Marketing 4050 Exam 2
5 Types of statistical Analysis
1. Descriptive analysis 2. Inferential analysis 3. Differences analysis 4. Associative analysis 5. Predictive analysis
5 steps involved in computing confidence intervals for a mean or percentage
1. Determine the sample statistic 2. Identify the sample size, n 3. Determine the variability in the sample for that statistic 4. Decide on the desired level of confidence 5. Perform the computations to determine the upper and lower boundaries of the confidence interval range (typically at 95%)
4 types of measures of variability
1. Frequency (percentage) distribution -Nominal 2. Range - Ordinal 3. Standard deviation - Interval/ Ratio 4. variance
3 measures of central tendency
1. Mode- Nominal 2. Median- Ordinal 3. Mean- Interval/ratio
Types of relationships between two variables
1. Non-monotonic 2. Monotonic 3. Linear 4. Curvilinear
3 criteria for selecting test-market cities
1. Representativeness 2. Degree of isolation 3. Ability to control distribution and promotion
What are the 4 types of test markets?
1. Standard 2. Controlled 3. Electronic 4. Simulated
How can we assess the validity of an experiment?
1. the observed change in the dependent variable is, in fact, due to the independent variable 2. the results of the experiment apply to the "real world" outside the experimental setting.
Alternative hypothesis
A true difference between the compared means (or%)
Extraneous variables
Are all of the variables other than the independent variables that may have an effect on the dependent variables
Independent Variables
Are variables over which the researcher has control and wishes to manipulate to measure the effect on the dependent variable.
Dependent Variables
Are variables that are measured in response to changes in independent variables
E
Experimental effect- that is, the change in the dependent variable due to the independent variable
Interval Scale
Mean Standard deviation &/ or Range
Ration Scale
Mean Standard deviation &/ or Range
Curvilinear
Means some smooth curve pattern describes the association
Ordinal Scale
Median Cumulative percentage distribution/ Range
Nominal Scale
Mode Frequency (percentage) distribution
Null hypothesis
No difference between the means (or%) being compared
R
Random assignment of subjects to experimental and control groups
Variance
Standard deviation squared
X
The manipulation, or change, of an independent variable
O
The measurement of a dependent variable
Population parameters (Greek Letters)
Values that are computed from a complete census, which are considered to be precise and valid measures of the population
Sample statistics
Values that are computed from information provided by a sample
Hypothesis testing
a statistical procedure used to "accept" or "reject" the hypothesis based on sample information
Hypothesis
an expectation of what the population parameter value is
Confidence intervals
are the degree of accuracy desired by the researcher and stipulated as a level of confidence in the form of a range with a lower boundary and an upper boundary.
Laboratory experiments
are those in which one or more independent variables are manipulated and measures of the dependent variable are taken in an artificial setting for the purpose of controlling all extraneous variables that may affect the dependent variable
Field experiments
are those in which the independent variables are manipulated and the measurements of the dependent variables are taken in their natural setting
Range
identifies the maximum and minimum values in a set of numbers
Standard deviation
indicates the degree of variation in a way that can be translated into a bell-shaped curve distribution
Linear relationship
is a "straight-line association" between two scale variables. Means the two variables have a "straight-line" relationship
Experimental group
is a group that has been exposed to a change in the independent variable
Control group
is a group whose subjects have not been exposed to the change in the independent variable
Standard error
is a measure of the variability in a sampling distribution
Posttest
is a measurement of the dependent variable that is taken after changing the independent variable
Pretest
is a measurement of the dependent variable that is taken prior to changing the independent variable
Experimental Design
is a procedure for devising an experimental setting so that a change in a dependent variable may be attributed solely to the change in an independent variable.
Statistical inference
is a set of procedures in which the sample size and sample statistic are used to make an estimate of the corresponding population parameter
Experiment
is a type of study in which one or more independent variables are manipulated to see how one or more dependent variables are affected, while also controlling the effects of additional extraneous variables.
Test marketing
is conducting an experiment or study in a field setting to evaluate a new product or service or other elements of the marketing mix
Simulated test markets (STM)
is one in which a limited amount of data on consumer response to a new product is fed into a model containing certain assumptions regarding planned marketing programs, which generates likely product sales volume.
Electronic test market
is one in which a panel of consumers has agreed to carry identification cards that each consumer presents when buying goods and services
Standard test market
is one in which the firm tests the product or marketing-mix variables through the company's normal distribution channels
Controlled test market
is one that is conducted by outside research firms that guarantee distribution of the product through prespecified types and numbers of distributors.
A/B testing
is testing two alternatives (A and B) to see which one performs better.
Mean
is the arithmetic average of a set of numbers
Internal validity in an experimental study
is the extent to which the researcher is certain that a change in a dependent variable is actually due to the independent variable
Mode
is the number appearing most often in a set of numbers
Non-monotonic relationship
means two variables are associated but only in a very general sense
Monotonic relationship
means you know the general direction (increasing or decreasing) of the relationship between two variables
External validity
refers to the extent to which a researcher can be certain that a relationship observed between independent and dependent variables during an experiment would occur under real-world conditions
Measures of variability
reveal typical difference between the values in a set of values
Frequency (percentage) distribution
reveals the number (percent) of occurrences of each number in a set of numbers
Data analysis
the process of describing a dataset by computing a small number of statistics that characterize various aspects of the dataset
Median
the value whose occurrence lies in the middle of a set of ordered values
ANOVA concept
used when comparing the means of three or more groups