Statistical methods for data analysis: with applications in particle physics
Language: English Publication details: Switzerland: Springer, 2023. Edition: 3rd edDescription: xxx, 334p.; 23cmsISBN: 9783031199332Subject(s): Statistical methods | Data analysis and Machine learning | Hypothesis testingDDC classification: 539.72 L57, 3Item type | Current library | Call number | Status | Date due | Barcode |
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Dr. S. R. Ranganathan Library General Stacks | 539.72 L57,3 (Browse shelf(Opens below)) | Available | 3185 |
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539.6 R37, 2:5 Art of molecular dynamics simulation | 539.6 R37, 2:6 Art of molecular dynamics simulation | 539.6 R37, 2:7 Art of molecular dynamics simulation | 539.72 L57,3 Statistical methods for data analysis: with applications in particle physics | 540.02 J25,16 Engineering chemistry | 540.1 B36 The future of post-human geology: A preface to a new theory of statics and dynamics | 540.1 B36:1 The future of post-human geology: A preface to a new theory of statics and dynamics |
This third edition expands on the original material. Large portions of the text have been reviewed and clarified. More emphasis is devoted to machine learning including more modern concepts and examples. This book provides the reader with the main concepts and tools needed to perform statistical analyses of experimental data, in particular in the field of high-energy physics (HEP).
It starts with an introduction to probability theory and basic statistics, mainly intended as a refresher from readers’ advanced undergraduate studies, but also to help them clearly distinguish between the Frequentist and Bayesian approaches and interpretations in subsequent applications. Following, the author discusses Monte Carlo methods with emphasis on techniques like Markov Chain Monte Carlo, and the combination of measurements, introducing the best linear unbiased estimator. More advanced concepts and applications are gradually presented, including unfolding and regularization procedures, culminating in the chapter devoted to discoveries and upper limits.
The reader learns through many applications in HEP where the hypothesis testing plays a major role and calculations of look-elsewhere effect are also presented. Many worked-out examples help newcomers to the field and graduate students alike understand the pitfalls involved in applying theoretical concepts to actual data.