Download presentation
Presentation is loading. Please wait.
1
1 Economics 240A Power One
2
2 Outline w Course Organization w Course Overview w Resources for Studying
4
Organization ( Cont.)
5
5 Course Overview w Topics in Statistics Descriptive Statistics Exploratory Data Analysis Probability and Distributions Proportions Interval Estimation Hypothesis Testing Correlation and Regression Analysis of Variance
6
6
7
7
8
8
9
9
10
10 Resources for Studying w Keller & Warrack Text Readings CDROM PowerPoint Slide Shows Appletns w Instructor Lecture Notes Lab Notes & Exercises Problem Sets PowerPoint Slide Shows
11
11 http://econ.ucsb.edu
12
12 Keller & Warrack CDROM
13
13 http://www.duxbury.com/statistics
14
14 Student Book Companion Siten
15
15 Keller & Warrack Slide Show w Excerpts from Ch. 2
16
16 Graphical Descriptive Techniques Chapter 2
17
17 2.1 Introduction w Descriptive statistics involves the arrangement, summary, and presentation of data, to enable meaningful interpretation, and to support decision making. w Descriptive statistics methods make use of graphical techniques numerical descriptive measures. w The methods presented apply to both the entire population the population sample
18
18 2.2Types of data and information w A variable - a characteristic of population or sample that is of interest for us. Cereal choice Capital expenditure The waiting time for medical services w Data - the actual values of variables Interval data are numerical observations Nominal data are categorical observations Ordinal data are ordered categorical observations
19
19 Types of data - examples Interval data Age - income 5575000 4268000.. Age - income 5575000 4268000.. Weight gain +10 +5. Weight gain +10 +5. Nominal Person Marital status 1married 2single 3single.. Person Marital status 1married 2single 3single.. Computer Brand 1IBM 2Dell 3IBM.. Computer Brand 1IBM 2Dell 3IBM..
20
20 Types of data - examples Interval data Age - income 5575000 4268000.. Age - income 5575000 4268000.. Nominal data With nominal data, all we can do is, calculate the proportion of data that falls into each category. IBM Dell Compaq OtherTotal 25 11 8 6 5 0 50% 22% 16% 12% IBM Dell Compaq OtherTotal 25 11 8 6 5 0 50% 22% 16% 12% Weight gain +10 +5. Weight gain +10 +5.
21
21 Types of data – analysis Knowing the type of data is necessary to properly select the technique to be used when analyzing data. Type of analysis allowed for each type of data Interval data – arithmetic calculations Nominal data – counting the number of observation in each category Ordinal data - computations based on an ordering process
22
22 Cross-Sectional/Time-Series Data w Cross sectional data is collected at a certain point in time Marketing survey (observe preferences by gender, age) Test score in a statistics course Starting salaries of an MBA program graduates w Time series data is collected over successive points in time Weekly closing price of gold Amount of crude oil imported monthly
23
23 2.3 Graphical Techniques for Interval Data w Example 2.1: Providing information concerning the monthly bills of new subscribers in the first month after signing on with a telephone company. Example 2.1 Collect data Prepare a frequency distribution Draw a histogram
24
24 Largest observation Collect data (There are 200 data points Prepare a frequency distribution How many classes to use? Number of observations Number of classes Less then 505-7 50 - 2007-9 200 - 5009-10 500 - 1,00010-11 1,000 – 5,00011-13 5,000- 50,00013-17 More than 50,00017-20 Class width = [Range] / [# of classes] [119.63 - 0] / [8] = 14.95 15 Largest observation Largest observation Smallest observation Smallest observation Smallest observation Smallest observation Largest observation Example 2.1Example 2.1: Providing information
25
25 Draw a Histogram Example 2.1Example 2.1: Providing information
26
26 nnnn 0 20 40 60 80 153045607590 105120 Bills Frequency What information can we extract from this histogram About half of all the bills are small 71+37=108 13+9+10=32 A few bills are in the middle range Relatively, large number of large bills 18+28+14=60 Example 2.1Example 2.1: Providing information
27
27 w It is generally best to use equal class width, but sometimes unequal class width are called for. w Unequal class width is used when the frequency associated with some classes is too low. Then, several classes are combined together to form a wider and “more populated” class. It is possible to form an open ended class at the higher end or lower end of the histogram. Class width
28
28 w There are four typical shape characteristics Shapes of histograms
29
29 Positively skewed Negatively skewed Shapes of histograms
30
30 A modal class is the one with the largest number of observations. A unimodal histogram The modal class Modal classes
31
31 Descriptive Statistics w Central Tendency mode median mean w Dispersion standard deviation interquartile range (IQR)
32
32
33
33
34
34 Exploratory Data Analysis w Stem and Leaf Diagrams w Box and Whiskers Plots
35
35
Similar presentations
© 2025 SlidePlayer.com. Inc.
All rights reserved.