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    [下載]Introduction to Stata 8 [推廣有獎(jiǎng)]

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    hanszhu 發(fā)表于 2005-4-12 05:34:00 |只看作者 |壇友微信交流群|倒序 |AI寫論文
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    12035.rar (847.18 KB, 需要: 10 個(gè)論壇幣) 本附件包括:
    • Introduction to Stata 8
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    關(guān)鍵詞:introduction troduction intro Stata tata 下載 Stata introduction

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    hanszhu 發(fā)表于 2005-4-12 07:43:00 |只看作者 |壇友微信交流群
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    hanszhu 發(fā)表于 2005-4-12 08:00:00 |只看作者 |壇友微信交流群
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    hanszhu 發(fā)表于 2005-4-12 08:02:00 |只看作者 |壇友微信交流群

    Resources based on Stata 7

    Getting Started with Stata for MS Windows: A Brief Introduction, Robert Yaffee, New York University, USA
    An introduction to Stata in PDF format.
    e-Tutorial on Stata, UIUC, USA
    Electronic notes and tutorials by the teaching assistant of an applied econometrics course focusing on the basics of Stata and R.
    Introducing Stata: A Statistical Program For Socio-economic Analysis, Peter Gruhn, Agrifood Consulting International
    Training material prepared to introduce researchers in Nepal to the analysis of socioeconomic data using Stata.
    Stata Tutorial, University of Essex
    Tutorial on basic procedures in Stata.

    [此貼子已經(jīng)被作者于2005-4-12 8:11:52編輯過]

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    hanszhu 發(fā)表于 2005-4-12 08:03:00 |只看作者 |壇友微信交流群

    Resources based on Stata 9

    Resources to help you learn and use Stata, UCLA Academic Technology Services, USA
    An extensive resource of Stata information, including FAQs, learning modules, a quick-reference guide, annotated output, textbook examples, and more. New users may want to visit the Stata Starter Kit section of the UCLA site. Don't miss the Stata Web Books and the movies.
    SSC Archive, Boston College, USA
    A complete archive of programs exchanged on the Stata listserver and other programs for Stata. All these programs can also be installed directly from within Stata by typing net from http://fmwww.bc.edu/RePEc/bocode/ at the Stata prompt or use the ssc command.
    Site includes full search capabilities.
    UCLA Stata Portal, UCLA Academic Technology Services, USA
    A web site that links and searches across Stata sites around the world, and more. This is a place where developers of Stata resources collaborate to create an infrastructure to help their own Stata community while providing a service to Stata users all over the world.
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    hanszhu 發(fā)表于 2005-4-12 08:04:00 |只看作者 |壇友微信交流群

    Resources based on Stata 8

    Resources to help you learn and use Stata, UCLA Academic Technology Services, USA
    An extensive resource of Stata information, including FAQs, learning modules, a quick-reference guide, annotated output, textbook examples, and more. New users may want to visit the Stata Starter Kit section of the UCLA site. Don't miss the Stata Web Books and the movies.
    South Africa Distance Learning Project on Stata, University of Michigan, USA
    An extensive teaching web site dedicated to Stata. Some of the topics covered are
    • Introduction to surveys
    • Understanding distributions
    • Multiple-regression analysis
    • Graphing with Stata 8
    Survival Analysis with Stata: Course EC968, Stephen Jenkins, Institute for Social and Economic Research, University of Essex, UK
    Lessons, programs, do-files, and a PDF book about survival analysis in Stata.
    Topics in Economic Analysis – Stata course, London School of Economics, UK
    Class notes, tutorials, sample data, and do-files from an economics course at the London School of Economics. In particular, see the excellent Introduction to Stata.
    An Introduction to Stata (pdf), IT Support at the LSE Research Laboratory, UK
    An introduction to Stata and various commands.
    Introduction to Stata 8, Svend Juul, Department of Epidemiology and Social Medicine, University of Aarhus, Denmark
    A 72-page introduction describing the basics of Stata 8, including a guide to using the new Stata 8 graphics.
    Graduate statistics lecture notes, Richard Williams, Sociology Department, University of Notre Dame
    Extensive lecture notes covering applied statistical topics from probability distribution through logistic regression, with examples using Stata.
    Applied Econometrics lecture notes, Carlos Lamarche, Econometrics Group, University of Illinois at Urbana-Champaign
    Lecture notes covering introductory econometrics topics, including Box-Cox transformation, dynamic models, bootstrapping techniques, Granger causality, Monte Carlo simulation and nonlinear regression, and simultaneous equation models, with examples using Stata.
    Stata Introduction, Princeton University, USA
    An extensive introduction to Stata covering general information about Stata and for learning Stata.
    Introduction to Stata 8 (pdf), Christopher F. Baum, Boston College, USA
    A 67-page description of Stata, its key features and benefits and other useful information.
    LAB1: Introduction to working with Stata 8 (pdf), Karolinska Institutet, Sweden
    A brief introduction, including course notes and exercises, on handling data in Stata.
    Introduction to Stata (pdf), Dr. Joachim Winter, Universität Mannheim, Germany
    A brief overview of the Stata interface, command syntax, and capabilities.
    An Introduction to Stata: Part I (pdf), Thomas Lumley, University of Washington, USA
    An introduction to Stata, including basic commands and features, for a biostatistics course.
    A Quick Guide to Stata 8 for Windows (pdf), Kurt Schmidheiny, Université de Lausanne, HEC, Switzerland
    Course notes on the basics of Stata, including important features and functions.
    Data management tutorial, Carolina Population Center, University of North Carolina at Chapel Hill, USA
    Tutorial, examples, and question-and-answer sessions on managing data in Stata, with an emphasis on survey data.
    UCLA Stata Portal, UCLA Academic Technology Services, USA
    A web site that links and searches across Stata sites around the world, and more. This is a place where developers of Stata resources collaborate to create an infrastructure to help their own Stata community while providing a service to Stata users all over the world.
    Stata tutorials for the American Economic Association Summer Program 2004, Duke University in partnership with North Carolina A&T State University
    Class notes, tutorials, and do-files by Stas Kolenikov for the American Economic Association Summer Program at Duke University.
    7
    hanszhu 發(fā)表于 2005-4-12 08:45:00 |只看作者 |壇友微信交流群

    [下載]Ebook.Stata Press.Regression Models For Categorical Dependent Variables

    12042.rar (2.63 MB, 需要: 50 個(gè)論壇幣) 本附件包括:

    • Ebook.Stata Press.Regression Models For Categorical Dependent Variables.pdf

    [此貼子已經(jīng)被作者于2005-4-12 11:23:57編輯過]

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    hanszhu 發(fā)表于 2005-4-12 09:07:00 |只看作者 |壇友微信交流群

    Regression Models for Categorical Dependent Variables using Stata

    Part I General Information

    1 Introduction

    1.1 What is this book about?
    1.2 Which models are considered?
    1.3 Who is this book for?
    1.4 How is the book organized?
    1.5 What software do you need?
    1.5.1 Updating Stata 8
    1.5.2 Installing SPost
    Installing SPost using net search
    Installing SPost using net install
    1.5.3 What if commands do not work?
    1.5.4 Uninstalling SPost
    1.5.5 Additional files available on the web site
    1.6 Where can I learn more about the models?
    2 Introduction to Stata
    2.1 The Stata interface
    Changing the scrollback buffer size
    Changing the display of variable names in the Variables window
    2.2 Abbreviations
    2.3 How to get help
    2.3.1 Online help
    2.3.2 Manuals
    2.3.3 Other resources
    2.4 The working directory
    2.5 Stata file types
    2.6 Saving output to log files
    Options
    2.6.1 Closing a log file
    2.6.2 Viewing a log file
    2.6.3 Converting from SMCL to plain text or PostScript
    2.7 Using and saving datasets
    2.7.1 Data in Stata format
    2.7.2 Data in other formats
    2.7.3 Entering data by hand
    2.8 Size limitations on datasets
    2.9 do-files
    2.9.1 Adding comments
    2.9.2 Long lines
    2.9.3 Stopping a do-file while it is running
    2.9.4 Creating do-files
    Using Stata's do-file editor
    Using other editors to create do-files
    2.9.5 A recommended structure for do-files
    2.10 Using Stata for serious data analysis
    2.11 The syntax of Stata commands
    2.11.1 Commands
    2.11.2 Variable lists
    2.11.3 if and in qualifiers
    Examples of if qualifier
    2.11.4 Options
    2.12 Managing data
    2.12.1 Looking at your data
    2.12.2 Getting information about variables
    2.12.3 Missing values
    2.12.4 Selecting observations
    2.12.5 Selecting variables
    2.13 Creating new variables
    2.13.1 generate command
    2.13.2 replace command
    2.13.3 recode command
    2.13.4 Common transformations for RHS variables
    Breaking a categorical variable into a set of binary variables
    More examples of creating binary variables
    Nonlinear transformations
    Interaction terms
    2.14 Labeling variables and values
    2.14.1 Variable labels
    2.14.2 Value labels
    2.14.3 notes command
    2.15 Global and local macros
    2.16 Graphics
    2.16.1 The graph command
    2.16.2 Displaying previously drawn graphs
    2.16.3 Printing graphs
    2.16.4 Combining graphs
    2.17 A brief tutorial
    A batch version

    3 Estimation, Testing, Fit, and Interpretation
    3.1 Estimation
    3.1.1 Stata's output for ML estimation
    3.1.2 ML and sample size
    3.1.3 Problems in obtaining Ml estimates
    3.1.4 The syntax of estimation commands
    Variable lists
    Specifying the estimation sample
    Options
    3.1.5 Reading the output
    Header
    Estimates and standard errors
    3.1.6 Reformatting output with estimates table
    3.1.7 Reformatting output with outreg
    3.1.8 Alternative output with listcoef
    Options for types of coefficients
    Other options
    Standardized coefficients
    Factor and percent change
    3.1.9 Storing estimation results
    3.2 Post-estimation analysis
    3.3 Testing
    3.3.1 Wald tests
    The accumulate option
    3.3.2 LR tests
    Avoiding invalid LR tests
    3.4 Measures of fit
    Syntax of fitstat
    Options
    Models and measures
    Example of fitstat
    Methods and formulas for fitstat
    3.5 Interpretation
    3.5.1 Approaches to interpretation
    3.5.2 Predictions using predict
    3.5.3 Overview of prchange, prgen, prtab, and prvalue
    Specifying the levels of variables
    Options for controlling output
    3.5.4 Syntax for prchange
    Options
    3.5.5 Syntax for prgen
    Options
    Variables generated
    3.5.6 Syntax for prtab
    Options
    3.5.7 Syntax for prvalue
    Options
    3.5.8 Computing marginal effects using mfx compute
    3.6 Next steps

    Part II Models for Specific Kinds of Outcomes

    4 Models for Binary Outcomes
    4.1 The statistical model
    4.1.1 A latent variable model
    4.1.2 A nonlinear probability model
    4.2 Estimation using logit and probit
    Variable lists
    Specifying the estimation sample
    Weights
    Options
    Example
    4.2.1 Observations predicted perfectly
    4.3 Hypothesis testing with test and lrtest
    4.3.1 Testing individual coefficients
    One and two-tailed tests
    Testing single coefficients using test
    Testing single coefficients using lrtest
    4.3.2 Testing multiple coefficients
    Testing multiple coefficients using test
    Testing multiple coefficients using lrtest
    4.3.3 Comparing LR and Wald tests
    4.4 Residuals and influence using predict
    4.4.1 Residuals
    Example
    4.4.2 Influential cases
    4.5 Scalar measures of fit using fitstat
    Example
    4.6 Interpretation using predicted values
    4.6.1 Predicted probabilities with predict
    4.6.2 Individual predicted probabilities with prvalue
    4.6.3 Tables of predicted probabilities with prtab
    4.6.4 Graphing predicted probabilities with prgen
    4.6.5 Changes in predicted probabilities
    Marginal change
    Discrete change
    4.7 Interpretation using odds ratios with listcoef
    Multiplicative coefficients
    Effect of the base probability
    Percent change in the odds
    4.8 Other commands for binary outcomes

    5 Models for Ordinal Outcomes
    5.1 The statistical model
    5.1.1 A latent variable model
    5.1.2 A nonlinear probability model
    5.2 Estimation using ologit and oprobit
    Variable lists
    Specifying the estimation sample
    Weights
    Options
    5.2.1 Example of attitudes toward working mothers
    5.2.2 Predicting perfectly
    5.3 Hypothesis testing with test and lrtest
    5.3.1 Testing individual coefficients
    5.3.2 Testing multiple coefficients
    5.4 Scalar measures of fit using fitstat
    5.5 Converting to a different parameterization
    5.6 The parallel regression assumption
    5.7 Residuals and outliers using predict
    5.8 Interpretation
    5.8.1 Marginal change in y
    5.8.2 Predicted probabilities
    5.8.3 Predicted probabilities with predict
    5.8.4 Individual predicted probabilities with prvalue
    5.8.5 Tables of predicted probabilities with prtab
    5.8.6 Graphing predicted probabilities with prgen
    5.8.7 Changes in predicted probabilities
    Marginal change with prchange
    Marginal change with mfx compute
    Discrete change with prchange
    Computing discrete change for a 10-year increase in age
    Odds ratios using listcoef
    5.8.8 Odds ratios using listcoef
    5.9 Less-common models for ordinal outcomes
    5.9.1 Generalized ordered logit model
    5.9.2 The stereotype model
    5.9.3 The continuation ratio model

    6 Models for Nominal Outcomes
    6.1 The multinomial logit model
    6.1.1 Formal statement of the model
    6.2 Estimation using mlogit
    Variable lists
    Specifying the estimation sample
    Weights
    Options
    6.2.1 Example of occupational attainment
    6.2.2 Using different base categories
    6.2.3 Predicting perfectly
    6.3 Hypothesis testing of coefficients
    6.3.1 mlogtest for tests of the MNLM
    Options
    6.3.2 Testing the effects of the independent variables
    A likelihood-ratio test
    A Wald test
    Testing multiple independent variables
    6.3.3 Tests for combining dependent categories
    A Wald test for combining outcomes
    Using test [category]
    An LR test for combining outcomes
    Using constraint with lrtest
    6.4 Independence of irrelevant alternatives
    Hausman test of IIA
    Small and Hsiao test of IIA
    Conclusions regarding tests of IIA
    6.5 Measures of fit
    6.6 Interpretation
    6.6.1 Predicted probabilities
    6.6.2 Predicted probabilities with predict
    Using predict to compare mlogit and ologit
    6.6.3 Individual predicted probabilities with prvalue
    6.6.4 Tables of predicted probabilities with prtab
    6.6.5 Graphing predicted probabilities with prgen
    Plotting probabilities for one outcome and two groups
    Graphing probabilities for all outcomes for one group
    6.6.6 Changes in predicted probabilities
    Computing marginal and discrete change with prchange
    Marginal change with mfx compute
    6.6.7 Plotting discrete changes with prchange and mlogview
    6.6.8 Odds ratios using listcoef and mlogview
    Listing odds ratios with listcoef
    Plotting odds ratios
    6.6.9 Using mlogplot
    6.6.10 Plotting estimates from matrices with mlogplot
    Options for using matrices with mlogplot
    Global macros and matrices used by mlogplot
    Example
    6.7 The conditional logit model
    6.7.1 Data arrangement for conditional logit
    6.7.2 Fitting the conditional logit model
    Options
    Example of the clogit model
    6.7.3 Interpreting results from clogit
    Using odds ratios
    Using predicted probabilities
    6.7.4 Fitting the multinomial logit model using clogit
    Setting up the data
    Creating interactions
    Fitting the model
    6.7.5 Using clogit to fit mixed models

    7 Models for Count Outcomes
    7.1 The Poisson distribution
    7.1.1 Fitting the Poisson distribution with the poisson command
    7.1.2 Computing predicted probabilities with prcounts
    Syntax
    Options
    Variables generated
    7.1.3 Comparing observed and predicted counts with prcounts
    7.2 The Poisson regression model
    7.2.1 Estimating the PRM with poisson
    Variable lists
    Specifying the estimation sample
    Weights
    Options
    7.2.2 Example of fitting the PRM
    7.2.3 Interpretation using the rate µ
    Factor change in E(y|x)
    Percent change in E(y|x)
    Example of factor and percent change
    Marginal change in E(y|x)
    Example of marginal change using prchange
    Example of marginal change using mfx compute
    Discrete change in E(y|x)
    Example of discrete change using prchange
    7.2.4 Interpretation using predicted probabilities
    Example of predicted probabilities using prvalue
    Example of predicted probabilities using prgen
    Example of predicted probabilities using prcounts
    7.2.5 Exposure time
    7.3 The negative binomial regression model
    7.3.1 Fitting the NBRM with nbreg
    7.3.2 Example of fitting the NBRM
    Comparing the PRM and NBRM using estimates table
    7.3.3 Testing for overdispersion
    7.3.4 Interpretation using the rate µ
    7.3.5 Interpretation using predicted probabilities
    7.4 Zero-inflated count models
    7.4.1 Estimation of zero-inflated models with zinb and zip
    Variable lists
    Options
    7.4.2 Example of fitting the ZIP and ZINB models
    7.4.3 Interpretation of coefficients
    7.4.4 Interpretation of predicted probabilities
    Predicted probabilities with prvalue
    Predicted probabilities with prgen
    7.5 Comparisons among count models
    7.5.1 Comparing mean probabilities
    7.5.2 Tests to compare count models
    LR tests of a
    Vuong test non-nested models

    8 Additional Topics
    8.1 Ordinal and nominal independent variables
    8.1.1 Coding a categorical independent variable as a set of dummy variables
    8.1.2 Estimation and interpretation with categorical independent variables
    8.1.3 Tests with categorical independent variables
    Testing the effect of membership in one category versus the reference category
    Testing the effect of membership in two nonreference categories
    Testing that a categorical independent variable has no effect
    Testing whether treating an ordinal variable as interval loses information
    8.1.4 Discrete change for categorical independent variables
    Computing discrete change with prchange
    Computing discrete change with prvalue
    8.2 Interactions
    8.2.1 Computing gender differences in predictions with interactions
    8.2.2 Computing gender differences in discrete change with interactions
    8.3 Nonlinear nonlinear models
    8.3.1 Adding nonlinearities to linear predictors
    8.3.2 Discrete change in nonlinear nonlinear models
    8.4 Using praccum and forvalues to plot predictions
    Options
    8.4.1 Example using age and age-squared
    8.4.2 Using forvalues with praccum
    8.4.3 Using praccum for graphing a transformed variable
    8.4.4 Using praccum to graph interactions
    8.5 Extending SPost to other estimation commands
    8.6 Using Stata more efficiently
    8.6.1 profile.do
    8.6.2 Changing screen fonts and window preferences
    8.6.3 Using ado-files for changing directories
    8.6.4 me.hlp file
    8.6.5 Scrolling in the Results Window in Windows
    8.7 Conclusions
    9
    romae 發(fā)表于 2005-4-12 10:36:00 |只看作者 |壇友微信交流群
    老大 文件格式是什么 怎么打不開 謝謝!
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    hanszhu 發(fā)表于 2005-4-12 11:06:00 |只看作者 |壇友微信交流群

    You can unzip by Winrar. Maybe you did not pay the $50 and you got a uncomplete file, and it is also possible that I did not set the 出售帖 properly.

    [此貼子已經(jīng)被作者于2005-4-12 11:10:38編輯過]

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