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MGMT 276: Statistical Inference in Management

MGMT 276: Statistical Inference in Management. Extra Credit Opportunity. Learn more about how business research is actually conducted . Requires two online surveys In-class on November 10 th is dedicated to this topic.

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MGMT 276: Statistical Inference in Management

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  1. MGMT 276: Statistical Inference in Management Extra Credit Opportunity Learn more about how business research is actually conducted. Requires two online surveys In-class on November 10th is dedicated to this topic http://www.thedailyshow.com/video/index.jhtml?videoId=188474&title=an-arab-family-man
  2. Extra Credit Opportunity - participate in study There are 3 parts: Part 1: Simply complete an online questionnaire by Oct 17th Part 2: Simply complete a 2nd online questionnaire by Oct 24th (These will be spaced approx 2 weeks apart) Part 3: In-class activity on Nov 10th (Bring laptop to class) To sign up - register http://mgmt.participantpool.com
  3. Extra Credit Opportunity – more details Hello everyone,  If you are interested, there is an extra credit opportunity that is now available at http://mgmt.participantpool.com. The experiment will require that you complete three sections. Each section should take approximately 30-45 minutes to complete and each section will be spaced approximately 2 weeks apart. If you would like to participate please first register at the site using your UA NetID by clicking on the register link at http://mgmt.participantpool.com. You can use any password you wish but you must use your university of arizonanetId to verify that you are in Suzanne Delaney's course. This is the netId that you use to access uaccess, and is the first part of your university authorized email (netid@email.arizona.edu). After registering, you will receive a verification email and you will be able to login. After logging in you will see a list of three sections. Each section is associated with a completion time period. The first section should be completed by October 17th at 9am. The second section will open on October 17th and will be open until October 24th at 9am. Finally, the third section is to be completed during regularly scheduled class time on November 10th. When the section becomes available a green "Available" will appear for that section. Simply click on the word "Available" to begin. If you have any questions during the survey, please stop, email Sam Birk at samuel.birk@gmail.com and wait for a response. Your survey responses will be saved and you will be able to continue as soon as you receive a response from Sam. Please bring your laptops to class on the 10th if you have one. If you do not own a laptop, a computer will be provided to you. If you have any questions or concerns regarding this extra credit opportunity, please contact Sam Birk at birk@email.arizona.edu."Please let me know if you have any questions or concerns, SamSam Birk Doctoral CandidateManagement and OrganizationsEller College of ManagementUniversity of Arizonasamuel.birk@gmail.com(240) 351.3244
  4. Please click in Set your clicker to channel 03 My last name starts with a letter somewhere between A. A – D B. E – L C. M – R D. S – Z
  5. MGMT 276: Statistical Inference in Management Welcome http://www.thedailyshow.com/video/index.jhtml?videoId=188474&title=an-arab-family-man
  6. Please read: Chapters 5 - 9 in Lind book & Chapters 10, 11, 12 & 14 in Plous book: Lind Chapter 5: Survey of Probability Concepts Chapter 6: Discrete Probability Distributions Chapter 7: Continuous Probability Distributions Chapter 8: Sampling Methods and CLT Chapter 9: Estimation and Confidence Interval Plous Chapter 10: The Representativeness Heuristic Chapter 11: The Availability Heuristic Chapter 12: Probability and Risk Chapter 14: The Perception of Randomness
  7. Homework due next class - (Due October 6th) Complete HomeworkConnecting Intention with Design Available on class website Please double check – All cell phones other electronic devices are turned off and stowed away
  8. Use this as your study guide By the end of lecture today10/4/11 Central Limit Theorem Connecting intentions of studies with Experimental Methodologies Appropriate statistical analyses Appropriate graphs The Seven Prototypical Designs
  9. Central Limit Theorem Proposition 1: If sample size (n) is large enough (e.g. 100) The mean of the sampling distribution will approach the mean of the population As n ↑ x will approach µ Proposition 2: If sample size (n) is large enough (e.g. 100) The sampling distribution of means will be approximately normal, regardless of the shape of the population As n ↑ curve will approach normal shape Proposition 3: The standard deviation of the sampling distribution equals the standard deviation of the population divided by the square root of the sample size. As n increases SEM decreases. As n ↑ curve variability gets smaller X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X
  10. . Writing Assignment: Writing a letter to a friend Imagine you have a good friend (pick one). This is a good friend whom you consider to be smart and interested in stuff generally. They are teaching themselves stats (hoping to test out of the class) but need your help on a couple ideas. For this assignment please write your friend/mom/dad/ favorite cousin a letter answering these five questions: (Feel free to use diagrams and drawings if you think that can help) Dear Friend, 1. I’m struggling with this whole Central Limit Theorem idea. Could you describe for me the difference between a distribution of raw scores, and a distribution of sample means? 2. I also don’t get the “three propositions of the Central Limit Theorem”. They all seem to address sample size, but I don’t get how sample size could affect these three things. If you could help explain it, that would be really helpful. Hand in your writing assignment and homework
  11. Let’s try one Types of probability Marietta is a manager of a movie theater. She is trying to figure out whether it is a good idea to install 3-D equipment. It is expensive but she has chatted casually with other theater managers and is 95% sure that she will make enough money in additional sales to offset her investment. This is an example of a _____ probability. a. Empirical probability b. Classical probability c. Subjective probability d. Not enough information provided Correct Answer
  12. Let’s try one Types of probability Marietta is a manager of a movie theater. She is trying to figure out how much candy (Junior Mints) to stock. She measured the number of boxes of Junior Mints sold for the past 2 months and found that she consistently sold 90% of her stock. She believes that she will sell 90% of her stock of Junior Mints this month. This belief is based on the previous months’ sales. This is an example of a _____ probability. a. Empirical probability b. Classical probability c. Subjective probability d. Not enough information provided Correct Answer
  13. Let’s try one Types of probability Marietta is a manager of a movie theater. She is trying to figure out which employee knows the most about movies. She gives a 100 item test that is made up of all “true” / “false” questions. She believes that even if the employees know absolutely nothing about movie trivia, that they will get 50% right, just by guessing. She knows this even before a single employee takes the test. This is an example of a _____ probability. a. Empirical probability b. Classical probability c. Subjective probability d. Not enough information provided Correct Answer
  14. Types of probability Let’s try one Frank is a high school physics teacher who also coaches the track team. The track team has been doing very well and have been traveling to competitions a lot. He knows that several of the athletes have missed class because of the excessive traveling. But he also knows they have been working especially hard, and he believes that they will all get above 90% on his next exam. This is an example of a _____ probability. a. Empirical probability b. Classical probability c. Subjective probability d. Not enough information provided Correct Answer
  15. Let’s try one Types of probability Frank is a high school physics teacher who also coaches the football team. Before each game he tosses a coin to determine which team will kick the ball, and which team will receive. He believes that the “blue” team has a 50% chance of kicking the ball as determined by the coin toss. This is an example of a _____ probability. a. Empirical probability b. Classical probability c. Subjective probability d. Not enough information provided Correct Answer
  16. Let’s try one Types of probability Frank is a high school physics teacher. He has given this same exam every year for 5 years. In every one of those 5 years, 5% of his class failed the exam. Based on these data, he believes that 5% of his current students will probably fail this next exam. This is an example of a _____ probability. a. Empirical probability b. Classical probability c. Subjective probability d. Not enough information provided Correct Answer
  17. Let’s try one According to the Central Limit Theorem, as sample size increases a. variability also increases b. variability decreases c. variability stays the same d. not enough information provided X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X
  18. Let’s try one According to the Central Limit Theorem, as sample size increases, the mean of the sampling distribution a. approaches the population mean b. becomes less like the population mean c. is unrelated to the population mean d. not enough information provided X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X
  19. Let’s try one According to the Central Limit Theorem, as sample size increases, the shape of the sampling distribution approaches a. the shape of the population b. a normal shape (bell-shaped) c. a skewed shape d. not enough information provided X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X X
  20. Connecting intentions of studies with Experimental Methodologies Appropriate statistical analyses Appropriate graphs Today I want to present some “typical designs”. We will spend the next couple weeks filling in the details. We’ll come back to these distinctions over and over again, and build on them for the rest of the semester. Let’s get this overview well! Not worry about calculation details for now
  21. Create example of each type Identify IV (one or two) Identify DV (one or two) Draw possible graph for each Think about how you might Think about this as we work through each type of study Study Type 1: Confidence Intervals Study Type 2: t-test Study Type 3: One-way Analysis of Variance (ANOVA) Study Type 4: Two-way Analysis of Variance (ANOVA) Study Type 5: Correlation Study Type 6: Simple and Multiple regression We’ll come back to these distinctions over and over again, and build on them for the rest of the class. Let’s get this overview well! Not worry about calculation details for now Study Type 7: Chi Square
  22. Remember, this is just introduction to the idea Not worry about calculation details for now, we will get to those soon Study Type 1: Confidence Intervals On average newborns weigh 7 pounds, and are 20 inches long. My sister just had a baby - guess how much it weighs? Makes sense, right?!? Guess the mean. On average you would be right most often if you always guessed the mean Point estimate versus confidence interval: Guessing a single number versus a range of numbers What if you really needed to be right?!!? You could guess a range with smallest and largest possible scores. (how wide a range to be completely sure? Confidence interval: Guessing a range (max and min) and assigning a level of confidence that the score falls in that range
  23. Remember, this is just introduction to the idea Not worry about calculation details for now, we will get to those soon Study Type 1: Confidence Intervals Confidence Intervals: A range of values that, with a known degree of certainty, includes an unknown population characteristic, such as a population mean 100% Confidence Interval: We can be 100% confident that our population mean falls between these two scores (Guess absurdly large and small values) 99% Confidence Interval: We can be 99% confident that our population mean falls between these two scores 95% Confidence Interval: We can be 95% confident that our population mean falls between these two scores Which has a wider interval relative to raw scores 95% or 99%?
  24. Remember, this is just introduction to the idea Not worry about calculation details for now, we will get to those soon Study Type 1: Confidence Intervals Confidence Intervals: A range of values that, with a known degree of certainty, includes an unknown population characteristic, such as a population mean This sample of 10,000 newborns a mean weight is 7 pounds. What do you think the minimum and maximum weights would be to capture 95% of all newborns? This sample of 1000 flights, the mean number of empty seats is 12. What do you think the minimum and maximum number of empty seats are likely to be in the flights today with a 95% level of certainty? You can use a mean of a sample to guess the mean of population mean of a smaller sample most likely score for an individual This sample of 500 households produced a mean income of $35,000 a year. What do you think the minimum and maximum income levels are so that we are 95% confident that we captured Mabel’s?
  25. Study Type 1: Confidence Intervals Study Type 2: t-test We are looking to compare two means
  26. Study Type 2: t-test analysis Single Independent Variable (categorical) comparing two groups Single Dependent Variable (numerical/continuous) Used to test the effect of the IV on the DV Andrea was interested in the effect of vacation time on productivity of the workers in her department. She randomly assigned workers into two groups, she allowed one group to go on vacation while the other group had no vacation. After the vacation she measured productivity for the two groups. Independent Variable Dependent Variable Between or within Quasi or true Causal relationship? Productivity Yes Vacation No Vacation
  27. Andrea was interested in the effect of vacation time on productivity of the workers in her department. She randomly assigned workers into two groups, she allowed one group to go on vacation while the other group had no vacation. After the vacation she measured productivity for the two groups. This is an example of a true experiment. Dependent variable is always quantitative If “true” experiment (randomly assigned to groups) we can conclude that vacation had an effect - it increased productivity In t-test, independent variable is qualitative (with two groups) If “quasi” experiment (not randomly assigned to groups), we can conclude only that data suggest that vacation may have had an effect; productivity increased for those who went on vacation, but we can’t rule out other explanations.
  28. Study Type 2: t-test analysis Single Independent Variable (categorical) comparing two groups Single Dependent Variable (numerical/continuous) Comparing two means (2 bars on graph) Used to test the effect of the IV on the DV Please note: a t-test allows us to compare two means If the means are statistically different - we say that there is “real” difference that is not just due to chance - we say there is a statistically significant difference p < 0.05 p < 0.05 is most common value – the “p value” can vary (p < 0.01, or p < 0.001)
  29. Study Type 1: Confidence Intervals Study Type 2: t-test Study Type 3: One-way Analysis of Variance (ANOVA) Comparing more than two means
  30. Study Type 3: One-way ANOVA Single Independent Variable comparing more than twogroups Single Dependent Variable (numerical/continuous) Used to test the effect of the IV on the DV Ian was interested in the effect of incentives for girl scouts on the number of cookies sold. He randomly assigned girl scouts into one of three groups. The three groups were given one of three incentives and looked to see who sold more cookies. The 3 incentives were 1) Trip to Hawaii, 2) New Bike or 3) Nothing. This is an example of a true experiment How could we make this a quasi-experiment? Independent Variable: Type of incentive Levels of Independent Variable: None, Bike, Trip to Hawaii Dependent Variable: Number of cookies sold Levels of Dependent Variable: 1, 2, 3 up to max sold Between participant design Causal relationship: Incentive had an effect – it increased sales
  31. Study Type 3: One-way ANOVA Single Independent Variable comparing more than two groups Single Dependent Variable (numerical/continuous) Used to test the effect of the IV on the DV Ian was interested in the effect of incentives for girl scouts on the number of cookies sold. He randomly assigned girl scouts into one of three groups. The three groups were given one of three incentives and looked to see who sold more cookies. The 3 incentives were 1) Trip to Hawaii, 2) New Bike or 3) Nothing. This is an example of a true experiment Dependent variable is always quantitative Sales Sales New Bike None Trip Hawaii New Bike None Trip Hawaii In an ANOVA, independent variable is qualitative (& more than two groups)
  32. Study Type 1: Confidence Intervals Study Type 2: t-test Study Type 3: One-way Analysis of Variance (ANOVA) Study Type 4: Two-way Analysis of Variance (ANOVA) Comparing two independent variables Each one has multiple levels
  33. “Two-way” = “Two IVs” Study Type 4: Two-way ANOVA Ian was interested in the effect of incentives (and age) for girl scouts on the number of cookies sold. He randomly assigned girl scouts into one of three groups. The three groups were given one of three incentives and he looked to see who sold more cookies. The 3 incentives were: 1) Trip to Hawaii, 2) New Bike or 3) Nothing. He also measured the scouts’ ages. Independent Variable #1 Independent Variable #2 Dependent Variable
  34. Study Type 4: Two-way ANOVA Multiple Independent Variables (categorical), each variable comparing two or moregroups Single Dependent Variable (numerical/continuous) Used to test the effect of two IV on the DV Independent Variable #1: Type of incentive Levels of Independent Variable: None, Bike, Trip to Hawaii Independent Variable #2: Age Levels of Independent Variable: Elementary girls versus college Dependent Variable: Number of cookies sold Levels of Dependent Variable: 1, 2, 3 up to max sold Between participant design Results: Incentive had an effect – it increased sales Data suggest age had an effect – older girls sold more
  35. Study Type 4: Two-way ANOVA Two Independent Variables (categorical) Single Dependent Variable (numerical/continuous) Used to test the effect of two IV on the DV Dependent variable is always quantitative College College Elementary Sales Elementary Sales New Bike None Trip Hawaii New Bike None Trip Hawaii In an ANOVA, both independent variables are qualitative (with two or more groups)
  36. Study Type 1: Confidence Intervals Study Type 2: t-test Study Type 3: One-way Analysis of Variance (ANOVA) Study Type 4: Two-way Analysis of Variance (ANOVA) Study Type 5: Correlation
  37. Pretty much all correlations are “quasi-experimental” Study Type 5: Correlation plots relationship between two continuous / quantitative variables Neutral relative to causality – but especially useful for predictions Relationship between amount of money spent on advertising and amount of money made in sales Dependent variable is always quantitative Dollars spent on Advertising Positive Correlation In correlation, both variables are quantitative Dollars in Sales Describe strength and direction of correlation – in this case positive/strong Graphing correlations use scatterplots (not bar graphs)
  38. Study Type 1: Confidence Intervals Study Type 2: t-test Study Type 3: One-way Analysis of Variance (ANOVA) Study Type 4: Two-way Analysis of Variance (ANOVA) Study Type 5: Correlation Study Type 6: Simple and Multiple regression
  39. YearlyIncome Expenses per year Study Type 6: Regression: Using the correlation to predict the value of one variable based on its relationship with the other variable Multiple regression will use multiple independent variables to predict the dependent variable You probably make this much The predicted variable goes on the “Y” axis and is called the dependent variable. The predictor variable goes on the “X” axis and is called the independent variable You probably make this much Dependent Variable (Predicted) If you spend this much If you save this much Independent Variable 1 (Predictor) If you spend this much Independent Variable 2 (Predictor)
  40. Study Type 1: Confidence Intervals Study Type 2: t-test Study Type 3: One-way Analysis of Variance (ANOVA) Study Type 4: Two-way Analysis of Variance (ANOVA) Study Type 5: Correlation Study Type 6: Simple and Multiple regression Study Type 7: Chi Square
  41. Study Type 7: Chi square is used to evaluate nominal data (just count how many in each category) or objects or events Variables are nominal or ordinal (so we comparing frequencies, not means) What is most popular ride at Disneyland? Just count how many people ride each one. a. Dumbob. Peter Panc. Space Mountaind. Splash Mountaine. Small World We could gather this data using clickers
  42. Thank you! See you next time!!
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