the buy and sell signals

plt.plot(stock_data[stock_data['position'] == 1].index, stock_data['50_day_ma'][stock_data['position'] == 1], '^', markersize=10, color='green', label='buy') plt.plot(stock_data[stock_data['position'] == -1].index, stock_data['50_day_ma'][stock_data['position'] == -1], 'v', markersize=10, color='red', label='sell') plt.xlabel('Date') plt.ylabel('Price') plt.title('Golden Crossover Strategy for AAPL') plt.legend() plt.show()

ARIMA Model (Autoregressive Integrated Moving Average)

The ARIMA model consists of three components: autoregression, integration, and moving average. Autoregression refers to the use of past values of the time series as predictors for future values. Integration involves transforming the data to make it stationary, meaning that the mean and variance are constant over time. Moving average involves using past errors as predictors for future values.

To use ARIMA for algo trading, historical stock price data is first analyzed to identify the trend, seasonality, and other components of the time series. The data is then transformed to make it stationary, and an ARIMA model is fit to the transformed data. The model can be used to forecast future stock prices, and these forecasts can be used to make trading decisions automatically.

Summary

Algorithmic trading is the use of pre-programmed instructions to automatically execute trades in financial markets based on certain criteria or market conditions. It is popular among institutional investors and individual traders for its speed and efficiency, although it also comes with risks. Time series, on the other hand, refers to a set of historical stock market data collected and organised over a period of time, typically including stock prices and trading volumes. Technical analysts use time series analysis to identify patterns and trends and develop trading strategies.

Components of stock market data include stock prices, volume, market capitalisation, dividends, earnings, and news and events, all of which can provide insights into the performance of individual stocks and broader market trends. In analyzing these components and searching for patterns and trends, investors and traders can gain a more profound understanding of the stock market and make more informed investment decisions. Time series analysis helps analysts identify the components of a time series, such as trend, seasonality, cyclical components, and irregular components, which can inform decision-making in quantitative finance.

The article also includes examples of two simple trading strategies based on time series analysis: the Golden Crossover Strategy and the Momentum Strategy. These strategies are not intended as trading advice but are used to illustrate the concept of time series analysis in trading.

References

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