Thursday, March 5, 2020
The Basics of Statistics
The Basics of Statistics The History of How We Interpret Data ChaptersWhat is Applied Statistics?Understanding Descriptive StatisticsSummarizing Inferential StatisticsThe Best Places to Learn StatsWhether itâs interpreting percentile shifts, binomial distributions, estimators or the statistical significance of outliers using analysis of variance, statistics is a broad field that is becoming ever-more popular today. Hereâs a brief history of how statistics got started and where to find the best resources for troubleshooting your statistics questions!Learning the computations behind statistical software is essential to accurate analysis AisvaryaData Analysis Teacher 5.00 (4) £25/h1st lesson free!Discover all our tutors AdeyemiData Analysis Teacher 5.00 (4) £25/h1st lesson free!Discover all our tutors AdenikeData Analysis Teacher 5.00 (4) £25/h1st lesson free!Discover all our tutors ThanushanData Analysis Teacher 5.00 (4) £25/h1st lesson free!Discover all our tutors GokhanData Analysis Teacher 5.00 (4) £30/h1st lesson free!Discover a ll our tutors OlawaleData Analysis Teacher £12/h1st lesson free!Discover all our tutors AisvaranData Analysis Teacher 5.00 (4) £25/h1st lesson free!Discover all our tutors Muhammad umairData Analysis Teacher 5.00 (2) £100/h1st lesson free!Discover all our tutorsWhat is Applied Statistics?You may have heard data analysis in the news recently. From the major data breaches that regularly occur in some of the major banks across the world to the small, GDPR induced tick box youâll have to check every time you visit a website - statistical analysis is shaping up to be this centuryâs Big Brother.If all this sounds merely like statisticiansâ jargon and Big Brother only calls forth images of the infamous reality TV show, letâs unpack the importance of understanding statistical methods by taking a closer look at Big Brotherâs namesake: George Orwellâs 1984.Without spoiling the plot or drawing up too convoluted a definition for inferential and descriptive statistics, the narra tive of 1984 follows the story of two protagonists struggling against the ideals of a dystopian, authoritarian government. One of these protagonists works for the âMinistry of Truth,â where he, ironically, edits historical records to conform with the political partyâs agenda. In other words: redacting and revising historical data.The importance of statistical data and its history isnât simply that it has improved our quality of life. Yes, Bayesian statistics and machine learning has given rise to statistical software that can track endangered species. Yes, the field of biostatistics has enabled the statistician to perform tests that produce the pharmaceutical drugs that save our lives. There is no question statistical techniques are essential to our daily lives, however, the manipulation of mathematical statistics can be wielded by corporations and government bodies to push political agendas or oppress certain segments of society - exemplified by Orwellâs seminal novel.Wit h concepts like categorical data, sample size, standard deviation and a probability distribution, the field of statistics can too often be perceived and taught in ways that are not only inaccessible, but perhaps lock out part of the population from a discipline that could empower them the most. While statistical theory and applied statistics may seem like a hyper-modern field filled with ultra-complex ideas to match, taking a look at the history of statistics belies this sentiment.Humans have been using statistics to solve societyâs urgent problems since the dawn of societies themselves. From collecting raw data on agricultural phenomena to improve farming techniques to recording the movements of planetary systems in order to unlock the mysteries of the universe - scientists have been using statistical data analysis for centuries. If youâre rolling your eyes and qualifying this statement in your head by adding that men have historically dominated this field - you wouldnât be w rong.However, not only have women like Florence Nightingale revolutionized the way we use and visualize probability and statistics, but there are women the world over today using statistical analyses to expose the discrimination women face even in industries that have always been considered to be bastions of egalitarianism.So, this is great and all, but what exactly does applied statistics look like mathematically and in the present day? The disciplineâs name is self-explanatory but is worth clarifying applied statistics involves using data collection, probability theory and data visualization to either solve a problem or test a hypothesis in areas like business, insurance, governments, education, and more.Mathematically, statistics refers to applying probability and central tendency theories to test a null and alternative hypothesis through a number of different models: linear regression, multivariate regression, ANOVA, etc. While in the past statistics has been a discipline lock ed behind complex mathematics, involving aspects from a null hypothesis on normality of a distribution to probability density functions. However, in the present day, statistics is widely available to anyone with internet access. Open source programs like R and tutorials online, combined with tools that donât require any previous statistics experience - such as Datawrapper - have led to a new, more democratized era of statistics and data analysis.Programming is becoming an increasingly important component to data analysisUnderstanding Descriptive StatisticsNow that you have a grasp of the evolution of statistics and data analysis, it can be helpful to know the composition of the discipline itself. Generally, the statistician or mathematician will divide the field into two main branches: descriptive and inferential statistics. Starting with the first, descriptive statistics concerns itself less with the intricacies of drawing an estimator or predictor from sample data and crafting a confidence interval based on various regression models.Instead descriptive statistics concerns itself with understanding what the data looks like. While this may sound rudimentary, it is in fact what the majority of the population not only understands best but also consumes the most. In the UK, for example, people and governments are less interested with predicting the average income for a family with certain characteristics and more interested with, letâs say, the average income of their city.Descriptive statistics describe either qualitative data or quantitative data and want to understand both location and variability statistics. In other words, using things like a histogram or normal distribution, descriptive statistics can tell you what the average data looks like and how different the data is from that average.Measures of location, or central tendency, include the sample mean, median and mode. Measures of variability, on the other hand, are things like the variances, covari ance or standard deviation of dependent and independent variables. Some other tools of measuring you can use in descriptive statistics include:Effect sizeCorrelation coefficientChi-square testsSummarizing Inferential StatisticsThe second branch of statistics involve metrics youâre less likely to see in a newspaper. For example, while youâre probably used to seeing and understanding figures like rankings for the happiest countries, youâre probably not combing journals for the latest quarterly GDP estimates. While inferential statistics can be an extremely powerful statistical tool that shapes are daily lives, it can be a little more complex to perform, interpret and understand.Inferential statistics is split between Bayesian statisticians and frequentists. While more detailed descriptions for how this matters in inferential statistics exists, most methods that are dealt with on a daily basis revolve around Bayesian statistics. Using probability theory, data scientists and stati sticians are able to go beyond exploratory analysis to create a study design that tries to make predictions outside a given data set.While inferential statistics was only implemented in the 19th century, its methods and uses have skyrocketed with the invention of computers and computer software geared towards statistics such as SPSS, R, Stata, and more. The most methods and models youâll apply when conducting inferential statistics are:Linear regressionGeneral linear modelsNon-parametric testsNon-parametric tests can be very powerful in certain situations because of the fact that they donât require the data to follow a specific distribution. If youâre interested in learning more about inferential statistics, start by getting familiar with the many assumptions - such as those under the Gauss-Markov theorem - statisticians will place on their data sets!Comparing indicators within your data set can be fun!The Best Places to Learn StatsFrom ordinary least squares to professional s tatistical methodology - Statistics as a field is as broad as topics such as Economics or Literature. This can make the job of students and professionals within statistics even harder when it comes to learning new skills or perfecting old ones. If youâre looking on advice or help with projects involving statistical models or are simply stuck on a bit of code, the best place to turn is the internet. While not a complete guide to statistical resources, here are some sites you definitely shouldnât missAnalysing IndicatorsWhether youâre interested in creating a classification system for the numerical data youâve gathered or want to understand more about how certain indicators are measured, one of the best sites you can turn to for help is Eurostatâs Statistics Explained.Data VisualizationVisualization, whether youâre doing it for your categorical data or for an ANOVA or regression analysis, can be tricky. Sometimes, you just might not know things like the technicalities of g raphing confidence intervals or how to best present your dependent variable. If youâre interested in fast, low-maintenance visualizations, make sure to check out Datawrapper.ProgrammingIf youâre looking for help with anything related to code, start by checking out Stackoverflow. One of the many online forums dedicated to answering, asking or browsing questions and answers set by real people on real problems related to code.Finding the Perfect Statistics TutorIf youâre interested in finding a statistics tutor, you can start by looking through Superprof's community of almost 150,000 maths professors. Teaching at all different levels and subjects, youâll be able to find a tutor for statistics for the average price of 10 pounds an hour.
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