Learning Objective:
Distinguish between independent and dependent variables
Words in orange represent glossary terms. You can locate the Glossary in Appendix 1.
Variables and Values
The ultimate goal of science is to identify and explain cause-and-effect relationships among events in the real world. For example, a researcher may want to understand how a person can grow thicker hair. This researcher may think that using high-quality shampoo, specifically Ultra Shampoo, will result in thicker hair. How should the researcher structure questions about whether this specific shampoo brand promotes thick and luxurious hair?
A quantitative researchers approach to this problem begins by using variables. A variable is a mathematical representation of the real-world entity being measured. For example, the researcher could decide that use or non-use of Ultra Shampoo is one variable. A measure of hair quality, as judged by a professional hairstylist, could be a second variable.
Variables are sometimes called attributes, traits, or constructs and can actually take on two or more values. The value of a variable is defined as a single observation for the variable. Going back to the example, if a person uses Ultra Shampoo, the researcher could code Yes as a value for the use of the Ultra Shampoo variable and “No” for its non-use. Similarly, a 10, corresponding to perfect hair, could be a value for a single person on the hair quality variable.
The image below shows how variables and values appear in data sets. Note that a persons name is used as a variable so that the name will identify the values for the study participant on the other two variables.
Cause and Effect Relationships
Again, the ultimate goal of science is to identify and explain cause and effect relationships among events in the real world. Questions about cause-and-effect are everywhere. For example: Does smoking cause cancer? Does daily exercise minimize anxiety? Does transformational leadership result in job satisfaction? Essential to determining cause-and-effect relationships is recognizing that some variables are independent and some are dependent.
· bullet
The independent variable is defined as the variable that is studied to see if it causes a change in the dependent variable. Put another way, the experimental manipulations (such as control groups) a researcher uses are reflected in the independent variable.
· bullet
The dependent variable is defined as a measure of the outcome: that is, the dependent variable allows the researcher to determine whether the independent variable has an effect.
For example, in the hypothetical study of how a brand of shampoo affects hair quality, the researcher could randomly assign some people to use Ultra Shampoo and others to use a competing brand of shampoo. In this situation, the type of shampoo would be the independent variable and hair quality would be the dependent variable.
Topic 4 of 4
Term
Meaning
+?
Positive infinity.
-.564
Observed value of the test statistic.
-?
Negative infinity.
.004
p-value
.576
p-value
2-tailed
The alternative hypothesis states simply that there is a difference between the means but does not specify the direction of the difference.
61
61 is the degrees of freedom (df) calculated by n-2 (63-2)
alpha
The probability of a type I error.
box-plot
A graph that displays key elements of distribution.
categorical variables
Variables that have a limited number of possible values; participants in the study get placed into one of a small number of categories for the variable.
central limit theorem
regardless of the distribution of the population, if the sample size is relatively large (a rule of thumb is n > 30), the sampling distribution of sample means is close to normal.
cohens d
A measure of effect size.
confidence intervals
A range of values used to specify the likelihood that the population parameter is contained within a specified range.
continuous variable
A continuous variable is one based on an interval or ratio level of measurement. Between any two values for the variable, there is another possible value.
continuous variables
A continuous variable is one based on an interval or ratio level of measurement. Between any two values for the variable, there is another possible value.
control group
The collection of participants in the condition of an experiment who do not receive the treatment. A group receiving an actual treatment can then be compared to the control group.
dependent variable
A measure of the outcome that allows us to determine whether the independent variable has an effect.
discrete
A variable based on an ordinal, interval, or ratio levels of measurement and has a countable, not infinite, set of possible values.
distribution of a population
The distribution of all values for all elements of the population.
distribution of a sample
The distribution of actual observations based on the data that you collect.
distribution of the sample
Sample distribution (also called distribution of the sample) for a variable, the distribution of values for the elements of the population that are actually observed. (note that Sample distribution is different from Sampling distribution).
element
an entity in the population that may be selected for the sample and then observed.
factor
The alternative hypothesis stated simply that there was a difference between the means, and does specify the direction of the difference.
frequency distribution
A table or graph that shows the values of a variable and the number (count) of observations associated with each value
general rule
Although different sources give slightly different information about assessing the strength of a correlation coefficient, we can use the following as a general rule for interpreting the correlation coefficient:.8 to 1: very strong.6 to .8: strong.4 to .6: moderate.2 to .4: weak0 to .2: very weak to no relationship
independent variable
The variable that is studied to see if it causes a change in a dependent variable.
interval
The level of measurement that addresses differences, or intervals, between entities.
interval estimates
A range of values that is likely to contain the population parameter.
levels of confidence
The probability that the population parameter is contained within a specified range of values. Usually, the level of confidence is 0.95 or 95%.
levels of measurement
Also called scale of measurement, describes the amount and type of information (nominal, ordinal, interval, and ratio) that is conveyed by the numbers or words assigned to real-world objects during the measurement process.
levenes test
Tests the null hypothesis that the two populations show equal variance.
margin of error
The amount of estimated error in the point estimate of a population parameter determined by the level of confidence and the sampling distribution for the sample statistic. In estimating the population means, the margin of error equals a critical value for statistic times the standard error of the mean, e.g., Z?2*?n.
mean
The average of the scores for a variable.
median
An appropriate measure of central tendency when a measurement is at the ordinal, interval, or ratio level.
mode
The most frequently occurring value in the data set.
n
n = sample size
n1
n1 = the number of participants in sample 1
n2
n2 = the number of participants in sample 2
negative skew
This refers to the tail of the distribution appearing longer on the left-hand side of the distribution.
nominal
The lowest level of measurement, which addresses namingidentifying or categorizing objects using a name.
one-tailed
The alternative hypothesis is directional and states that one mean is greater than the other.
ordinal
The level of measurement above nominal that addresses ordering real-world entities.
outliers
Observation points that are distant from other observations.
p <.01 This indicates that the p-value (.000) is less than .01 and that the correlation test is statistically significant. p-value The probability of obtaining a result equal to or "more extreme" than what was actually observed, when the null hypothesis is true. pictogram A graphic character used in picture writing. point estimate An estimate of the unknown parameter of interest using a single value. population The set of all possible elements (entities and observations) to which the researcher wishes to generalize. population distribution for a variable, the distribution of all values for all elements of the population. positive skew This refers to the tail of the distribution appearing longer on the right side of the distribution. qualitative A variable based on nominal measurement. quantitative A variable with an ordinal, interval or ratio level of measurement. r r is the symbol indicating a Pearsons correlation coefficient r-squared The proportion of variability in the dependent variable that is accounted for by your model. random assignment Random assignment is placing experimental units in treatment conditions or control conditions by use of a random process. random sampling The selection of experimental units so that each element in the population has the same chance of being selected for the sample. random variable A variable whose value is determined by a random process such as being selected in a survey or being observed in an experiment. ratio The level of measurement that addresses proportion, or ratios between entities. ratio level The level of measurement that addresses proportion, or ratios, between entities. relative frequency distribution A table or graph that shows the values of a variable and the proportion of observations associated with each value using decimal fractions or percentages. research design The overall plan for how a researcher will collect data. sample A subset of all possible observations. sampling distribution The distribution of a sample statistic. sampling distribution of the sample mean The distribution of values for the sample mean for all possible random samples of size n. sampling error The absolute value of a statistic minus the parameter being estimated. simple random sampling Each unit in the population has an equal chance of being selected into the sample. statistical analyses The use of probabilistic models to analyze data. statistical inferences the process of using sample information to make statements about population parameters. statistical power The probability of rejecting a null hypothesis if the null is false (i.e., the alternative is true). statistically significant Statistical significance means a null hypothesis has been rejected. t-test for two independent groups A statistical test used to examine whether two independent groups have different means on a dependent variable. This test is also sometimes referred to as an independent samples t-test. two-tailed The alternative hypothesis states simply that there is a difference between the means but does not specify the direction of the difference. type i error Rejecting the null hypothesis if the null is actually true. type ii error Incorrectly retaining a false null hypothesis (a "false negative"). unit of analysis The real-world entity that is observed and for which data are recorded and used in statistical analysis. value A single observation defined for a variable. variable The mathematical representation of the real-world entity being measured. variance Variance is a measure of variability in a set of observations based on the approximate average of squared deviations from the mean. visual displays of data Help researchers communicate the distribution and other key information (the story they are telling with their data) both effectively and efficiently. µ1 mean for population 1 µ2 mean for population 2 ? ? is the symbol researchers use when they report a standardized regression coefficient. ? not primed This indicates the population means for the not primed condition. ? not primed - ? primed >0
The alternative hypothesis specifies that the not primed condition will score higher than the primed condition.
? primed
This indicates the population means for the primed condition.
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SkillBuilder1IndependentandDependentVariables.docx
Home>Business & Finance homework help>Amanda Smith
Learning Objective:
Distinguish between independent and dependent variables
Words in orange represent glossary terms. You can locate the Glossary in Appendix 1.
Variables and Values
The ultimate goal of science is to identify and explain cause-and-effect relationships among events in the real world. For example, a researcher may want to understand how a person can grow thicker hair. This researcher may think that using high-quality shampoo, specifically Ultra Shampoo, will result in thicker hair. How should the researcher structure questions about whether this specific shampoo brand promotes thick and luxurious hair?
A quantitative researchers approach to this problem begins by using variables. A variable is a mathematical representation of the real-world entity being measured. For example, the researcher could decide that use or non-use of Ultra Shampoo is one variable. A measure of hair quality, as judged by a professional hairstylist, could be a second variable.
Variables are sometimes called attributes, traits, or constructs and can actually take on two or more values. The value of a variable is defined as a single observation for the variable. Going back to the example, if a person uses Ultra Shampoo, the researcher could code Yes as a value for the use of the Ultra Shampoo variable and “No” for its non-use. Similarly, a 10, corresponding to perfect hair, could be a value for a single person on the hair quality variable.
The image below shows how variables and values appear in data sets. Note that a persons name is used as a variable so that the name will identify the values for the study participant on the other two variables.
Cause and Effect Relationships
Again, the ultimate goal of science is to identify and explain cause and effect relationships among events in the real world. Questions about cause-and-effect are everywhere. For example: Does smoking cause cancer? Does daily exercise minimize anxiety? Does transformational leadership result in job satisfaction? Essential to determining cause-and-effect relationships is recognizing that some variables are independent and some are dependent.
· bullet
The independent variable is defined as the variable that is studied to see if it causes a change in the dependent variable. Put another way, the experimental manipulations (such as control groups) a researcher uses are reflected in the independent variable.
· bullet
The dependent variable is defined as a measure of the outcome: that is, the dependent variable allows the researcher to determine whether the independent variable has an effect.
For example, in the hypothetical study of how a brand of shampoo affects hair quality, the researcher could randomly assign some people to use Ultra Shampoo and others to use a competing brand of shampoo. In this situation, the type of shampoo would be the independent variable and hair quality would be the dependent variable.
Topic 4 of 4
Term
Meaning
+?
Positive infinity.
-.564
Observed value of the test statistic.
-?
Negative infinity.
.004
p-value
.576
p-value
2-tailed
The alternative hypothesis states simply that there is a difference between the means but does not specify the direction of the difference.
61
61 is the degrees of freedom (df) calculated by n-2 (63-2)
alpha
The probability of a type I error.
box-plot
A graph that displays key elements of distribution.
categorical variables
Variables that have a limited number of possible values; participants in the study get placed into one of a small number of categories for the variable.
central limit theorem
regardless of the distribution of the population, if the sample size is relatively large (a rule of thumb is n > 30), the sampling distribution of sample means is close to normal.
cohens d
A measure of effect size.
confidence intervals
A range of values used to specify the likelihood that the population parameter is contained within a specified range.
continuous variable
A continuous variable is one based on an interval or ratio level of measurement. Between any two values for the variable, there is another possible value.
continuous variables
A continuous variable is one based on an interval or ratio level of measurement. Between any two values for the variable, there is another possible value.
control group
The collection of participants in the condition of an experiment who do not receive the treatment. A group receiving an actual treatment can then be compared to the control group.
dependent variable
A measure of the outcome that allows us to determine whether the independent variable has an effect.
discrete
A variable based on an ordinal, interval, or ratio levels of measurement and has a countable, not infinite, set of possible values.
distribution of a population
The distribution of all values for all elements of the population.
distribution of a sample
The distribution of actual observations based on the data that you collect.
distribution of the sample
Sample distribution (also called distribution of the sample) for a variable, the distribution of values for the elements of the population that are actually observed. (note that Sample distribution is different from Sampling distribution).
element
an entity in the population that may be selected for the sample and then observed.
factor
The alternative hypothesis stated simply that there was a difference between the means, and does specify the direction of the difference.
frequency distribution
A table or graph that shows the values of a variable and the number (count) of observations associated with each value
general rule
Although different sources give slightly different information about assessing the strength of a correlation coefficient, we can use the following as a general rule for interpreting the correlation coefficient:.8 to 1: very strong.6 to .8: strong.4 to .6: moderate.2 to .4: weak0 to .2: very weak to no relationship
independent variable
The variable that is studied to see if it causes a change in a dependent variable.
interval
The level of measurement that addresses differences, or intervals, between entities.
interval estimates
A range of values that is likely to contain the population parameter.
levels of confidence
The probability that the population parameter is contained within a specified range of values. Usually, the level of confidence is 0.95 or 95%.
levels of measurement
Also called scale of measurement, describes the amount and type of information (nominal, ordinal, interval, and ratio) that is conveyed by the numbers or words assigned to real-world objects during the measurement process.
levenes test
Tests the null hypothesis that the two populations show equal variance.
margin of error
The amount of estimated error in the point estimate of a population parameter determined by the level of confidence and the sampling distribution for the sample statistic. In estimating the population means, the margin of error equals a critical value for statistic times the standard error of the mean, e.g., Z?2*?n.
mean
The average of the scores for a variable.
median
An appropriate measure of central tendency when a measurement is at the ordinal, interval, or ratio level.
mode
The most frequently occurring value in the data set.
n
n = sample size
n1
n1 = the number of participants in sample 1
n2
n2 = the number of participants in sample 2
negative skew
This refers to the tail of the distribution appearing longer on the left-hand side of the distribution.
nominal
The lowest level of measurement, which addresses namingidentifying or categorizing objects using a name.
one-tailed
The alternative hypothesis is directional and states that one mean is greater than the other.
ordinal
The level of measurement above nominal that addresses ordering real-world entities.
outliers
Observation points that are distant from other observations.
p <.01 This indicates that the p-value (.000) is less than .01 and that the correlation test is statistically significant. p-value The probability of obtaining a result equal to or "more extreme" than what was actually observed, when the null hypothesis is true. pictogram A graphic character used in picture writing. point estimate An estimate of the unknown parameter of interest using a single value. population The set of all possible elements (entities and observations) to which the researcher wishes to generalize. population distribution for a variable, the distribution of all values for all elements of the population. positive skew This refers to the tail of the distribution appearing longer on the right side of the distribution. qualitative A variable based on nominal measurement. quantitative A variable with an ordinal, interval or ratio level of measurement. r r is the symbol indicating a Pearsons correlation coefficient r-squared The proportion of variability in the dependent variable that is accounted for by your model. random assignment Random assignment is placing experimental units in treatment conditions or control conditions by use of a random process. random sampling The selection of experimental units so that each element in the population has the same chance of being selected for the sample. random variable A variable whose value is determined by a random process such as being selected in a survey or being observed in an experiment. ratio The level of measurement that addresses proportion, or ratios between entities. ratio level The level of measurement that addresses proportion, or ratios, between entities. relative frequency distribution A table or graph that shows the values of a variable and the proportion of observations associated with each value using decimal fractions or percentages. research design The overall plan for how a researcher will collect data. sample A subset of all possible observations. sampling distribution The distribution of a sample statistic. sampling distribution of the sample mean The distribution of values for the sample mean for all possible random samples of size n. sampling error The absolute value of a statistic minus the parameter being estimated. simple random sampling Each unit in the population has an equal chance of being selected into the sample. statistical analyses The use of probabilistic models to analyze data. statistical inferences the process of using sample information to make statements about population parameters. statistical power The probability of rejecting a null hypothesis if the null is false (i.e., the alternative is true). statistically significant Statistical significance means a null hypothesis has been rejected. t-test for two independent groups A statistical test used to examine whether two independent groups have different means on a dependent variable. This test is also sometimes referred to as an independent samples t-test. two-tailed The alternative hypothesis states simply that there is a difference between the means but does not specify the direction of the difference. type i error Rejecting the null hypothesis if the null is actually true. type ii error Incorrectly retaining a false null hypothesis (a "false negative"). unit of analysis The real-world entity that is observed and for which data are recorded and used in statistical analysis. value A single observation defined for a variable. variable The mathematical representation of the real-world entity being measured. variance Variance is a measure of variability in a set of observations based on the approximate average of squared deviations from the mean. visual displays of data Help researchers communicate the distribution and other key information (the story they are telling with their data) both effectively and efficiently. µ1 mean for population 1 µ2 mean for population 2 ? ? is the symbol researchers use when they report a standardized regression coefficient. ? not primed This indicates the population means for the not primed condition. ? not primed - ? primed >0
The alternative hypothesis specifies that the not primed condition will score higher than the primed condition.
? primed
This indicates the population means for the primed condition.
Applied Sciences
Architecture and Design
Biology
Business & Finance
Chemistry
Computer Science
Geography
Geology
Education
Engineering
English
Environmental science
Spanish
Government
History
Human Resource Management
Information Systems
Law
Literature
Mathematics
Nursing
Physics
Political Science
Psychology
Reading
Science
Social Science
Home
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Archive
Tags
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