This article introduces foundational techniques of data analysis for non-profit organizations, focusing on descriptive statistics, exploratory data analysis (EDA), correlation versus causation, and data visualization. Descriptive measures—mean, median, mode, standard deviation, and range—help summarize central tendencies and variability. EDA methods such as histograms, scatter plots, box plots, line graphs, and heatmaps uncover trends, patterns, and anomalies. The article emphasizes the importance of distinguishing correlation from causation to avoid misinterpretation and ensure that strategic decisions are based on sound evidence. Effective visualization practices are explored as tools for communicating complex findings in accessible and actionable ways. Drawing on examples from fundraising, volunteer management, and program evaluation, the article highlights how non-profits can strengthen transparency, accountability, and impact through basic analytical capacity.
Anna Neya Kazanskaia (Wed,) studied this question.