Stock Price Analysis Through Statistical And Data Science Tools An Overview

Stock Price Analysis Through Statistical And Data Science Tools An Overview by Vinaitheerthan Renganathan, published on April 30, 2021, offers a comprehensive examination of stock price analysis methods. This 150-page book is written in English and delves into various analytical techniques, including fundamental and technical analysis, which are influenced by factors such as company performance and economic conditions. The author discusses how these elements contribute to stock price volatility and outlines the statistical and data science tools used to predict stock movements.
Readers will find an overview of tools like Auto Regressive Integrated Moving Averages (ARIMA), regression analysis, and advanced data science models such as Decision Trees and Artificial Neural Networks. The book also explores contemporary methods like sentiment analysis of social media to gauge public sentiment towards stocks. While it provides a foundational understanding of R software for analysis, it does not offer specific investment advice on buying or selling stocks. Instead, it serves as a guiding resource for those interested in utilizing statistical and data science tools in the realm of stock trading.
Official synopsis Publisher
Stock price analysis involves different methods such as fundamental analysis and technical analysis which is based on data related to price movement of the stock in the past. Price of the stock is affected by various factors such as company’s performance, current status of economy and political factor. These factors play an important role in supply and demand of the stock which makes the price to be volatile in the short term. Investors and stock traders aim to book profit through buying and selling the stocks. There are different statistical and data science tools are being used to predict the stock price.
Data Science and Statistical tools assume only the stock price’s historical data in predicting the future stock price. Statistical tools include measures such as Graph and Charts which depicts the general trend and time series tools such as Auto Regressive Integrated Moving Averages (ARIMA) and regression analysis.
Data Science tools include models like Decision Tree, Support Vector Machine (SVM), Artificial Neural Network (ANN) and Long Term and Short Term Memory (LSTM) Models.
Current methods include carrying out sentiment analysis of tweets, comments and other social media discussion to extract the hidden sentiment expressed by the users which indicate the positive or negative sentiment towards the stock price and the company.
The book provides an overview of the analyzing and predicting stock price movements using statistical and data science tools using R open source software with hypothetical stock data sets. It provides a short introduction to R software to enable the user to understand analysis part in the later part.
The book will not go into details of suggesting when to purchase a stock or what at price. The tools presented in the book can be used as a guiding tool in decision making while buying or selling the stock.
Vinaitheerthan Renganathan
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