Chapter 13 psy 102
The odds of correctly rejecting the null hypothesis when it is false are always equal to:
(1 - beta ) also referred to as the 'power' of the statistical test
The odds that we will fail to reject the null hypothesis when that is the correct decision.
(1-alpha)
Steps to analyzing any set of data
1. We organize it 2. We summarize it 3. We apply a statistical test to interpret our results
significance level
A criterion for deciding whether to reject the null hypothesis or not.
Statistical inference
A statement made about a population and all its samples based on the samples observed
Non-directional hypothesis
A statement that predicts the difference between treatment groups without predicting the exact pattern of results
Alternative hypothesis (H,)
A statement that the data came from different populations; the research hypothesis, which cannot be tested directly
One Tail Test/ Directional Test
A statistical procedure used when a directional prediction has been made; the critical region of the distribution of the test statistic is measured in just one tail of the distribution
two-tailed test
A statistical procedure used when nondirectional prediction has been made the critical region of the distribution of the test statistic is divided over both tales of the distribution
There is no way to directly test the;
Alternative hypothesis (which states that the data came from different populations.)
Parametric test
Are preferred by researchers requiring interval and ratio scales. Because they are more powerful. Representing a relationship between treatment effects and variability.
nominal
By category Ex. Gender: male, female, other
the precise value of beta;
Cannot be measured.
Raw data
Data recorded as an experiment is run; the responses of individual subjects
Proving something means
Establishing the truth of it by presenting evidence and logical argument.
As the amount of variability in the distribution goes up, The critical regions:
Fall further from the center of the distribution.
Variability
Fluctuation in data can do be defined numerically as range, variance, or standard deviation. Variability is the amount of fluctuation observed in scores on a dependent variable.
Frequency distribution
Graphing a frequency distribution you should mark off all possible values of the dependent variable along the X or horizontal axis frequencies are marked off on the ordinance the Y or vertical axis.
3 ways Beta can be reduced by...
Increasing sample size, reducing the variability in our sample data (for instance by controlling extraneous variables or using a within subjects or matched groups design), & using more powerful statistical tests called 'parametric tests.'
Populations that have high variability on the dependent measure are more likely To have:
Large differences in distribution
Parametric tests
Make certain assumptions about the parameters of the population represented by our samples. Example, normally distributed data, comparable variability across groups, interval or ratio scale data.
statistical significance
Meeting the set criterion criterion for significance; The data do not support the no hypothesis confirming a difference between the groups that occurred as a result of the experiment
When we have a directional hypothesis, we make a:
One tailed test: the 5% critical region is located in just one tale of the distribution.
A nondirectional hypothesis is:
One that does not predict the exact pattern of results - the direction of the effect will we will produce through the experimental manipulation.
Critical Region
Portion of the tail(s) of the distribution of a test statistic extreme enough to satisfy the researchers criterion for rejecting the null hypothesis- for instance the most extreme 5% of a distribution where P < .05 is the chosen significance level
The simplest Measure of variability:
Range is the difference between the largest and smallest scores in a set of data.
Unnecessary sources of variation in an experiment will:
Reduce the chances of rejecting the no hypothesis, and increase the chances of a type error.
When the experiment is over, we would like to be able to____________ By showing that the effect produced by the independent variable led to real differences in the responses of the groups.
Reject the null hypothesis
Standard deviation
Square root of the variance; measures the average deviation of scores about the mean thus reflecting the amount of variability in the data
Directional hypothesis
Statement that predicts the exact pattern of results that will be observed; such as which treatment group will perform best
Inferential statistics
Statistics that can be used as indicators of what is going on in a population; also called a test statistic.
Test statistic
Statistics that can be used as indicators of what is going on in the population and can be used to evaluate results; also called inferential statistics
Measures of central tendency
Summary statistics that describe what is typical of a distribution of scores including mean median and mode
The probability of making a Type 1 error is represented by :
The Greek letter alpha
The probability of making a type 2 error is represented by;
The Greek letter beta
In a common sense way, variability is;
The amount of change your fluctuation we see in some thing.
The odds of finding significance are affected by two factors:
The amount of variability in the data and whether that we have a directional or non-directional hypothesis.
Mean
The arithmetical average computed by dividing the sum of the group scores by the total number of scores; a measure of central tendency
Variance
The average squared deviation of scores from there mean; a more precise picture a very abilities in the range
Range
The difference between the largest and smallest scores in a set of data; a rough indication of the amount of variability in the data
Mode
The most frequently occurring score in a distribution measure of central tendency
finding a statistically significant effect requires very large differences between the mean scores from different treatment groups in the experiment:
The population has high variability
Median
The score that divides the distribution in half so that half of the scores in the distribution fall above the median house below; a measure of central tendency
Critical regions are:
The shaded areas of the curves
An advantage of using a one tailed test:
The size of the critical region is larger and closer to the center of the distribution, making it easier for differences between means to be large enough to fall there.
Descriptive statistics
The standard procedures used to summarize and describe data quickly and clearly; summary statistics reported for an experiment including mean range and standard deviation
Significance level
The statistical criterion for deciding whether to reject the no hypothesis or not, typically p<.05
When using a directional hypothesis and a one tailed test:
Treatment effects do not need to be as dramatic, we can get the significant results more easily.
Making a_______ Error is generally considered to be less serious than making a_______ error.
Type 2 =less serious than , making a Type 1 error.
The independent variable has produced an effect, but we are unable to detect it ...describes:
Type 2 error
Whenever we have a nondirectional hypothesis:
Use a two-tailed test
The odds of making a type one error are equal to the
Value that we choose as the significance level for rejecting the null hypothesis
Experimental error
Variation in subjects scores produced by uncontrolled extraneous variables in the experimental procedure experiment or bias or other influences on subjects not related to effects of the independent variable
When we obtain a large value of a test statistic:
We are more likely to be able to reject the no hypothesis, the more likely that the independent variable produced to change in subjects responses
Testing the null hypothesis. Until we can determine otherwise;
We assume an independent variable has no effect.
Evaluate the data from a psychological experiment
We carry out a statistical test to determine whether the independent variable probably caused changes in the dependent variable from one treatment condition to another.
Larger differences between means of samples are required to reject the null hypothesis:
When there is more variability.
Null Hypothesis (H0)
a statement that the performance of treatment groups is so similar that the groups must belong to the same population; a way of saying that the experimental manipulation had no important effect
Summary data
descriptive statistics computed from the raw data of an experiment, including the measures of central tendency and variability
Type 2 error
failing to reject a false null hypothesis (false negative)
Type 1 error
rejecting the null hypothesis when it is true (false positive)
the most common interpretive strategies in statistical hypothesis testing are:
supported by null hypothesis significance testing, reporting P values, and including effect sizes and confidence intervals.