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The results of many studies can be quickly composed of incomprehensible numbers and metrics. Therefore, there is a need for a simplification method that even experts use in the field: data visualization. When data is visualized, you make this data more readily understandable by people who are not experts in their fields.
As a data visualization technique, you can use correspondence analysis. It allows you to better interpret the data by showing you categorical relationships. You can start by reading its definition to understand the correspondence analysis.
Correspondance analysis is a statistical data visualization method used to show patterns and explore relationships between categorical variables in the data.
It combines two or more than two data points on a two-dimensional axis and forms a graph. It allows the emergence of the infrastructure by using it in exploratory data analysis research. It is most commonly used in the fields of ecology, sociology, health, and education, and especially in market research and finance.
Correspondence analysis (CA) is generally accepted as a part of the multivariate analysis and mainly provides qualitative data. There are several variants of it. The most known ones are detrended correspondence analysis (DCA) and canonical correspondence analysis (CCA). The first one is used mainly by ecologists when there is sparse data.
The latter is used to reveal possible reasons for similarities between variables. There is also multiple correspondence analysis (MCA) or, interchangeably, multivariate correspondence analysis. This is actually the same type of analysis, except that it includes many categorical variables.
Here, we will explain step by step how correspondence analysis works and how data visualization is performed. First of all, you can create a contingency table by applying correspondence analysis to your dataset. You continue the analysis by calculating the eigenvalues from the contingency table. You then transfer the coordinates of the categories you examined to the two-dimensional plane.
The coordinate of rows and columns reveals the principal components. You can place categories in a scatterplot to better visualize them. All that remains is to examine the emerging clusters, patterns, and relationships. Simply put, close points mean related to each other, and distant points mean less related. Of course, you can do this with software tools and speed up the process. You can also add visual aids and annotations to important points by using additional tools.
Correspondance analysis is a simple analysis type that you can complete in a few steps. Although the example here will focus specifically on brand measurement, you can adapt it to different areas. Approximately four or five steps are sufficient for an analysis to take place; these steps are:
How to use the correspondence analysis for measuring brands
1. Collect the data: You first need data to measure the variables and similarities between brands and reveal their characteristic structure. If you ask what these data are, it should be product/service features, brand earnings, recognition, customer comments, etc.
2. Prepare a table: You can create a contingency table and sort the brands according to their features. According to the data you obtain, you place the pros and cons of each brand in the table.
3. Analyze and visualize: In this step, you analyze the contingency table you created by using analysis tools and programs. In this step, correspondence analysis moves the event to a two-dimensional plane. You can use techniques such as principal component analysis (PCA) to reduce dimensionality. Thus, you can now visualize the relationships between brands and features based on your initial data.
4. Draw conclusions and derive insights: Conclude your analysis by interpreting the results that the study reveals. Understand the nature of brands and decide what purposes these results can help you with.
For example, imagine that there is a phone brand that is developing a new smartphone model. They want to improve their products, take into account customer demands, and maintain a successful campaign. For this, they tried to use correspondence analysis. First of all, since they needed to collect data, they conducted a survey with customers and listed the models of different brands that were similar to their own models.
In the survey, they asked them to note the features of each model, such as price, battery life, camera, screen size, weight, etc. The results of this survey were then transferred to a contingency table. By analyzing this table, the relationship patterns with the features of the models were revealed. The phone brand is now in a position to decide which features of the model they have developed should come to the fore by making a skillful interpretation.
Correspondence analysis is a technique that allows you to make data visible and use it in many disciplines. Therefore, always keep in mind that it can be used for different purposes, but do not forget that it is generally preferred in the field of finance and marketing. Now, to list some common use cases:
Correspondence analysis use cases
Correspondence is a method that has both pros and cons with its analysis scope, usage, results, and return:
This part is prepared to get answers to your questions about correspondence analysis easily.
Correspondence Analysis Factor Analysis (CAFA) is a statistical method that combines correspondence analysis (CA) and factor analysis (FA). Since correspondence analysis examines categorical variables, you can also examine continuous variables thanks to factor analysis. This will especially be useful in contingency tables and complex datasets.
In statistics, the correspondence term is used to denote the relationship between categorical variables.
Correspondance analysis is frequently used in multivariate analysis because it is a multivariate statistical technique by nature. It is particularly useful for examining large contingency tables in multivariate analysis.
Chi-square is a statistical test method used to measure the data and its distributions. In order for this test to be applied, there should be a relationship between rows and columns so that the test proves it. On the other hand, correspondence analysis works as a data visualization technique. It does not apply any test, but it reduces the number of dimensions in the data and reveals the relationship of variables in the two-dimensional space.
As a result, correspondence analysis is a considerable technique that visually reflects the relationships between categories. Businesses and other research fields can gain important insights using it. In this article, the definition of correspondence analysis is given to you so that you can understand it perfectly.
Appropriate steps on how to use it were shared, and a correspondence analysis example situation was presented. Finally, it was concluded by listing the usage situations and its positive and negative aspects.
Atakan is a content writer at forms.app. He likes to research various fields like history, sociology, and psychology. He knows English and Korean. His expertise lies in data analysis, data types, and methods.