
- 164 pages
- English
- ePUB (mobile friendly)
- Available on iOS & Android
Data Analytics for Finance Using Python
About this book
Unlock the power of data analytics in finance with this comprehensive guide. 'Data Analytics for Finance Using Python' is your key to unlocking the secrets of the financial markets.
In this book, you'll discover how to harness the latest data analytics techniques, including machine learning and inferential statistics, to make informed investment decisions and drive business success.
With a focus on practical application, this book takes you on a journey from the basics of data preprocessing and visualization to advanced modeling techniques for stock price prediction.
Through real-world case studies and examples, you'll learn how to:
- Uncover hidden patterns and trends in financial data
- Build predictive models that drive investment decisions
- Optimize portfolio performance using data-driven insights
- Stay ahead of the competition with cutting-edge data analytics techniques
Whether you're a finance professional seeking to enhance your data analytics skills or a researcher looking to advance the field of finance through data-driven insights, this book is your essential resource.
Dive into the world of data analytics in finance and discover the power to make informed decisions, drive business success, and stay ahead of the curve.
This text provides a detailed summary of the book's content, highlighting its practical focus, real-world applications, and the benefits of reading the book. It's a great way to give potential readers a clear understanding of what the book has to offer.
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Information
Table of contents
- Cover
- Half Title
- Series
- Title
- Copyright
- Contents
- Preface
- Authors
- Chapter 1 Stock Investments Portfolio Management by Applying K-Means Clustering
- Chapter 2 Predicting Stock Price Using the ARIMA Model
- Chapter 3 Stock Investment Strategy Using a Logistic Regression Model
- Chapter 4 Predicting Stock Buying and Selling Decisions by Applying the Gaussian Naive Bayes Model Using Python Programming
- Chapter 5 The Random Forest Technique Is a Tool for Stock Trading Decisions
- Chapter 6 Applying Decision Tree Classifier for Buying and Selling Strategy with Special Reference to MRF Stock
- Chapter 7 Descriptive Statistics for Stock Risk Assessment
- Chapter 8 Stock Investment Strategy Using a Regression Model
- Chapter 9 Comparing Stock Risk Using F-Test
- Chapter 10 Stock Risk Analysis Using t-Test
- Chapter 11 Stock Investment Strategy Using a Z-Score
- Chapter 12 Applying a Support Vector Machine Model Using Python Programming
- Chapter 13 Data Visualization for Stock Risk Comparison and Analysis
- Chapter 14 Applying Natural Language Processing for Stock Investors Sentiment Analysis
- Chapter 15 Stock Prediction Applying LSTM