Experiments are a fundamental part of the scientific method, and can be used to test hypotheses and gain insight into the causes of natural phenomena. A simple experiment is a research method used to determine if changes in one variable lead to changes in another variable. In other words, it is used to establish cause-and-effect relationships.
One example of a simple experiment is a study looking at the effectiveness of a new medication. In this experiment, participants would be randomly assigned to one of two groups: a control group and an experimental group. The control group would receive a placebo, while the experimental group would receive the new medication. The researchers would then compare the outcomes of the two groups to see if the medication had an effect.
Another example of a simple experiment is a study looking at the effect of fertilizer on plant growth. In this experiment, plants would be randomly assigned to one of two groups: a control group and an experimental group. The control group would receive no fertilizer, while the experimental group would receive fertilizer. The researchers would then compare the growth of the plants in the two groups to see if the fertilizer had an effect.
Simple experiments are often used in scientific research because they are relatively easy to conduct and they can provide valuable information about the relationship between two variables. However, it is important to note that simple experiments can only provide evidence of a cause-and-effect relationship, not proof.
Components of a Simple Experiment:
Determining the Results of a Simple Experiment:
Once the data from the simple experiment is gathered, researchers compare the results of the experimental group to those of the control group to determine if the treatment had an effect. Due to the omnipresent possibility of errors, it's not possible to be 100 percent sure of the relationship between two variables. There can always be be unknown variables influencing the outcome of the experiment.
Despite this challenge, there are ways to determine if there most likely is a meaningful relationship between the variables. To do this, scientists use inferential statistics—a branch of science that deals with drawing inferences about a population based on measurements taken from a representative sample of that population.
The key to determining if a treatment had an effect is to measure the statistical significance. Statistical significance shows that the relationship between the variables is probably not due to mere chance and that a real relationship most likely exists between the two variables.
Statistical significance is often represented like this: p < 0.05 A p-value of less than .05 indicates that the results likely are due to chance and that the probability of obtaining these results would be less than 5%.
There are a number of different means of measuring statistical significance. The one used will depend on the type of research design that was used for the experiment.