使用期限租赁或*
许可形式单机和网络版
原产地美国
介质下载
适用平台window,mac,linux
科学软件网提供软件和培训服务已有19年,拥有丰富的经验,提供软件产品上千款,涵盖领域包括经管,仿真,地球地理,生物化学,工程科学,排版及网络管理等。同时还有的服务,现场培训+课程,以及本地化服务。
This manual is protected by copyright. All rights are reserved. No part of this manual may be reproduced, stored
in a retrieval system, or transcribed, in any form or by any means—electronic, mechanical, photocopy, recording, or
otherwise—without the prior written permission of StataCorp LP unless permitted subject to the terms and conditions
of a license granted to you by StataCorp LP to use the software and documentation. No license, express or implied,
by estoppel or otherwise, to any intellectual property rights is granted by this document.

2021年4月20日Stata 新版本17正式发布,17版本在数据处理速度、计量模型以及与其他软件融合方面均有大的更新。Stata 17新功能,大家还不是特别了解,因此,北京天演融智软件有限公司(科学软件网)特意为大家安排一场Stata 17新功能解锁 的在线讲座。为您讲解Stata 17的新功能都有哪些,使用上又有哪些便利呢?

In Stata 16, you can embed and execute Python code from within Stata. Stata's new python command allows you to easily call Python from Stata and output Python results within Stata.
You can invoke Python interactively or in do-files and ado-files so that you can leverage Python's extensive language features. You can also execute a Python file (.py) directly through Stata.
In addition, we introduced the Stata Function Interface (sfi) Python module, which provides a bi-directional connection between Stata and Python. This module lets you access Stata's current dataset, frames, macros, scalars, matrices, value labels, characteristics, global Mata matrices, and more.
All of this means that you can now use any Python package directly within Stata. For instance, you can use Matplotlib to draw 3-dimensional graphs. You can use NumPy for numerical computations. You can use Scrapy to scrape data from the web. You can access additional machine-learning techniques such as neural networks and support vector machines through TensorFlow and scikit-learn. And much more.
Finally, Stata’s Do-file Editor now includes syntax highlighting for the Python language.
While advanced users and programmers might be most likely to take advantage of Python integration, the availability of Python within Stata will excite many more users in all disciplines.

Panel-data ERMs
Extended regression models (ERMs) were a big new feature last release. The ERM commands fit models that account for three common problems that arise in observational data—endogenous covariates, sample selection, and treatment—either alone or in combination.
In Stata 16, we introduce the xteregress, xteintreg, xteprobit, and xteoprobit commands for fitting panel-data ERMs. This means ERMs can now account for the three problems we mentioned above and for within-panel correlation. These new commands fit random-effects linear, interval, probit, and ordered probit regression models. They allow random effects in one or all equations, and they allow random effects to be correlated across equations.
Researchers from all disciplines who work with observational (nonexperimental) data are interested in ERMs and will be excited about the new panel-data versions of these commands. However, different disciplines talk about these models differently.
Above, we referred to the problems ERMs solve as endogenous covariates, sample selection, treatment, and within-panel correlation. While this terminology is common in some disciplines such as economics, other disciplines may use other terms.
• Instead of panel-data and within-panel correlation, researchers may ask for models for multilevel (two-level) data that account for within-group correlation.
• Instead of endogenous covariates, researchers may ask for methods of dealing with unobserved confounding or unmeasured confounding.
• Instead of sample selection, researchers may be concerned about trials with informative dropout, nonignorable nonresponse, or outcomes missing not at random (MNAR).
• Instead of treatment, researchers may ask about methods for causal inference or estimating average treatment effects (ATEs).
The important message is that all disciplines are interested in ERMs, but they often speak different languages.
科学软件网主要提供以下科学软件服务:
1、软件培训服务:与国内大学合作,聘请业内人士定期组织软件培训,截止目前,已成功举办软件培训四十多期,累计学员2000余人,不仅让学员掌握了软件使用技巧,加深了软件在本职工作中的应用深度,而且也为**业人士搭建起了沟通的桥梁;
2、软件服务:提供软件试用版、演示版、教程、手册和参考资料的服务;
3、解决方案咨询服务:科学软件网可向用户有偿提供经济统计、系统优化、决策分析、生物制药等方面的解决方案咨询服务;
4、软件升级及技术支持服务:科学软件网可向用户提供软件的本地化技术支持服务,包括软件更新升级、软件故障排除、安装调试、培训等;
5、行业研讨服务:科学软件网会针对不**业,邀请国内外以及软件厂商技术人员,不定期在国内举办大型研讨会,时刻关注*技术,为国内行业技术发展提供导向。
http://turntech8843.b2b168.com