- Data Analysis with Stata
- Prasad Kothari
- 304字
- 2021-07-09 21:31:07
Chapter 1. Introduction to Stata and Data Analytics
These days, many people use Stata for econometric and medical research purposes, among other things. There are many people who use different packages, such as Statistical Package for the Social Sciences (SPSS) and EViews, Micro, RATS/CATS (used by time series experts), and R for Matlab/Guass/Fortan (used for hardcore analysis). One should know the usage of Stata and then apply it in one's relative fields. Stata is a command-driven language; there are over 500 different commands and menu options, and each has a particular syntax required to invoke any of the various options. Learning these commands is a time-consuming process, but it is not hard. At the end of each class, your do-file will contain all the commands that we have covered, but there is no way we will cover all of these commands in this short introductory course.
Stata is a combined statistical analytical tool that is intended for use by research scholars and analytics practitioners. Stata has many strengths, but we are going to talk about the most important one: managing, adjusting, and arranging large sets of data. Stata has many versions, and with every version, it keeps on improving; for example, in Stata versions 11 to 14, there are changes and progress in the computing speed, capabilities and functionalities, as well as flexible graphic capabilities. Over a period of time, Stata keeps on changing and updating the model as per users' suggestions. In short, the regression method is based on a nonstandard feature, which means that you can easily get help from the Web if another person has written a program that can be integrated with their software for the purpose of analysis. The following topics will be covered in this chapter:
- Introducing Data analytics
- Introducing the Stata interface and basic techniques
- Vue.js 3.x快速入門
- 基于粒計算模型的圖像處理
- 垃圾回收的算法與實現
- 高效微控制器C語言編程
- Building a RESTful Web Service with Spring
- 深度強化學習算法與實踐:基于PyTorch的實現
- QTP自動化測試進階
- HTML5+CSS3網站設計基礎教程
- Unreal Engine 4 Shaders and Effects Cookbook
- 可解釋機器學習:模型、方法與實踐
- The Complete Coding Interview Guide in Java
- RSpec Essentials
- R用戶Python學習指南:數據科學方法
- 汽車人機交互界面整合設計
- 微信小程序開發實戰:設計·運營·變現(圖解案例版)