Statistics in Research: Introduction Measurement for NTA (UGC)NET 2019
Download PDF of This Page (Size: 140K) ↧
Watch Video Lecture on YouTube: YouTube TestPrep Channel Statistics in Research: Introduction Measurement
Statistics in Research: Introduction Measurement
Statistics

The word statistics comes from the Italian word statista, a person dealing with affairs of state (from stato, “state”). It was originally called “state arithmetic,” involving the tabulation of information about nations, especially for the purpose of taxation and planning the feasibility of wars

statistics is a branch of mathematics that focuses on the organization, analysis, and interpretation of a group of numbers

Playing with numbers

SPSS

descriptive statistics procedures for summarizing a group of scores or otherwise making them more understandable.

inferential statistics procedures for drawing conclusions based on the scores collected in a research study but going beyond them
Variable, Value and Score

How stressed have you been in the last 2½ weeks, on a scale of 0 to 10, with 0 being not at all stressed and 10 being as stressed as possible?

level of stress is a variable, which can have values from 0 to 10, and the value of any particular person’s answer is the person’s score

variable characteristic that can have different values.

values possible number or category that a score can have.

score particular person’s value on a variable.
Level of Measurement

Numeric variables are also called quantitative variables

An equalinterval variable is a variable in which the numbers stand for approximately equal amounts of what is being measured  age

ratio scale. An equalinterval variable is measured on a ratio scale if it has an absolute zero point. An absolute zero point means that the value of zero on the variable indicates a complete absence of the variable – two times siblings

rankorder variable, is a variable in which the numbers stand only for relative ranking. (rate something)

nominal variable are values that are categories (that is, they are names rather than numbers). Also called categorical variable – gender, religion
Discrete and Continuous Variable

A discrete variable is one that has specific values and cannot have values between the specific values. Nominal variables, such as gender, religious affiliation, and college major can also be considered to be discrete variables

With a continuous variable, there are in theory an infinite number of values between any two values. Age, height, weight, and time are examples of continuous variables
Frequency Table

30 Students and Stress rating of all

The 30 students’ scores (their ratings on the scale) are: 8, 7, 4, 10, 8, 6, 8, 9, 9, 7, 3, 7, 6, 5, 0, 9, 10, 7, 7, 3, 6, 7, 5, 2, 1, 6, 7, 10, 8, 8.

frequency table because it shows how frequently (how many times) each score was used (mark from lowest to highest values, mark scores, from lowest to highest)  makes it easy to see the pattern in a large group of scores

A frequency table that uses intervals is called a grouped frequency table. – information more directly understandable (inclusive series and exclusive series)

Histogram: barlike graph of a frequency distribution in which the values are plotted along the horizontal axis and the height of each bar is the frequency of that value; the bars are usually placed next to each other without spaces, giving the appearance of a city skyline
Unimodal, Bimodal and Multimodal

In the stress ratings study, the most frequent value is 7, giving a graph only one very high area. This is a unimodal distribution. If a distribution has two fairly equal high points, it is a bimodal distribution. Any distribution with two or more high points is called a multimodal distribution.

a distribution with values of all about the same frequency is a rectangular distribution
Symmetrical and Skewed Distribution, Kurtosis
symmetrical distribution (if you fold the graph of a symmetrical distribution in half, the two halves look the same). A distribution that clearly is not symmetrical is called a skewed distribution

The side with the fewer scores (the side that looks like a tail) is considered the direction of the skew

A distribution that is skewed to the right is also called positively skewed. A distribution skewed to the left is also called negatively skewed

skew comes from the French queue, which means line or tail. Thus, the direction of the skew is the side that has the long line, or tail.

floor effect: situation in which many scores pile up at the low end of a distribution (creating skewness to the right) because it is not possible to have any lower score. (a family cannot have fewer than zero children)

ceiling effect situation in which many scores pile up at the high end of a distribution (creating skewness to the left) because it is not possible to have a higher score. (distribution of adults’ scores on a multiplication table test)

bellshaped standard or normal curve

Kurtosis is how much the shape of a distribution differs from a normal curve in terms of whether its curve in the middle is more peaked or flat than the normal curve

Distributions with a flatter curve usually have fewer scores in the tails of the distribution than the normal curve
Misleading Graphs

Not using equal intervals

Exaggeration of Proportions
Manishika