
Systematic Approach: Data analysis follows a structured and systematic approach to handle data. It involves a series of steps, from data collection to reporting results, to ensure consistency and reliability in the analysis.
Objective and Evidence-Based: Data analysis is driven by objectivity and evidence. It relies on factual data to support conclusions and avoid bias or subjectivity.
Quantitative and Qualitative: Data analysis can involve both quantitative (numeric) and qualitative (non-numeric) data. Quantitative analysis focuses on numbers, while qualitative analysis may involve text, images, or other non-numeric information.
Pattern Recognition: Data analysis aims to identify patterns, trends, and relationships within the data. This process often includes using statistical methods to uncover hidden insights.
Hypothesis Testing: Data analysis often involves formulating hypotheses or research questions and testing them using data. This is a fundamental part of the scientific method.
Data Cleaning and Preparation: Before analysis, data often needs to be cleaned and prepared to ensure accuracy. This includes handling missing values, removing outliers, and standardizing data formats.
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