Chapter 7: Data Analysis and Presentation - Full Detailed Overview
Learning Objectives:
Master different analytics types: descriptive, diagnostic, predictive, and prescriptive.
Determine when and how to use different analytics effectively in business.
Choose and apply the correct visualization techniques for various data analyses.
Adhere to design principles for simplification, emphasis, and ethical data presentation.
Data Analysis Techniques:
Descriptive Analytics: Involves summarizing past data to understand what has happened. Techniques include:
Exploratory Data Analysis: Understanding data structures, checking assumptions, identifying outliers, and exploring correlations without formal hypothesis testing.
Use Cases: Accountants might analyze year-over-year financial changes or compare metrics against industry averages.
Diagnostic Analytics: Tries to explain why events happened using data analysis:
Informal Analysis: Builds on descriptive analytics to propose reasons for observed patterns, such as changes in product sales mix affecting gross margins.
Formal Analysis: Uses hypothesis testing to statistically validate reasons for phenomena.
Type I Error (False Positive): Incorrectly rejecting a true null hypothesis (e.g., concluding a treatment has an effect when it does not).
Type II Error (False Negative): Failing to reject a false null hypothesis (e.g., concluding a treatment has no effect when it actually does).
Predictive Analytics: Predicts future outcomes based on historical data:
Modeling Steps: Include selecting target outcomes, preparing data, and using statistical models to forecast future events.
Model Validation: Ensuring the model accurately predicts new data, avoiding overfitting.
Prescriptive Analytics: Suggests actions based on predictions:
Application: Uses predictive models and incorporates AI to suggest decisions that optimize outcomes, continuously updating recommendations based on new data.
Data Presentation Techniques:
Visualizing Data Benefits: Visual data is processed faster and more intuitively than text, especially because most people are visual learners.
Choosing the Right Visualization:
Comparison Tools: Use bar charts for categorical comparisons and bullet charts to highlight benchmarks.
Correlation Tools: Employ scatter plots and heatmaps to illustrate relationships and intensities.
Distribution Tools: Utilize histograms for frequency distribution and boxplots to summarize data spread and central tendency.
Trend Tools: Line charts depict changes over time, while area charts help visualize volume changes.
Part-to-Whole Tools: Pie charts show proportional data, and treemaps provide hierarchical data breakdowns.
Design Principles for Visualizations:
Simplification: Reducing complexity to make visualizations easy to understand, considering the amount of data, spatial arrangement, and orientation.
Emphasis: Highlighting critical data through visual cues like color, weight, and placement.
Ethical Presentation: Avoiding deceptive practices by properly representing data proportionally and chronologically.