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Princeton University Library Catalog
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Financial analysis with ARIMA and time series forecasting.
Format
Video/Projected medium
Language
English
Εdition
[First edition].
Published/Created
[Birmingham, United Kingdom] : Packt Publishing, [2024]
Description
1 online resource (1 video file (6 hr., 41 min.)) : sound, color.
Details
Subject(s)
Time-series analysis
[Browse]
Instructor
Lazy Programmer (Firm)
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Publisher
Packt Publishing
[Browse]
Summary note
Begin with an introduction to time series analysis, providing a solid foundation for understanding the nature and structure of time series data. You'll explore key concepts such as modeling versus predicting, and learn essential data transformation techniques including power, log, and Box-Cox transformations. These fundamentals set the stage for more advanced topics. As you delve deeper, you'll encounter a thorough examination of financial time series. You'll learn about random walks, the random walk hypothesis, and the importance of baseline forecasts. The course then transitions to a comprehensive study of ARIMA models. You'll explore autoregressive models (AR), moving average models (MA), and the combination of these in ARIMA. Practical coding sessions will reinforce your understanding, allowing you to apply stationarity tests, ACF, PACF, and Auto ARIMA techniques to real financial data. The latter part of the course focuses on the application of ARIMA models in forecasting. You'll learn how to implement ARIMA in various scenarios, from stock returns to sales data. The course wraps up with a detailed guide on forecasting out-of-sample data, ensuring you can apply your new skills in real-world situations. Supplementary sections offer guidance on setting up your coding environment and additional help for Python beginners.
Source of description
OCLC-licensed vendor bibliographic record.
ISBN
9781836644231
OCLC
1450899320
Statement on language in description
Princeton University Library aims to describe library materials in a manner that is respectful to the individuals and communities who create, use, and are represented in the collections we manage.
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