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Notes of Econ424 Part 1: Excel Fall 2008 Ginger Z. Jin http://www.glue.umd.edu/~ginger/ 1 Class 1: Introduction • • • • • Goal of this class Syllabus First-class questionnaire Logins A peek at the data collected by the questionnaire 2 "There are three kinds of lies – lies, damned lies and statistics." --- (?) Mark Twain Winston Churchill Benjamin Disraeli 3 Statistical manipulation – Randomness behind each statistics • News tend to report outliers or new observation that deviates from the status quo • Newsworthy is not equal to good statistics – Correlation and causation • Harvard graduates earn more than high school dropouts, this does not mean these dropouts, if given a Harvard diploma, will earn as much – Report favorable information while hide measurement error / variable definition 4 Examples of statistical manipulation • Executives at XYZ Corporation make an average annual salary of $250,000. – one earns $2 mill, the other 11 earn $90,000. • 88% of those surveyed prefer QRS brand potato chips. – only surveyed 9 people, 8 said yes. • ABC ink jet printers use 22% less ink. – compared to what? • One drug treatment program has a 90% success rate. – Drug free at the end of the program, or x months after finishing the program? • Graph manipulation: – same data but different scale Source: http://www.effectivemeetings.com/productivity/communication/statmanipulation.asp 5 Real examples • McCain Radio Ad in Florida – “Colombia Trade”: Three-quarters of Florida’s exports are with Latin America. – According to trade statistics generated from the U.S. Dept. of Commerce, Florida’s international exports totaled nearly $45 billion in 2007, while exports to Latin America and the Caribbean totaled nearly $24 billion, comprising only 53% of exports. The three-quarters figure comes from the share of exports that originates in Florida or passes through Florida on its way out of the country. Source: http://www.factcheck.org/elections2008/errors_en_espantildeol.html • Democratic National Committee TV Ad: 1.8 million jobs lost (as compared to 2001). – In truth, total nonfarm employment was up by nearly 5.4 million compared to when Bush took office. The 1.8 million figure comes from the number of people without jobs which was higher by 1.8 million than when Bush took office. However, this drop only means that job growth did not keep pace with the number of people seeking work. Source: http://www.factcheck.org/elections-2008/dnc_vs_mccain.html 6 My goal At the end of the semester: • You feel comfortable collecting, locating and analyzing real data • You are able to read, interpret and criticize statistics generated by other people • Given a real data set, you are able to generate basic statistics by yourself and give them meaningful interpretations 7 Syllabus is at: http://www.glue.umd.edu/~ginger/ Click on “ECON424” at the bottom Assign project 1 8 Introduction to Excel Handout from UMD peer training is available at http://www.glue.umd.edu/~ginger/teaching/econ424spring2008/exceltutor.html. Main contents: • Open a file in N:\ and save it (as .xls or .csv) in M:\. • Define observation and variable • Hide/unhide rows/columns, freeze panes • Change excel settings (Tools+options) • Change cell/column/row formats • Highlight (shift+, ctrl+) • Formulas/dragdowns • Charts 9 Extra excel to be covered in class • Text to columns • Insert text box in excel • Transport excel table and chart into MS words • Generate random numbers 10 Class 2: Data Collection (e.stat chapter 3) • Start with a question – characterize music downloads among 18-25 • Define observation – an individual, a class, a school? • Define variables – use or not, intensity of usage, scope of usage • Define sample – Students enrolled? Students attending the first class? Students attending the first class and love music? 11 Data Collection (continued) • Methods of data collection – Field collection by hand – Experiment – Survey / Questionnaire • • • • In class By phone By email Follow up survey – Existing data sources (library, internet, etc.) 12 Data Collection (continued) • Things that need special attention – Measurement error • data collector’s preference, if revealed in the survey, may bias respondent answer • self report may be biased in a specific direction • anonymous vs. identity-revealing – Sample selection • sample not representative by design (those attending first class are different from those who don’t attend) • missing values generate sample selection (need a follow up?) – Sample size and balance • variations in the studied variables • trade off between statistical power and cost of data collection • similar size of comparable subsamples 13 Role playing • To better understand peer-to-peer file sharing in the music industry, what statistics would you generate and analyze if you are the head of: – – – – – – Sony/BMG A Rock Star A new, unknown artist Potential Consumers Apple/Steve Jobs Kazaa (or another file-sharing program) 14 Role playing tasks • Specify a question • Define a data set that will help you answer the question. What statistics do you want most from this data set? • How would you interpret the statistics if it turns out to be …. (imagine the possible outcomes)? • What cannot the statistics say about? • Identify another statistics that would help you most but you cannot get internally 15 Class 3: Data Description Before summarizing the data, clean it first! • Sample – every student that attended 1st class (may be different from the official roster) • Unit of observation? • # of observations? • Variable(s)? • Missing values? • Abnormal values? – Delete them, clean them? Be aware of the assumptions you are making. • What’s the # of observations after all the cleaning? • Take a note of all the above! 16 Class 3: Data Description (e.stat chapter 4) • Mean N unweighted: x x Excel: =average(data) i i 1 N N weighted: w x i x i i 1 N w i i 1 Example: compute GPA (e.stat Figure 4.7) 17 Class 3: Data Description • Median Define: middle point in the data set 50% observations >= median 50% observations <= median Excel: median(data) If the distribution is symmetric, median=mean. Unlike mean, median is insensitive to outliers. Example: e.stat Figure 4.8 18 Class 3: Data Description • Trimmed mean: Ignores a percentage of values that are extreme and compute mean for the rest. Excel: trimmean(data, percent) Example: e.stat Figure 4.10 19 Class 3: Data Description • Order statistics 1st quartile (25% obs below) =quartile(data,1) 2nd quartile = median =quartile(data,2) 3rd quartile (75% obs below) =quartile(data,3) 4th quartile = maximum =quartile(data,4)=max(data) 60th percentile (60% obs below) =percentile(data,0.6) 0 percentile = minimum =min(data) range = max - min Interquartile range = 3rd quartile – 1st quartile Interquartile ratio = 3rd quartile / 1st quartile Example: e.stat Figure 4.15 20 Class 3: Data Description • Sample variance and standard deviation N Var(x): 2 ( x x ) i =var(data) i 1 N 1 Std dev: var( x) =stdev(data) Note: sample variance not equal to population variance Example: e.stat Figure 4.15 21 Class 3: Data Description • Other jargons Mode: the most common value =mode(data) Skewness: asymmetry, long right tail = positively skewed =skew(data) Kurtosis: peakedness, positive if peakier than normal distribution =kurt(data) Example: e.stat sections 4-13, 4-18, 4-20. 22 Class 3: Data Description Summary: N:\share\notes\data-summary-formula.doc Exercise: N:\share\notes\data-summary-exercise.xls Variables already summarized: age, gender, music_source, ipod_own, num_cds Your exercise: num_song_purchased, last_acq, where_acq Optional: num_free_download, num_songs 23 Class 4: Histogram (e.stat Section 4-3) • Histogram: A column chart in which line segments are graphed for the frequencies of classes across the class intervals (bins) and then each segment is connected to the X-axis to form a rectangle. Count of obs in each bin Frequency of scores 8 6 4 2 0 25 50 75 100 Upper limit of each bin 24 Class 4: Histogram • Steps in drawing histogram: – Define bins • Must cover all the data (start from min or less, stop at max or more) • Equal width • The number of bins is between 5 and 20 – Count frequency in each bin • Method 1: =countif(..) • Method 2: =frequency(data, bins) • Method 3: Tools – data analysis – histogram – Plot histogram • Note: histogram is a frequency chart that shows the distribution of the raw data. It is not equal to highlighting the raw data and plotting them directly. 25 Relative frequency polygon • • • (Absolute) frequency: number of observations per bin draw histogram as a column bar chart Relative frequency: percentage of observations per bin draw relative frequency polygon as a line chart Relative frequency polygon is more convenient to compare two data sets, especially when they differ in the number of observations. Relative freq Relative frequency polygons 0.6 0.5 0.4 0.3 0.2 0.1 0 0 25 50 75 100 125 Upper limit of each bin • N:\share\notes\data-summary-example-fall2007.xls 26 Prepare for Project 1 • Require original data collected by yourself, no simple download from a published source • Submit two files: – one excel (for data details) – one word document (for description and summary) • Common mistakes last semester – Compare two relative frequencies using different bin definitions – Use histograms/relative frequency polygon to infer correlation – Treating categorical variable as continuous – Spelling mistakes, forgot to label data sheets, data description lack of details 27 Class 5-6: Probability Theory (e.stat Chapters 5 and 6) • Population: entire set of events that occur in a given universe. – – – – – Event probability Probability density function (PDF, f ( x) ) Cumulative density function (CDF, F ( x) ) Population statistics (mean, variance, etc.) Certainty about a random process • Sample: a subset of a population – Data analysis – Random by nature – Sample statistics are random variables, but population statistics are not! 28 Population mean • For discrete x : prob( x ) x E ( x) i i events • For continuous x : E ( x ) xi f ( x )dx x 29 Population variance and standard deviation • For discrete 2 x : 2 prob ( x ) ( x E ( x )) i events • For continuous x : ( x E ( x )) f ( x )dx 2 2 x 30 Compute E ( x), , by hand or excel: 2 • Bernoulli distribution (flip a coin) 1 x 0 With probability p With probability 1 • Flip n coins and define • Roll a die x 1,2,3,4,5,6 p x x1 x2 .... xn ? Each value with probability 1 / 6 • Roll two dice? • Roll n dice? 31 How to simulate in excel? Bernoulli Distribution 1 x 0 With probability p With probability 1 p Hint: =rand() provides a random number between 0 and 1. You can use rand(), but your formula must return integer 0 or 1. Answer: =if(rand()<p,1,0) What about flip n coins? 32 How to simulate in excel? Roll a die x 1,2,3,4,5,6 Each value with probability 1 / 6 Hint: Your formula must return an integer between 1 and 6, with equal probability. Answer: =round(rand()*6+0.5,0), or =randbetween(1,6) Note: randbetween function may not exist in some versions of Excel. What about roll n dice? 33 Compute E ( x), , by hand or excel: 2 • uniform distribution between (a,b) 1 f ( x) ba Answer: ab E ( x) 2 2 ( b a ) 2 12 pdf 1/(b-a) a b x 34 Normal distribution • Normal distribution: x ~ N ( , ) prob( x ) 0.67 prob( 2 x 2 ) 0.95 prob( 3 x 3 ) 0.99 Example: x ~ N (100,10) f(x), cum(p(x)) Normal PDF 1.000 0.750 0.500 0.250 0.000 70. 80. 90. 100 110 120 130 0 0 0 .0 .0 .0 .0 x 35 What about x x1 x 2 ? E ( x1 x2 ) E ( x1 ) E ( x2 ) Var ( x1 x2 ) Var ( x1 ) Var ( x2 ) 2Cov( x1 , x2 ) ( x1 x2 ) Var ( x1 ) Var ( x2 ) 2Cov( x1 , x2 ) Note: if both x1 and x2 are normally distributed, so is x1+x2. But if x1 and x2 are uniformly distributed, x1+x2 is not uniformly distributed. 36 Normalize • If x~ uniform on (a,b) then xa ~ uniform on (0,1) ba • If x ~ N ( , ) then x ~ N (0,1) 37 How to simulate in excel? • Uniform on (a,b): • Hint: rand() gives you uniform on (0,1). You need to adjust it to fit in the range of (a,b). • Answer: =a+rand()*(b-a) • Normal: • Answer: =norminv(rand(),miu, sigma) N( , ) 38 Class 7: Central limit theorem (e.stat section 10-05) Given any population with mean and standard deviation , for a large sample (N>30), we have: Distribution of the Sample Mean N ) probability x ~ N ( , p(x) p(xbar) 0.2 0.15 0.1 0.05 0 0 50 100 X, Xbar Simulation: show-central-limit-theorem.xls Assign project 2 39 Show CLT in Excel (1) • Choose a population – type of distribution, e.g. Bernoulli – distribution parameters, e.g. p=0.3. • Simulate data – 200 samples – each sample of size N • Lock in the simulated data so the samples do not change later on – copy, paste special 40 Show CLT in Excel (2) • Calculate sample mean for each sample • Compare the distributions of (1) all the raw data and (2) all the sample means – bin range must be wide enough to cover the most dispersed distribution – bin width must be narrow enough so that there are at least 4-5 bins for the most concentrated distribution 41 Class 8: Introduction to Crystal Ball 42 Summary of project 2 Relative Frequency Polygon 0.3 relative frequency for n=20 0.2 relative frequency for n=30 0.1 relative frequency for n=40 68 65 62 59 56 53 50 47 44 41 38 35 32 0 relative frequency for rawdata Bins Relative Frequency Polygon (Uniform) 0.4 0.35 0.3 0.25 0.2 0.15 0.1 0.05 0 relative frequency for n=20 relative frequency for n=30 relative frequency for n=40 Bins 96 88 80 72 64 56 48 40 32 24 16 relative frequency for rawdata 8 0 • Most students perform well • Correct answer: 43 Common mistakes in project 2 • You should simulate from normal/uniform distribution, not from Bernoulli. • You should put raw data and sample mean in ONE relative frequency polygon. To do so, you must have the same bin definition for all the data series plotted in the graph. 44 Common mistakes in project 2 •Raw data relative frequency > 1. Correct: Relative freq=abs freq/(100XN) instead of abs freq/100. Relative Frequency Polygon for Normal Distribution Wrong! 5 4.5 4 3.5 relative frequency for n=15 Frequency 3 relative frequency for n=30 relative frequency for n=45 2.5 relative freq. for raw data n=15 relative freq. for raw data n=30 2 relative freq. for raw data n=45 1.5 1 0.5 0 -16 -15 -14 -13 -12 -11 -10 -9 -8 -7 -6 -5 -4 -3 -2 -1 Bins 0 1 2 3 4 5 6 7 8 9 10 11 12 13 45 Common mistakes in project 2 • For normal distribution, bins start from miu-sigma. Correct: bin should start from miu-3*sigma. Wrong Relative Frequency Polygon 0.3 relative frequency for n=15 relative frequency for n=30 relative frequency for n=70 relative frequency for raw data 0.25 0.2 0.15 0.1 0.05 0 0 6 12 18 24 30 36 42 48 46 Class 9: Mean estimation • According to CLT, sample mean is an unbiased estimate of population mean, but with some errors. • What is the distribution of x if E ( x) 0, 10, N 100 ? Answer: x ~ N ( E ( x), N ) N (0,1) 47 distribution of sample mean (xbar) with E(x)=0 PDF 2 E ( x) N E ( x) 95% chance within this range 2 N 0.4 0.2 0 -3 -2.2 -1.4 -0.6 0.2 1 1.8 2.6 xbar 48 But … • Usually we try to guess what E ( x) is 2 2 prob E ( x ) x E ( x) 0.95 N N 2 2 prob x E ( x) x N N • We don’t know either • Use the sample to take a guess on 49 Confidence Interval • Given confidence level 0.95 (for example) ts ts prob x E ( x) x N N • Where s=est. std. dev.=stdev(data) t= t value = tinv(1-alpha, N-1) • Or xbar +/- confidence(1-alpha, stddev, size) • Note: In Excel, confidence function assumes we know population standard deviation and therefore does not use t-value • Exercise: e.stat problems 12.1 and 12.2 50 Class 10: Hypothesis testing • Null hypothesis H0: E ( x) 0 • Alternative hypothesis: H1: E ( x) 0 two-tail test E ( x) 0 one-tail test E ( x) 0 E ( x ) 1 51 Logic • • • • Assume H0 is right Choose a confidence level 0.95 Compute prob(get the sample mean) Reject H0 if prob(..) is too small, otherwise accept H0 52 Types of Error • Type I Error: reject correct H0 (false neg) • Type 2 Error: accept wrong H0 (false pos) p(x) PDF of Sample Mean: H0 and H1 0.5 0.4 0.3 0.2 0.1 0 0.94 p(x)-alt 0.96 0.98 1 x Critical Value 1.02 1.04 p(x)-null mu's 53 In practice • Method 1 (two tail test only) – Compute x and confidence interval – Accept H0 if 0 falls in the confidence interval – Reject H0 if 0 falls out of the confidence interval Accept (prob=alpha) Reject ((1-alpha)/2) ((1-alpha)/2) x PDF 0.5 Reject 0 -3 -2.2 -1.4 -0.6 0.2 1 1.8 2.6 54 In practice • Method 2: x 0 t s – Compute t-statistics N Degree of freedom – Compute critical value =(+/-)tinv(1-alpha, N-1) (if two-tail) =(+/-)tinv((1-alpha)*2, N-1) (if one-tail) – Accept (reject) H0 if t falls in (out of) the critical value 55 Two-tail critical values Accept (prob=alpha) Reject ((1-alpha)/2) Reject ((1-alpha)/2) t PDF 0.5 0 -3 -2.2 -1.4 -0.6 0.2 1 1.8 2.6 56 H1: 0 One-tail critical value Reject Accept (prob=alpha) (1-alpha) t PDF 0.5 0 -3 -2.2 -1.4 -0.6 0.2 1 1.8 2.6 57 In practice x 0 • Method 3: t s – Compute t-statistics N – Compute p-value = prob(t-stat>=|t|) =tdist(|t|, N-1,2) (if two-tail) =tdist(|t|,N-1,1) (if one-tail) – Reject H0 if p-value<(1-alpha) Accept H0 if p-value>(1-alpha) 58 Exercise • • • • What is H0? What is H1? Two-tail or one-tail? Choose a method E.stat problems: – two-tail test: e.stat 13.13 and 13.17 – One-tail test: e.stat 13.20 and 13.E10 59 Two-tail vs. one-tail • Two-tail test does not indicate which direction to go if we reject H0: 0 , so the alternative is H1: 0 . • One-tail test has a strong view of one direction. For example, a saleman wants to know whether sales have increased from the past, in which case the alternative is H1: 0 . If he is worried if the sales have decreased, the alternative will point to another direction where H1 is 0 . 60 In Excel (alpha=95%): Two-tail • H0: • H1: • T-stat: 0 One-tail • H0: 0 One-tail • H0: 0 • H1: 0 • H1: x 0 s/ N • T-stat: x 0 s/ N 0 0 • T-stat: x 0 s/ N • Crit.Val: (+/-) tinv(0.05,N-1) • Crit. Val • Crit. Val: = + tinv(0.10,N-1) = -tinv(0.10,N-1) • Reject if t > + crit. val. or t< - crit. val • Reject if t> crit. val. • Reject if t<crit. val. 61 Three methods, same result Two-tail • H0: • H1: 0 Two-tail • H0: 0 Two-tail • H0: 0 • H1: 0 • H1: • Conf. Interval [ x ts / N , x ts / N ] • T-stat: x 0 s/ N 0 0 • T-stat: x 0 s/ N • Crit.Val: (+/-) tinv(0.05,N-1) • P-value: tdist(|t-stat|,N-1,2) • Reject if t > + crit. val. or t< - crit. val • Reject if p<0.05 tinv(0.05,N-1) • Reject if 0 is out of conf. interval 62 Class 11: two sample testing • One sample test H0: 0 • What if we don’t know 0 but have two samples • Can we compare x1 and x 2 ? • Yes, must account for errors in both 63 Two independent samples • H0: 1 2 • H1: 1 2 (two-tail) 1 2 (one-tail) • Independent errors in the two samples are independent ( x1 x 2 ) ( 1 2 ) t s12 s22 N1 N 2 • Degree of freedom [min(N1,N2)-1] • Exercise: e.stat problems 14.5, 14.6 64 Two matched samples (same subjects, N1=N2) • H0: • H1: • • • • • • 1 2 1 2 (two-tail) 1 2 (one-tail) Generate a new variable dx=x1-x2 Transform H0: dx 1 2 Now is a one-sample test Degree of freedom N1-1 Example: e.stat figure 14.8 Exercise: e.stat problem 14.7 65 How to tell if two samples are matched or not? • N1=N2 for matched pairs • Same subjects? • If resorting one sample does not affect the comparison, they are independent 66 Class 12: regression • “Regress Y on X” means: Error term y x Independent variable(s) Dependent variable coefficients 67 Ordinary least squares (OLS) Goal: Find a linear line that best fits the data ( yi y i ) 2 ( yi xi ) 2 Best: min , i i Scatter Plot: Consumption on Income Slope (random!) ( x x )( y y ) (x x) i i i 2 i i y x Intercept (random!) Average point the line ( x , y) is always on Y: Consumption Solution: 60.00 50.00 40.00 30.00 20.00 10.00 0.00 0.00 20.00 40.00 60.00 X: Disposable Income 68 Test coefficients • Estimated coefficients are random numbers! – depend on data • The point estimates should be judged together with their standard errors • Hypothesis test H0: 0 • T-statistics 0 t stderr ( ) • Critical values (assuming conf. level=95%) =tinv(0.05,N-2) for two-tail Two-tail or one-tail depends on H1 =tinv(0.10,N-2) for one-tail • P-values =tdist(|t|,N-2, 2 or 1) 69 Measure the fit of OLS • Total sum of squared deviations (TSS): 2 ( y y ) i • Decompose TSS: 2 ( y y ) – Explained by the model: – Unexplained residuals: i 2 ( y y) i • R-square: (explained)/(total) 70 F-test k=number of coefficients N=number of observations ExplainedS S /( k 1) F (k 1, N k ) - - - - - - - - - - - - - - - - - - - - - Unexplaine dSS /( N k ) R 2 /( k 1) --------------------(1 R 2) /( N k ) H0: all the coefficients except the constant term are zero. H1: some of the non-constant coefficients are not zero. 71 • Correlation coefficient: (x i x )( yi y ) i 2 2 ( x x ) ( y y ) i i i i Note: 1. Correlation coefficient is between -1 and 1. What does it mean if correlation coefficient is equal to -1, 0, or 1? 2. correlation coefficient is symmetric, i.e corr(x,y)=corr(y,x), but OLS coefficients aren’t. This means regress y on x is not equivalent to regress x on y. 3. Correlation coefficient is always of the same sign as the OLS slope coefficient. 4. R-square = (correlation coefficient)^2 72 Regression in Excel • Method 1: =linest(data of y, data of x, include const?, other statistics?) No output labels, must be familiar with the output layout • Method 2: Tools - data analysis – regression • Note: you could have multiple x, but they must be adjacent to each other. • Example: e.stat Figure 19.7 • Exercise: e.stat problems 19.E1, 19.E2, 19.E3 73 Assumptions and Caveats in OLS (e.stat section 22-04) • • • • Errors have mean zero. Errors have a constant standard deviation. Errors are drawn independently. Errors are uncorrelated with x. All the important x are included in the regression. (omitted variable bias, see e.stat Figure 22.4.) • Errors are distributed normally. 74 Class 14: Midterm Review – open book – understand the concepts – use them in real examples – 9:30-10:45am, Plant Sciences 1129 – If you cannot attend the midterm for reasons that are consistent with University Policy, please let me know AT LEAST 12 hours BEFORE the midterm time, otherwise your midterm grade will be counted as zero. 75 Concepts to grasp (1) • Population / sample • Population – Cdf (prob(var<x)) – Pdf (first derivative of cdf) – population mean, population std. dev. • Sample – Histogram, frequency polygon, quartiles, percentiles, sample mean, sample std. dev., skewness, kurtosis • Population sample – Central limit theorem xbar~N(µ, σ/sqrt(n)) • Sample Population – Xbar is a proxy of µ with noise 76 Concepts to grasp (2) • Inference – Type I error, Type II error – Confidence level α – Confidence interval – Hypothesis testing • • • • H0 H1 Accept/reject? One-tail, two-tail test 77 Summary of Excel (1) • Basic excel – open, save and close files – cut, paste and paste special – change format for cell, row or columns – sort data by one or two variables – chart wizard – freeze panes – drag cells – use excel functions 78 Summary of Excel (2) • Data description – mean, median, trimmed mean – standard deviation, variance – quartiles – mode, skewness, kurtosis – histogram (absolute frequency) – relative frequency polygon 79 Summary of Excel (3) • Probability theory – PDF, CDF – mean and standard deviation – bernoulli, binomial – uniform, normal – how to simulate them in Excel? – Central limit theorem – how to see central limit theorem in excel? 80 Summary of Excel (4) • Estimation and Hypothesis testing – – – – – – – – – use sample mean to estimate population mean confidence interval type I error and type II error null hypothesis (H0) and alternative hypothesis (H1) one-tail vs. two-tail t-statistics, critical value, p-value one-sample test two-sample test (independent) two-sample test (matched pair) 81 Summary of Excel (5) • Linear regression – model • one variable on the right hand side • more than one variables on the right hand side • create and use binary variables – fit of the model • • • • R square F test scatter plot correlation coefficient – coefficient estimates • point estimate • hypothesis testing • omitted variable bias 82 Class 15: Midterm Grades 83