Exploring Data in Engineering, the Sciences, and Medicine
In stock
Smart shoppers OnBuy it!
- Earn Cashback on every purchase – spend it instantly on your next order
- Free delivery – on millions of items across the site
- Customers love us – 129,000 Trustpilot reviews and an 'Excellent' rating
Interest-free payment options available
See full product description & details
Delivery: Standard (Free) | Wed 29th - Fri 31st Jul
Sold by: Ria Christie Collections
Returns: 30 days
180-day payment protection
Most Popular in General Science Books
Exploring Data in Engineering, the Sciences, and Medicine Description
This book introduces various widely available exploratory data analysis methods, emphasizing those that are most useful in the preliminary exploration of large datasets involving mixed data types. Topics include descriptive statistics, graphical analysis tools, regression modeling and spectrum estimation, along with practical issues like outliers, missing data, and variable selection.
Details
| OPC | PDHNJFY |
|---|---|
| Codes | 0195089650 (ISBN-10) |
| 9780195089653 (ISBN) |
Disclaimer: The information below is provided by various external sources and should be used as a guide only.
Two recent and ongoing developments have greatly increased both the range of opportunities for exploratory data analysis and the variety of tools to support this type of analysis. First has been the dramatic rise in the number of publicly available datasets available free from the Internet and second has been the similarly dramatic evolution of the Open Source software movement making powerful analysis packages like R also freely available. The objective of this book is to provide a reasonably thorough introduction to a useful subset of these analysis tools illustrating what they are what they do and when and how they sometimes fail or do something very different than we expect them to. Specific topics covered include descriptive characterizations like summary statistics (mean median standard deviation MAD scale estimate etc.) graphical techniques like boxplots and nonparametric density estimates various forms of regression modeling (standard linear regression models logistic regression and highly robust techniques like least trimmed squares) and the recognition and treatment of important data anomalies like outliers and missing data. In addition the book also introduces a variety of dynamic data analysis tools including autocorrelation analysis parametric and nonparametric spectrum estimation and the use of nonlinear data cleaning filters to improve dynamic characterization results. The book assumes familiarity with calculus and linear algebra but does not assume any prior exposure to probability or statistics. Both simulation-based and real data examples are included and the book is intended either as an introductory textbook for an exploratory data analysis course like ones the author taught at the ETH where some of this material was used or for self-study. Exercises are included at the end of each chapter and both R code and datasets are available through the associated OUP website.
Alternative names:
- ISBN Exploring Data in Engineering the Sciences and Medicine English
Detailed Product Information
Features
| Language version | English |
|---|---|
| Release date (DD/MM/YYYY) | 03/02/2011 |
| Written by | Ronald Pearson |
| Publisher | Oxford University Press |
| Suggested gender | Any gender |
| International Standard Book Number (ISBN) | 9780195089653 |
Compare Sellers for Exploring Data in Engineering, the Sciences, and Medicine
- New from £199.74
| Seller | Ratings | Warranty | Returns | Price | Delivery | Total | Quantity |
|---|---|---|---|---|---|---|---|
| (207 reviews) | - |
30 Days
Free Returns No
|
£199.74
|
+Free Delivery
Est. Delivery:
29th-31st Jul
|
£199.74
|
Earn as you shop with instant Cashback on everything.
No catch, no cost
- Paid into your OnBuy account
- Spend it on your next purchase
- Save it or withdraw it
Become a Cashback VIP
Just 1 purchase unlocks bigger deals & rates