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Statistics for Linguistics Students

Statistics for Linguistics Students. Michaelmas 2004 Week 1 Bettina Braun. Why calculating statistics?. Describe and summarise the data E.g. examination results (out of 100) 22 98 40 45 16 31 77 78 55 45 61 91 87 45 54 66 75 87 88 49 64 76 58 61 …

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Statistics for Linguistics Students

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  1. Statistics for Linguistics Students Michaelmas 2004 Week 1 Bettina Braun

  2. Why calculating statistics? • Describe and summarise the data • E.g. examination results (out of 100) 22 98 40 45 16 31 77 78 55 45 61 91 87 45 54 66 75 87 88 49 64 76 58 61 … • Average mark/Spread of scores/Lowest and highest marks?/Comparison with other results (e.g. from last year’s?)

  3. Population vs. Sample • Population: total universe of all possible observations.Populations can be finite or infinite, real or theoretical • the IQ of all adult men in Britain • The outcome of an infinite number of flips of a coin • Descriptive statitics are called parameters

  4. Population vs. Sample (cont’d) • Sample: Subset of observations drawn from a given population • The IQ scores of 100 adult men in Britain • The outcome of 50 flips of a coin • Descriptive statitics from a sample are called statistics • Note: In experimental research it is important to draw a representative, random sample that is not biased

  5. Histograms: Frequency distribution of each event Data: Tutorial1.sav

  6. Central tendency: mode and median • Mode: Most frequent mark (Note: there may be multiple modes) • Median: score from the middle of the list when ordered from lowest to highest. Cuts data into halves (doesn’t take account of values of all scores but only of the scores in middle position).

  7. Central tendency: mean • Mean: sum of scores divided by the number of scores Note on notation: Greek letters often used for population, roman letters used for statistic (properties of a sample)

  8. Comparing measures of “central tendency” • Mode: • quick if we have frequency distribution • Possible with categorical data • Median: • Good estimate if we have abnormally large or small values (e.g. max aircraft speed of 450km/h, 480km/h, 500km/h, 530km/h, 600km/h, and 1100km/h) • Only influenced by values in the middle of ordered data • Mean • Every score is taken into account • Some interesting properties  Most widely used

  9. Types of variables • Interval (scale): difference between consecutive numbers are of equal intervals (e.g. time, speed, distances). Precise measurements • Ordinal: assignments of ranks that represent position along some ordered dimension (e.g. ranking people wrt their speed, 1 = fastest, 4 = slowest). No equal intervals • Categorical (nominal): numerical categories, labels (e.g. brown = 1, blue = 2, green = 3) • Question: on which type of data can we calculate a meaningful “central tendency”?

  10. Spread of distributions: why?

  11. Spread of distributions:range and quartiles • Small spread often desirable as it indicates a high proportion of identical scores • Large spread indicates large differences between individual scores • Range: difference between highest and lowest score – rather crude measure • Quartiles: cuts the ordered data into quarters (second quartile = median)

  12. Median, quartiles, and outliers • Outlier (more than 1.5 box lengths above or below the box) Interquartile range • Extreme value (more than 3 box lengths below or above the box) Largest value which is not outlier Upper quartileMedianLower quartile Smallest value which is not outlier tutorial1.sav: simple bp, sep. var

  13. Spread of the population: variance measures • Variance: sum of squared deviations from the mean Variance = • Standard deviation: square root of variance

  14. Normal distribution (Gaussian distribution) • Example: IQ scores, mean=100, sd=16 Mean = Median = Mode

  15. Skewed distributions and measures of central tendency

  16. Bimodal distributions

  17. Normal distribution (Gaussian distribution) • Example: IQ scores, mean=100, sd=16 Mean = Median = Mode

  18. z-scores • Z-score: deviation of given score from the mean in terms of standard deviations

  19. How likely is a given event? • Example: time to utter a particular sentence: x = 3.45s and sd = .84s • Questions: • What proportion of the population of utterance times will fall below 3s? • What proportion would lie between 3s and 4s? • What is the time value below which we will find 1% of the data?

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