When using inferential statistics, we commonly use two paradigms to understand our results: null hypothesis significance testing (NHST, aka statistical significance) and effect sizes (aka the quantitative difference between groups). NHST determines whether there is a difference between groups, and effect sizes describe the difference between groups. While there is a movement away from NHST towards effect sizes, the current best practice typically includes both. This post explains how to interpret and calculate effect sizes.
Continue readingMonthly Archives: November 2022
Research Design: Inferential Statistics for Causal Questions
The last post discussed inferential statistics for relational questions. This post will discuss inferential statistics for causal questions. Most commonly when asking a causal research question, an experimental design is appropriate. In this case, the purpose of inferential statistics is to determine whether the difference between groups is greater than what would be expected due to chance. For example, if you tested a new teaching method and found that students who received this new teaching method scored 5 points higher on a test than students who didn’t, it would matter if the standard deviation were 2 points or 20 points. If the standard deviation were 2 points, then the mean of the intervention group is 2.5 standard deviations higher than the other group, and the average student in the intervention group scored better than 98% of the other group. However, if the standard deviation were 20 points, then the difference in means likely isn’t greater than what would be expected due to chance.
Continue readingResearch Design: Inferential Statistics for Relational Questions
The purpose of inferential statistics is to determine if the features of a sample (e.g., participants in a study) are representative of a population (i.e., all people belonging to a group). For example, the question “Do first-generation college students study more than other students?” must be answered with inferential statistics unless you can collect data from all college students. Thus, inferential statistics allow you to make some generalizations about your findings beyond your sample, and they are used to answer relational and causal research questions. The posts on inferential stats will cover many topics (at least two semesters of stats classes), so to break it up, this post will focus on only relational questions.
Continue readingResearch Design: Descriptive Statistics
Descriptive statistics provide summaries of quantitative data, which can include quantified qualitative data. They are intended to describe the data as they are rather than draw conclusions beyond your sample of participants. Thus, they are used for descriptive research questions. Inferential statistics are needed to address relational or causal research questions.
Continue reading