The correlation computed between pairs of variables is known as:
(A) Q type factor analysis
(B) R type factor analysis
(C) P type factor analysis
(D) S type factor analysis
Correct Ans: (A)
Explanation:
Q type factor analysis is a statistical method used to compute correlations between pairs of variables, especially in subjective and perception-based research. Unlike R type factor analysis, which focuses on individuals or cases, Q type examines variables or traits across those individuals.
In mass communication and social science research, Q type analysis helps identify how different variables relate to one another across a sample. For example, researchers might investigate how media usage patterns (like reading, watching, or browsing) correlate with psychological traits such as anxiety, motivation, or trust.
This method is particularly useful when trying to map conceptual or attitudinal frameworks. It provides insights into how variables behave in relation to each other, offering a structure for deeper interpretation. By finding clusters or factors among variables, researchers can develop clearer, more meaningful theoretical models.
Compared to P type analysis, which looks at one individual across many traits over time, Q type handles many variables across a group. S type, although less common, often involves interrelations among stimuli.
Moreover, Q type analysis is widely used in media studies, psychology, and even political science. It supports the development of typologies, content themes, and behavioral patterns. For instance, when analyzing media frames or user responses to various media channels, this method clarifies which variables tend to move together.
Thus, Q type factor analysis plays a crucial role in identifying structured relationships among variables. It strengthens both qualitative and quantitative approaches by offering a bridge between raw data and interpretive insights in communication research.