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Data Science for Web3

You're reading from   Data Science for Web3 A comprehensive guide to decoding blockchain data with data analysis basics and machine learning cases

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Product type Paperback
Published in Dec 2023
Publisher Packt
ISBN-13 9781837637546
Length 344 pages
Edition 1st Edition
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Concepts
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Author (1):
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Gabriela Castillo Areco Gabriela Castillo Areco
Author Profile Icon Gabriela Castillo Areco
Gabriela Castillo Areco
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Toc

Table of Contents (23) Chapters Close

Preface 1. Part 1 Web3 Data Analysis Basics
2. Chapter 1: Where Data and Web3 Meet FREE CHAPTER 3. Chapter 2: Working with On-Chain Data 4. Chapter 3: Working with Off-Chain Data 5. Chapter 4: Exploring the Digital Uniqueness of NFTs – Games, Art, and Identity 6. Chapter 5: Exploring Analytics on DeFi 7. Part 2 Web3 Machine Learning Cases
8. Chapter 6: Preparing and Exploring Our Data 9. Chapter 7: A Primer on Machine Learning and Deep Learning 10. Chapter 8: Sentiment Analysis – NLP and Crypto News 11. Chapter 9: Generative Art for NFTs 12. Chapter 10: A Primer on Security and Fraud Detection 13. Chapter 11: Price Prediction with Time Series 14. Chapter 12: Marketing Discovery with Graphs 15. Part 3 Appendix
16. Chapter 13: Building Experience with Crypto Data – BUIDL 17. Chapter 14: Interviews with Web3 Data Leaders 18. Index 19. Other Books You May Enjoy Appendix 1
1. Appendix 2
2. Appendix 3

Discussing traditional pipelines

The initial approach involves statistical modeling, using models such as ARIMA, ARIMA with exogenous variables (ARIMAX), and Auto ARIMA. To work with them, we need to address two additional challenges: ensuring the stationarity of the time series and determining the appropriate model order.

Statistical models perform better when applied to stationary time series. Traditional statistical time series models such as ARIMA are more effective when dealing with stationary time series. Resolving this issue will be part of the preprocessing phase.

The second challenge lies in the modeling phase, which involves understanding the dataset, determining the appropriate lags, and defining time windows. We will approach the solution manually using the Auto ARIMA algorithm, which handles hyperparameters automatically.

Preprocessing

Various functions can be employed to transform non-stationary time series data into a format suitable for our models. Examples...

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