Published 3/2023MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHzLanguage: English | Size: 10.23 GB | Duration: 25h 52m
Learn how to master Stata like a professional An essential introduction to Stata Data manipulation in Stata Data analysis in Stata Regression modelling Stata code Advanced Stata code Fast, and to the point, useful tips to use in Stata Data management Programming Graphics Statistics Basic plot types Intermediate plot types Advanced plot types There are no requirements The Complete Guide to StataLearning and applying new statistical techniques can be daunting experience.This is especially true once one engages with “real life” data sets that do not allow for easy “click-and-go” analysis, but require a deeper level of understanding of programme coding, data manipulation, output interpretation, output formatting and selecting the right kind of analytical methodology.In this course you will receive a comprehensive introduction to Stata and its various uses in modern data analysis. You will learn to understand the many options that Stata gives you in manipulating, exploring, visualizing and modelling complex types of data. By the end of the course you will feel confident in your ability to engage with Stata and handle complex data analytics. The focus of each session will consistently be on creating a “good practice” and emphasising the practical application – and interpretation – of commonly used statistical techniques without resorting to deep statistical theory or equations.This course consists of three sub-courses that will 1) teach you the essentials of Stata 2) provide you with tips and tricks for Stata and 3) teach you advanced data visualization techniques.No prior engagement with is Stata needed. Some prior statistics knowledge will help but is not necessary.The course is aimed at anyone interested in data analytics using Stata.Like for other professional statistical packages the course focuses on the proper application - and interpretation - of code.Some basic quantitative/statistical knowledge will be required; this is not an introduction to statistics course but rather the application and interpretation of such using Stata.Topics covered include:Getting started with StataViewing and exploring dataManipulating dataVisualising dataCorrelation and ANOVARegression including diagnostics (Ordinary Least Squares)Regression model buildingHypothesis testingBinary outcome models (Logit and Probit)Fractional response models (Fractional Logit and Beta Regression)Categorical choice models (Ordered Logit and Multinomial Logit)Simulation techniques (Random Numbers and Simulation)Count data models (Poisson and Negative Binomial Regression)Survival data analysis (Parametric, Cox-Proportional Hazard and Parametric Survival Regression)Panel data analysis (Long Form Data, Lags and Leads, Random and Fixed Effects, Hausman Test and Non-Linear Panel Regression)Difference-in-differences analysis (Difference-in-Difference and Parallel Trends)Instrumental variable regression (Endogenous Variables, Sample Selection, Non-Linear Endogenous Models)Epidemiological tables (Cohort Studies, Case-Control Studies and Matched Case-Control Studies)Power analysis (Sample Size, Power Size and Effect Size)Matrix operations (Matrix operators, Matrix functions, Matrix subscripting)There are also 125 tips and tricks for Stata. These tips are aimed at helping you become a Stata master! They cover a wide range of issues the following topics:Data managementGraphingStatistics Programming. Each tip is designed to be stand-alone and will take no more than 2 minutes.Finally, you will be shown some of the most important data visualization methods and learn what ae the advantages and disadvantages of each technique are. A wide variety of graphs are highlighted in great detail including:HistogramsDensity plotsSpike plotsRootogramsBox plotsViolin plotsStem-and-Leaf plotsQuantile plotsBar graphsPie chartsDot chartsRadar plotsScatter plotsHeat plotsHex plotsSunflower plotsLines of best fitArea plotsLine plotsRange plotsRainbow plotsJitter plotsTable plotsBaloon plotsMosaic plotsChernoff facesSparkling plotsBubble plotsand moreDepending on your desired learning outcomes you may wish to focus on specific parts.To gain a basic understanding of Stata watch sections 2, 3, 4, 5, 6, 7 and 8To learn advanced Stata concepts watch sections 8, 9, 10, 11, 12, 13, 14, 15, 16 and 17To learn fast tips for Stata watch sections 18, 19, 20 and 21To learn all about data visualisation in Stata watch sections 5, 21, 22, 23, 24, 25 and 26To learn data management concepts watch sections 3, 4 and 18 Section 1: Introduction Lecture 1 Introduction Section 2: Essential Stata - Getting Started Lecture 2 The Stata Interface Lecture 3 Using Help in Stata Lecture 4 Command Syntax Lecture 5 .do and .ado Files Lecture 6 Log Files Lecture 7 Importing Data Section 3: Essential Stata - Exploring Data Lecture 8 Viewing Raw Data Lecture 9 Describing and Summarizing Lecture 10 Tabulating and Tables Lecture 11 Missing Values Lecture 12 Numerical Distributional Analysis Lecture 13 Using Weights Lecture 14 The New Table Command (Stata 17) Section 4: Essential Stata - Manipulating Data Lecture 15 Recoding an Existing Variable Lecture 16 Creating New Variables, Replacing Old Variables Lecture 17 Naming and Labelling Variables Lecture 18 Extensions to Generate Lecture 19 Indicator Variables Lecture 20 Keep and Drop Data/Variables Lecture 21 Saving Data Lecture 22 Converting String Data Lecture 23 Combining Data Lecture 24 Using Macro's and Loop's Effectively Lecture 25 Accessing Stored Information Lecture 26 Multiple Loops Lecture 27 Date Variables Lecture 28 Subscripting over Groups Section 5: Essential Stata - Visualizing Data Lecture 29 Graphing in Stata Lecture 30 Bar Graphs and Dot Charts Lecture 31 Graphing Distributions Lecture 32 Pie Charts Lecture 33 Scatterplots and Lines of Best Fit Lecture 34 Graphing Custom Functions Lecture 35 Contour Plots (and Interaction Effects) Lecture 36 Jitter Data in Scatterplots Lecture 37 Sunflower Plots Lecture 38 Combining Graphs Lecture 39 Chag Graph Sizes Lecture 40 Graphing by Groups Lecture 41 Chag Graph Colours Lecture 42 Adding Text to Graphs Lecture 43 Scatterplots with Categories Section 6: Essential Stata - Testing Means, Correlations and ANOVA Lecture 44 Association Between Two Categorical Variables Lecture 45 Testing Means Lecture 46 Bivariate Correlation Lecture 47 Analysis of Variance (ANOVA) Section 7: Essential Stata - Linear Regression Lecture 48 Ordinary Least Squares (OLS) Regression Lecture 49 Factor Variables in OLS Regression Lecture 50 Diagnostic Statistics for OLS Regression Lecture 51 Log Dependent Variables and Interaction Effects in OLS Regression Lecture 52 Hypothesis Testing in OLS Regression Lecture 53 Presenting Estimates from OLS Regression Lecture 54 Standardizing Regression Estimates Lecture 55 Graphing Regression Estimates Lecture 56 Oaxaca Decomposition Analysis Lecture 57 Mixed Models: Random Intercepts and Random Coefficients Lecture 58 Constrained Linear Regression Section 8: Essential Stata - Categorical Choice Models Lecture 59 Binary Choice Models (Logit/Probit Regression) Lecture 60 Diagnostics and Interpretation of Logit and Probit Regression Lecture 61 Ordered and Multinomial Choice Models Lecture 62 Fractional Logit, Beta Regression and Zero-inflated Beta Regression Section 9: Essential Stata - Random Numbers and Simulation Lecture 63 Random Numbers Lecture 64 Data Generating Process Lecture 65 Simulating a Violation of Statistical Assumptions Lecture 66 Monte Carlo Simulation Section 10: Essential Stata - Count Data Models Lecture 67 Features of Count Data Lecture 68 Poisson Regression Lecture 69 Negative Binomial Regression Lecture 70 Truncated and Censored Count Regression Lecture 71 Hurdle Count Regression Section 11: Essential Stata - Survival Analysis Lecture 72 What is Survival Analysis? Lecture 73 Setting up Survival Data Lecture 74 Descriptive Statistics in Survival Data Lecture 75 Non-parametric Survival Analysis Lecture 76 Cox Proportional Hazard's Model Lecture 77 Diagnostics for Cox Models Lecture 78 Parametric Survival Analysis Section 12: Essential Stata - Panel Data Analysis Lecture 79 Setting up Panel Data Lecture 80 Panel Data Descriptives Lecture 81 Lags and Leads Lecture 82 Linear Panel Estimators Lecture 83 The Hausman Test Lecture 84 Non-Linear Panel Estimators Section 13: Essential Stata - Difference-in-Differences Analysis Lecture 85 Difference-in-Differences Estimation Lecture 86 Parallel Trend Assumption Lecture 87 Difference-in-Differences without Parallel Trends Section 14: Essential Stata - Instrumental Variable Regression Lecture 88 Instrumental Variable Regression Lecture 89 Multiple Endogenous Variables Lecture 90 Non-linear Instrumental Variable Regression Lecture 91 Heckman Selection Models Section 15: Essential Stata - Epidemiological Tables Lecture 92 Introduction and Rate Data Lecture 93 Cumulative Incidence Data Lecture 94 Case-Control Data Lecture 95 Case-Control Data with Multiple Exposure Lecture 96 Matched Case-Control Data Section 16: Essential Stata - Power Analysis Lecture 97 Power Analysis: Sample Size Lecture 98 Power Analysis: Power and Effect Size Lecture 99 Power Analysis: Simple Regression Section 17: Essential Stata - Basic Matrix Operations Lecture 100 Matrix Operations Lecture 101 Matrix Functions Lecture 102 Matrix Subscripting Lecture 103 Matrix Operations with Data Section 18: Tips and Tricks - Data Management Lecture 104 How to create a code book Lecture 105 How to create a label book Lecture 106 How to list only variable names Lecture 107 How to describe unopened data Lecture 108 How to search in variables Lecture 109 How to drop/keep variables sequentially Lecture 110 How to check a digital data signature Lecture 111 How to verify data Lecture 112 How to compare two datasets Lecture 113 How to compare variables Lecture 114 How to use tabulate to generate dummy variables Lecture 115 How to avoid many logical OR operators Lecture 116 How to number labels Lecture 117 How to use labels in expressions Lecture 118 How to attach one value label to many variables Lecture 119 How to store single values Lecture 120 How to use Stata's hand-calculator Lecture 121 How to use text with Stata's hand-calculator Lecture 122 How to select column of data in a do-file Lecture 123 How to rectangularize data Lecture 124 How to check if variables uniquely identify observations Lecture 125 How to drop duplicate observations Lecture 126 How to draw a sample Lecture 127 How to transpose a dataset Lecture 128 How to quickly expand and interact many variables Lecture 129 How to create publication quality tables in word Lecture 130 How to create publication quality tables in excel Lecture 131 How to export regression results Lecture 132 How to create and use long strings Lecture 133 How to use emojis Lecture 134 How to quickly create new groups Lecture 135 How to delete files from within Stata Lecture 136 How to display file directory content Lecture 137 How to clone a variable Lecture 138 How to re-order variables Lecture 139 How to add notes to data Section 19: Tips and Tricks - Statistics Lecture 140 How to create many one-way tables quickly Lecture 141 How to create many two-way tables quickly Lecture 142 How to sort and plot one-way tables Lecture 143 How to expand data instead of using weights Lecture 144 How to contract data to frequencies and percentages Lecture 145 How to compute immediate statistics without loading data Lecture 146 How to compute elasticities Lecture 147 How to set the default confidence level Lecture 148 How to show base levels of factor variables Lecture 149 How to estimate a constrained linear regression Lecture 150 How to bootstrap any regression Lecture 151 How to interpolate missing values Lecture 152 How to compute row statistics Lecture 153 How to compute standardized coefficients after linear regression Lecture 154 How to compute faster maal effects Lecture 155 How to reduce collinearity in polynomial variables Lecture 156 How to use contrasting mas Lecture 157 How to use pairwise comparison with mas Lecture 158 How to define the constant in a regression Lecture 159 How to visualise complex polynomial models Lecture 160 How to identify outliers from a regression Lecture 161 How to predict within and outside a regression sample Lecture 162 How to inspect Section 20: Tips and Tricks - Programming Lecture 163 How to hide unwanted output Lecture 164 How to force show wanted output Lecture 165 How to hide a graph Lecture 166 How to suppress error messages Lecture 167 How to force do-files to run to the end Lecture 168 How to execute programmes outside Stata Lecture 169 How to check memory usage Lecture 170 How to reduce files sizes Lecture 171 How stamp commands Lecture 172 How to set a stopwatch Lecture 173 How to pause Stata Lecture 174 How to debug error messages Lecture 175 How to pause for large output Lecture 176 How to add custom ado folders Lecture 177 How to create a custom user profile Lecture 178 How to add comments to do-files Lecture 179 How to loop over non-integer values Lecture 180 How to monitor a loop Lecture 181 How to show more in the results window Lecture 182 How to display coefficient legends Lecture 183 How to squish a table Lecture 184 How to use and modify the Function keys Lecture 185 How to view sourcecode Lecture 186 How to create custom correlations Lecture 187 How to insert current & date into log files Lecture 188 How to save interactive commands Lecture 189 How to create custom number lists Lecture 190 How to change between lower and upper cases variable names and data Lecture 191 How to change between lower and upper case text in do-files Lecture 192 How to explicit subscript Lecture 193 How to launch the interactive dialog box Lecture 194 How to view undocumented commands Section 21: Tips and Tricks - Graphing Lecture 195 How to recover data from a graph Lecture 196 How to generate a combined graph with one legend Lecture 197 How to display RGB colors in graphs Lecture 198 How to make colors opaque Lecture 199 Why are SVG graphs useful? Lecture 200 How to apply log scaling to a graph Lecture 201 How to reverse and switch off axes Lecture 202 How to have multiple axes on a graph Lecture 203 How to display ASCII characters in graphs Lecture 204 How to graph the variance-covariance matrix Lecture 205 How to quickly plot estimated results Lecture 206 How to randomly displace markers Lecture 207 How to word frequencies from a webpage Lecture 208 How to range plot Lecture 209 How to create a violin plot Lecture 210 How to show the Stata color palette Lecture 211 How to create custom titles Lecture 212 How to customize the look of graphs Lecture 213 How to show a correlation matrix as graphical table Lecture 214 How to plot a histogram with a boxplot Lecture 215 How to draw histograms with custom bins Lecture 216 How to graph a one/two/three-way table Lecture 217 How to recover graph code Lecture 218 How to do polar smoothing Lecture 219 How to visualise ladders of power Lecture 220 How to combine combined graphs Lecture 221 How to separate scatter Lecture 222 How to range a graph Lecture 223 How to foreground/background plot Lecture 224 How to plotstyle Lecture 225 How to show multiple axes Lecture 226 How to quickly increase graph label ticks Lecture 227 How to add custom graph label ticks Section 22: Data visualisation - single continuous variables Lecture 228 What is a histogram? Lecture 229 What is an unequal bin histogram? Lecture 230 Learn Stata - Histograms Lecture 231 What is a density plot? Lecture 232 How to visualise multiple densities Lecture 233 Learn Stata - Density plots Lecture 234 What is a ridgeline plot? Lecture 235 Learn Stata - Ridgeline plots Lecture 236 What are cumulative density plots? Lecture 237 Learn Stata - Cumulative density plots Lecture 238 What is a spike plot? Lecture 239 Learn Stata - Spike plots Lecture 240 What is a rootogram plot? Lecture 241 Learn Stata - Rootogram plots Lecture 242 What is a box plot? Lecture 243 Learn Stata - Box plots Lecture 244 What is a violin plot? Lecture 245 Learn Stata - Violin plots Lecture 246 What is a stem-and-leaf plot? Lecture 247 Learn Stata - Stem-and-leaf plots Lecture 248 What is a dot plot? Lecture 249 Learn Stata - Dot plots Lecture 250 What is a symmetry plot? Lecture 251 What is a quantile-uniform plot? Lecture 252 What is a quantile-normal plot? Lecture 253 What is a quantile-chi-squared plot? Lecture 254 What is a quantile-quantile plot? Lecture 255 Learn Stata - Quantile plots Section 23: Data visualisation - single discrete variables Lecture 256 What is a bar graph? Lecture 257 Learn Stata - Bar graphs Lecture 258 What is a pie chart? Lecture 259 Learn Stata - Pie charts Lecture 260 What is a dot chart? Lecture 261 Learn Stata - Dot charts Lecture 262 What is a radar plot? Lecture 263 Learn Stata - Radar plots Section 24: Data visualisation - two continuous variables Lecture 264 What is a scatter plot? Lecture 265 Learn Stata - Scatter plots Lecture 266 What is a heat plot? Lecture 267 What is a hex plot? Lecture 268 Learn Stata - Heat and hex plots Lecture 269 What is a sunflower plot? Lecture 270 Learn Stata - Sunflower plots Lecture 271 What is a polar smoother plot? Lecture 272 Learn Stata - Polar smoother plots Lecture 273 What is a line of best fit? Lecture 274 Learn Stata - Line of best fit plots Lecture 275 What is a line plot? Lecture 276 Learn Stata - Line plots Lecture 277 What is an area plot? Lecture 278 Learn Stata - Area plots Lecture 279 What is a range plot? Lecture 280 Learn Stata - Range plots Lecture 281 What is a dropline plot? Lecture 282 Learn Stata - Dropline plots Lecture 283 What is a rainbow plot? Lecture 284 Learn Stata - Rainbow plots Lecture 285 What is a sparkline plot? Lecture 286 Learn Stata - Sparkline plots Section 25: Data visualisation - two discrete variables Lecture 287 What is a jitter plot? Lecture 288 Learn Stata - Jitter plots Lecture 289 What is a table plot? Lecture 290 Learn Stata - Table plots Lecture 291 What is a balloon plot? Lecture 292 Learn Stata - Balloon plots Lecture 293 What is a stacked bar chart? Lecture 294 Learn Stata - Stacked bar graphs Lecture 295 What is a mosaic plot? Lecture 296 Learn Stata - Mosaic plots Section 26: Data visualisation - three or more variables Lecture 297 What is a contour plot? Lecture 298 Learn Stata - Contour plots Lecture 299 What is a bubble plot? Lecture 300 Learn Stata - Bubble plots Lecture 301 What is a Chernoff Face? Lecture 302 Learn Stata - Chernoff Faces Lecture 303 What is a Triplot? Lecture 304 Learn Stata - Triplots Anyone wanting to work with Stata,Data analysts,Data scientists,Quantitative degree students,Quantitative business users,Economists, Social Scientists, Political Scientists, Biostatisticians, and other disciplines,Those wanting to skill-up in Stata HomePage: gfxtra__The_Comple.part01.rar.html gfxtra__The_Comple.part02.rar.html gfxtra__The_Comple.part03.rar.html gfxtra__The_Comple.part04.rar.html gfxtra__The_Comple.part05.rar.html gfxtra__The_Comple.part06.rar.html gfxtra__The_Comple.part07.rar.html gfxtra__The_Comple.part08.rar.html gfxtra__The_Comple.part09.rar.html
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