The hypothesis that most people already think is true. Ex. Eating a good breakfast before a test will help you focus Notation  NULL HYPOTHESIS HoHo.

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The hypothesis that most people already think is true. Ex. Eating a good breakfast before a test will help you focus Notation  NULL HYPOTHESIS HoHo

The hypothesis that goes against the current held belief. Ex. Eating a big breakfast does not help you focus before a test. Notation  ALTERNATIVE HYPOTHESIS HaHa

The entire group you want information about. POPULATION

A characteristic is observed and data is collected. No outside factors are placed on the population. OBSERVATIONAL STUDY

A treatment is assigned to a group in order to study a specific characteristic. Data is then compared based on the results of the treatment. EXPERIMENTAL STUDY

In an experimental study, the treatment is what is changed or added to the population or sample. TREATMENT

In an experimental study, the variable of interest is what characteristic the surveyor wants to know about. NOTE- this is NOT the treatment VARIABLE OF INTEREST

In a study, this group has no treatment done on them. CONTROL GROUP

A treatment that has no ingredient to cause an effect, however, the subject(s) does not know this. Often times in medical studies, the placebo is a sugar pill. PLACEBO

This occurs when subjects on a placebo show change because they think they are on an actual treatment. PLACEBO EFFECT

Data that cannot be arranged numerically. For example: hair color, gender, ethnicity, religious affiliation, etc. CATEGORICAL DATA

Data that can be arranged numerically. For example: height, age, income, number of children, etc. QUANTITATIVE DATA

In a survey, this type of question requires the subject to choose an answer based on listed choices. CLOSED QUESTION

In a survey, this question has no answer choices and leaves the subject to answer freely. OPEN QUESTION

In a survey, a biased question is worded so that the subject would tend to answer in a certain way. BIASED QUESTION

When some members of a population are more likely to be selected than others. BIASED SAMPLING

A sample that does not reflect the makeup of the population (a biased sample). For example population: High School Sample: Only Freshmen NON-REPRESENTATIVE SAMPLING

Responders do not give accurate answers. For example: The subject might be embarrassed or trying to impress. RESPONSE BIAS

Refusal to answer a question. NON-RESPONSE BIAS

Similar to response bias. Subjects being observed act differently when they know they are being observed. OBSERVER EFFECT

When the wording of questions makes a responder lean to a certain response. This could also occur in a closed question with not enough options. WORDING OF QUESTIONS

When data is spread over a wide range of values. HIGH VARIABILITY

When data is not spread out (condensed). LOW VARIABILITY

When the trial outcome is NOT close to the population mean. SAMPLE RESULTS  Population mean: 32 HIGH STATISTICAL BIAS

When the trial outcome is close to the population mean. SAMPLE RESULTS  Population mean: 24.5 LOW STATISTICAL BIAS

Not enough members of the population are being studied. POPULATION: Wheeler High School Sample: 10 students UNDERCOVERAGE

A study in which the ENTIRE population is sampled. CENSUS

How a sample is chosen in a statistical study. If the sample is not picked correctly, all of the data collected could be inaccurate. SAMPLING METHOD

Every subject receives a number, and numbers are randomly selected either through a random drawing or random number generator. SIMPLE RANDOM SAMPLE

Population is divided into distinct groups. Then a simple random sample is done for each group. Ex. Split into boys + girls- then draw numbers out of hat. STRATIFIED RANDOM SAMPLE

A rule is used to select members of a population. For example: Every third person who comes through the door will be selected. SYSTEMATIC SAMPLE

Clusters are formed which are small scale representations of the population. The entire cluster is studied. Example: D lunch (has members of all parts of the school) CLUSTER SAMPLE

Only members of the population who are easily accessible are sampled. This generally results in poor samples. CONVENIENCE SAMPLE

The average of EVERY member of the population. This is generally impossible, depending on what your population is. Notation  POPULATION MEAN

The mean of a sample of the population. Notation  SAMPLE MEAN

When you conduct a study that only looks at one variable, you are working with univariate data. UNIVARIATE DATA

When you conduct a study that looks at the relationship between two variables, you are working with bivariate data. BIVARIATE DATA

A diagram consisting of rectangles whose height represents the frequency of a variable, and width represents an interval. There is no spacing between the rectangles. HISTOGRAM

A diagram in which the numerical values of variables are represented by the height of rectangles with equal width. There is spacing between the rectangles. BAR GRAPH

A graphic way to display the median, quartiles, and extremes of a data set on a number line to show the distribution of the data. Sometimes called a boxplot. BOX & WHISKER PLOT

A type of graph in which a circle is divided into sectors that each represent a proportion of the whole. PIE CHART

The representation of data by using dots over a number line. The number of dots over each increment on the number lines represents the frequency of the data. (the dots can be Xs as well) DOT PLOT

A table displaying how often each value in a set of data occurs. FREQUENCY TABLE

A distribution with most of the observations on the left. (It has a right tail) SKEWED RIGHT

A distribution with most of the observations on the right. (It has a left tail) SKEWED LEFT

A data value that is far away from the rest of the distribution on either side. OUTLIER

In a histogram, this refers to the size of the intervals used at the bottom of the chart. BIN SIZE Bin size is in 4s