Finding Ghosts in Your Data: Anomaly Detection Techniques with Examples in Python
Autor Kevin Feaselen Limba Engleză Paperback – 10 noi 2022
Discover key information buried in the noise of data by learning a variety of anomaly detection techniques and using the Python programming language to build a robust service for anomaly detection against a variety of data types. The book starts with an overview of what anomalies and outliers are and uses the Gestalt school of psychology to explain just why it is that humans are naturally great at detecting anomalies. From there, you will move into technical definitions of anomalies, moving beyond "I know it when I see it" to defining things in a way that computers can understand.
The anomaly detection techniques and examples in this book combine psychology, statistics, mathematics, and Python programming in a way that is easily accessible to software developers. They give you an understanding of what anomalies are and why you are naturally a gifted anomaly detector. Then, they help you to translate your human techniques into algorithms that can be used to program computers to automate the process. You’ll develop your own anomaly detection service, extend it using a variety of techniques such as including clustering techniques for multivariate analysis and time series techniques for observing data over time, and compare your service head-on against a commercial service.
What You Will Learn
- Understand the intuition behind anomalies
- Convert your intuition into technical descriptions of anomalous data
- Detect anomalies using statistical tools, such as distributions, variance and standard deviation, robust statistics, and interquartile range
- Apply state-of-the-art anomaly detection techniques in the realms of clustering and time series analysis
- Work with common Python packages for outlier detection and time series analysis, such as scikit-learn, PyOD, and tslearn
- Develop a project from the ground up which finds anomalies in data, starting with simple arrays of numeric data and expanding to include multivariate inputs and even time series data
Who This Book Is For
For software developers with at least some familiarity with the Python programming language, and who would like to understand the science and some of the statistics behind anomaly detection techniques. Readers are not required to have any formal knowledge of statistics as the book introduces relevant concepts along the way.
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Specificații
ISBN-13: 9781484288696
ISBN-10: 1484288696
Pagini: 353
Ilustrații: XX, 353 p. 106 illus.
Dimensiuni: 178 x 254 mm
Greutate: 0.65 kg
Ediția:1st ed.
Editura: Apress
Colecția Apress
Locul publicării:Berkeley, CA, United States
ISBN-10: 1484288696
Pagini: 353
Ilustrații: XX, 353 p. 106 illus.
Dimensiuni: 178 x 254 mm
Greutate: 0.65 kg
Ediția:1st ed.
Editura: Apress
Colecția Apress
Locul publicării:Berkeley, CA, United States
Cuprins
Part I. What is an Anomaly?.- Chapter 1. The Importance of Anomalies and Anomaly Detection.- Chapter 2. Humans are Pattern Matchers.- Chapter 3. Formalizing Anomaly Detection.- Part II. Building an Anomaly Detector.- Chapter 4. Laying out the Framework.- Chapter 5. Building a Test Suite.- Chapter 6. Implementing the First Methods.- Chapter 7. Extending the Ensemble.- Chapter 8. Visualize the Results.- Part III. Multivariate Anomaly Detection.- Chapter 9. Clustering and Anomalies.- Chapter 10. Connectivity-Based Outlier Factor (COF).- Chapter 11. Local Correlation Integral (LOCI).- Chapter 12. Copula-Based Outlier Detection (COPOD).- Part IV. Time Series Anomaly Detection.- Chapter 13. Time and Anomalies.- Chapter 14. Change Point Detection.- Chapter 15. An Introduction to Multi-Series Anomaly Detection.- Chapter 16. Standard Deviation of Differences (DIFFSTD).- Chapter 17. Symbolic Aggregate Approximation (SAX).- Part V. Stacking Up to the Competition.- Chapter 18. Configuring Azure Cognitive Services Anomaly Detector.- Chapter 19. Performing a Bake-Off.- Appendix: Bibliography.
Notă biografică
Kevin Feasel is a Microsoft Data Platform MVP and CTO at Faregame Inc, where he specializes in data analytics with T-SQL and R, forcing Spark clusters to do his bidding, fighting with Kafka, and pulling rabbits out of hats on demand. He is the lead contributor to Curated SQL, president of the Triangle Area SQL Server Users Group, and author of PolyBase Revealed. A resident of Durham, North Carolina, he can be found cycling the trails along the triangle whenever the weather is nice enough.
Textul de pe ultima copertă
Discover key information buried in the noise of data by learning a variety of anomaly detection techniques and using the Python programming language to build a robust service for anomaly detection against a variety of data types. The book starts with an overview of what anomalies and outliers are and uses the Gestalt school of psychology to explain just why it is that humans are naturally great at detecting anomalies. From there, you will move into technical definitions of anomalies, moving beyond "I know it when I see it" to defining things in a way that computers can understand.
The core of the book involves building a robust, deployable anomaly detection service in Python. You will start with a simple anomaly detection service, which will expand over the course of the book to include a variety of valuable anomaly detection techniques, covering descriptive statistics, clustering, and time series scenarios. Finally, you will compare your anomaly detection service head-to-head with a publicly available cloud offering and see how they perform.
The anomaly detection techniques and examples in this book combine psychology, statistics, mathematics, and Python programming in a way that is easily accessible to software developers. They give you an understanding of what anomalies are and why you are naturally a gifted anomaly detector. Then, they help you to translate your human techniques into algorithms that can be used to program computers to automate the process. You’ll develop your own anomaly detection service, extend it using a variety of techniques such as including clustering techniques for multivariate analysis and time series techniques for observing data over time, and compare your service head-on against a commercial service.
What You Will Learn
- Understand the intuition behind anomalies
- Convert your intuition into technical descriptions of anomalous data
- Detect anomalies using statistical tools, such as distributions, variance and standard deviation, robust statistics, and interquartile range
- Apply state-of-the-art anomaly detection techniques in the realms of clustering and time series analysis
- Work with common Python packages for outlier detection and time series analysis, such as scikit-learn, PyOD, and tslearn
- Develop a project from the ground up which finds anomalies in data, starting with simple arrays of numeric data and expanding to include multivariate inputs and even time series data
Caracteristici
Teaches state-of-the-art outlier detection techniques Helps you build a fully functional anomaly detection service Discusses why humans are natural anomaly detectors