
Displaying Quantitative Data
Students construct and interpret graphical displays of quantitative data, including dot plots, stem plots, and histograms. They learn to describe the overall pattern of a distribution and identify striking departures.
About This Topic
Students construct and interpret graphical displays of quantitative data, including dot plots, stem plots, and histograms. They learn to describe the overall pattern of a distribution and identify striking departures.
Key Questions
- Which graphical display is most appropriate for a given set of quantitative data?
- How do we describe the shape, center, and spread of a distribution?
- What constitutes an outlier in a dataset?
Active Learning Ideas
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Planning templates for Statistics
5E Model
The 5E Model structures lessons through five phases (Engage, Explore, Explain, Elaborate, and Evaluate), guiding students from curiosity to deep understanding through inquiry-based learning.
Unit PlannerMath Unit
Plan a multi-week math unit with conceptual coherence: from building number sense and procedural fluency to applying skills in context and developing mathematical reasoning across a connected sequence of lessons.
RubricMath Rubric
Build a math rubric that assesses problem-solving, mathematical reasoning, and communication alongside procedural accuracy, giving students feedback on how they think, not just whether they got the right answer.
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