What is a statement of predicted relationships between two or more variables?

The two types of alternative hypotheses are directional hypotheses and non-directional Hypotheses. A non-directional alternative hypothesis states that the null hypothesis is wrong. A non-directional alternative hypothesis does not predict whether the parameter of interest is larger or smaller than the reference value specified in the null hypothesis. Whereas a directional alternative hypothesis states that the null hypothesis is wrong, and also specifies whether the true value of the parameter is greater than or less than the reference value specified in the null hypothesis. The advantage of using a directional hypothesis is increased power to detect the specific effect you are interested in. The disadvantage is that there is no power to detect an effect in the opposite direction.

Derivation of Hypothesis
Inductive:
The researcher notes the observations of behavior, thinks about the problem, turns to literature for clues, makes additional observations, derives probable relationships, and hypothesizes an explanation. A hypothesis is then tested. It may be limited in scope and can lead to unconnected findings, which could explain little about the research.

Deductive:
The researcher begins by selecting a theory and derives a hypothesis leading to deductions derived through symbolic logic or mathematics. These deductions are then presented in the form of statements accompanied by an argument or a rationale for the particular proposition.

Hypothesis testing
The following 5 steps are followed when testing hypotheses.

1. Specify H0 and HA – the null and alternative hypotheses
(a)      H0:    E(X) = 10       (b)   H0:    E(X) = 10       (c)      H0:    E(X) = 10
HA:    E(X) <> 10             HA:    E(X) < 10                  HA:    E(X) > 10

Note that, in example (a), the alternative values for E(X) can be either above or below the value specified in H0. Hence, a two-tailed test is called for – that is, values for HA lie in both the upper and lower halves of the normal distribution. In example (b), the alternative values are below those specified in H0, while in example (c) the alternative values are above those specified in H0. Hence, for (b) and (c), a one-tailed test is called for.

2. Determine the appropriate test statistic
A statistic to test the hypothesis. A ‘test statistic’ should follow a probability distribution (Z, t, χ2 or F) or there should be a threshold value based on which H0 is ejected or accepted.

3. Determine the critical region
The region in which if the ‘test statistic’ falls, H0 is rejected. The critical region should be in the tail area. P-value- the tail probability; usually, the probability that the ‘test statistic’ is greater (less) than its calculated value. If the p-value is less than a given ‘level of significance’ (say 0.05), H0 is rejected.

  • When p value > .10 → the observed difference is “not significant”
  • When p value ≤ .10 → the observed difference is “marginally significant”
  • When p value ≤ .05 → the observed difference is “significant”
  • When p value ≤ .01 → the observed difference is “highly significant”

What is a statement of predicted relationships between two or more variables?

4. Compute the value of the test statistic
Say, a value of z calculated on the basis of a sample result is called a computed z-value, and is denoted by the symbols zc or simply z.

5. Make a decision
If the calculated value of the test statistic falls in the critical region, then H0is rejected. When the calculated value lies in the acceptance region, H0is not rejected.

Decision problem
How do we choose between H0and HA? The standard procedure is to assume H0is true – just as we presume innocent until proven guilty. Using probability theory, we try to determine whether there is sufficient evidence to declare H0false. We reject only when the chance is small that H0is true. Since our decisions are based on probability rather than certainty, we can make errors.

Type I Error:
A type I error occurs when the null hypothesis (H0) is wrongly rejected. For example, A type I error would occur if we concluded that the two drugs produced different effects when in fact there was no difference between them.

Type II Error:
A type II error occurs when the null hypothesis H0, is not rejected when it is in fact false. For example, A type II error would occur if it were concluded that the two drugs produced the same effect, that is, there is no difference between the two drugs on average, when in fact they produced different ones.

In conclusion, we need the null hypothesis to determine if there is a difference between the groups being tested or not. Without it, we would be swamped with possibilities making it almost impossible to test.

Is a statement of predicted relationship between two or more variables in research study an educated or calculated guess by the researcher?

A hypothesis is an educated guess or prediction about the relationship between two variables. It must be a testable statement; something that you can support or falsify with observable evidence. The objective of a hypothesis is for an idea to be tested, not proven.

Is a statement of a predicted relationship?

A research hypothesis (or scientific hypothesis) is a statement about an expected relationship between variables, or explanation of an occurrence, that is clear, specific and testable.

What is the tentative statement of relationship between two or more variables in research?

A hypothesis is a conjectural statement of the relation between two or more variables (Kerlinger, 1956). A hypothesis is a formal statement that presents the expected relationship between an independent and dependent variable.

Which hypothesis is a statement that predicts a relationship between variables?

The alternative hypothesis states that there is a relationship between the two variables being studied (one variable has an effect on the other). An experimental hypothesis predicts what change(s) will take place in the dependent variable when the independent variable is manipulated.