![]() ![]() It is a four-step process, which includes… The purpose of data validation is to find out, as far as possible, whether the data collection was done as per the pre-set standards and without any bias. It includes four steps: Step 1: Data Validation The first stage of analyzing data is data preparation, where the aim is to convert raw data into something meaningful and readable. Make sure you’re collecting high-quality data with our blog “4 Data Collection Techniques: Which One’s Right for You?”.Īnalyzing Quantitative Data Data Preparation Here are a few methods you can use to analyze quantitative and qualitative data. There are many different data analysis methods, depending on the type of research. After collecting this information, the brand will analyze that data to identify patterns - for example, it may discover that most young women would like to see more variety of jeans.ĭata analysis is how researchers go from a mass of data to meaningful insights. For example, if a clothing brand is trying to identify the latest trends among young women, the brand will first reach out to young women and ask them questions relevant to the research objective. Similarly, in research, once data is collected, the next step is to get insights from it. We look at the data to find meaning in it. ![]() What is the first thing that comes to mind when we see data? The first instinct is to find patterns, connections, and relationships. ![]()
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