An introduction to statistics with python [Documento eletrónico] : with applications in the life sciences / by Thomas Haslwanter
Language: eng.Country: Switzerland, Swiss Confederation.Edition Statement: 2nd ed. Publication: Cham : Springer International Publishing, Springer, 2022Description: XVI, 336 p. : il.ISBN: 978-3-030-97371-1.Series: Statistics and ComputingSubject - Topical Name: Statistics -- Computer programs | Statistics | Quantitative research | Biometry | Artificial intelligence -- Data processing | Mathematical statistics -- Data processing Online Resources:Click here to access onlineItem type | Current library | Collection | Call number | Copy number | Status | Date due | Barcode | |
---|---|---|---|---|---|---|---|---|
E-Books | Biblioteca NOVA FCT Online | Não Ficção | QA276.4.SPR FCT (Browse shelf(Opens below)) | 1 | Available | 95967 |
Browsing Biblioteca NOVA FCT shelves, Shelving location: Online, Collection: Não Ficção Close shelf browser (Hides shelf browser)
QA276.4.SPR FCT New statistical developments in data science, sis 2017, florence, italy, june 28-30 | QA276.4.SPR FCT Text analysis with r, for students of literature | QA276.4.SPR FCT Statistical signal processing, frequency estimation | QA276.4.SPR FCT An introduction to statistics with python, with applications in the life sciences | QA276.4.SPR FCT Statistics applied with excel, data analysis is (not) an art | QA276.4.SPR FCT Time series analysis using sas enterprise guide | QA276.4.SPR FCT Modern optimization with R |
Now in its second edition, this textbook provides an introduction to Python and its use for statistical data analysis. It covers common statistical tests for continuous, discrete and categorical data, as well as linear regression analysis and topics from survival analysis and Bayesian statistics. For this new edition, the introductory chapters on Python, data input and visualization have been reworked and updated. The chapter on experimental design has been expanded, and programs for the determination of confidence intervals commonly used in quality control have been introduced. The book also features a new chapter on finding patterns in data, including time series. A new appendix describes useful programming tools, such as testing tools, code repositories, and GUIs. The provided working code for Python solutions, together with easy-to-follow examples, will reinforce the reader's immediate understanding of the topic. Accompanying data sets and Python programs are also available online. With recent advances in the Python ecosystem, Python has become a popular language for scientific computing, offering a powerful environment for statistical data analysis. With examples drawn mainly from the life and medical sciences, this book is intended primarily for masters and PhD students. As it provides the required statistics background, the book can also be used by anyone who wants to perform a statistical data analysis. .
There are no comments on this title.