When analyzing longitudinal data, do you use regression or structural equation based approaches? There are many types of longitudinal data and different approaches to analyzing them. Two popular approaches are a regression based approach and a structural equation modeling based approach.
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Regression is one of the most common analyses in statistics. Most of us learn it in grad school, and we learned it in a specific software. Maybe SPSS, maybe another software package. The thing is, depending on your training and when you did it, there is SO MUCH to know about doing a regression analysis in SPSS.
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The objective for quasi-experimental designs is to establish cause and effect relationships between the dependent and independent variables. However, they have one big challenge in achieving this objective: lack of an established control group.
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Tell me if you can relate to this:
You love your field of study, you enjoy asking the big questions and discovering answers. But, when it comes to data analysis and statistics you get a little bogged down. You might even feel a bit lost sometimes.
And that is hard to admit.
Because after all, you are supposed to be the expert. Right?
Learning Statistics is Hard but We Make it a Lot Easier
The thing is, statistics is a field unto itself. But as a researcher, you need to be adept with statistics even though you may only have very basic training in this field. In essence, you learned statistics — a new language — out of context. You had no real immersion experience to practice this language. You had few opportunities to apply the strange new terms and concepts as you learned them.
At the Analysis Factor, we understand the pain of learning and doing statistics. We have been in the trenches with hundreds of researchers like you across many fields of study. Everyone is struggling to grow their statistical, data analysis, and software skills.
In Statistically Speaking we support and guide you as you learn — every step of the way. We know where to start, where to go next, and next, and next.
We know that your field and research question(s) determine the type of data and complexity of statistical analyses you will choose. And we know that everyone shows up in a different place, and needs different things to help them get where they need to go.
So we have created a treasure trove of resources on hundreds of topics — from data cleaning and research design to logistic regression and structural equation modeling.
And to keep it all about you, we have created a customizable learning platform, one where you make a plan for your own unique journey. We have crafted a series of comprehensive Maps, curated guides on essential topics at each Stage of mastery, offering you a structured pathway through the maze of statistical knowledge.
You create the plan you need, and choose the maps you need to do your research.
Maps
At The Analysis Factor, we classify the statistical content and skills into 4 Stages to help you decide where to begin your learning journey. In Statistically Speaking, the Maps are categorized into these Stages.
Here are just a few examples:
Stage 1: Fundamentals
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Preparing Data: Understanding the fundamental steps in data preparation, from cleaning and transforming to structuring datasets for analysis.
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Bivariate Statistics: Grasping the basics of relationships between two variables, laying the groundwork for more complex analyses.
Stage 2: Linear Models
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Graphing: Learning visualization techniques to represent data and derive meaningful insights.
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Introduction to Regression: Unraveling the fundamentals of regression analysis, a cornerstone of statistical modeling.
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Interpreting Results: Developing the skill to interpret statistical results and draw valid conclusions from analyses.
Stage 3: Extensions of Linear Models
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Count Models: Exploring specialized models for count data analysis, understanding their application and nuances.
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Logistic Regression: Diving into binary outcome analysis, understanding probabilities, and logistic models.
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Factor Analysis: Delving into multivariate analysis, understanding latent variables and their relationships.
Stage 4: Advanced Models
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GLMM: Embracing the complexity of generalized linear mixed models, integrating fixed and random effects.
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SEM: Venturing into structural equation modeling, exploring complex relationships among variables.
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Survival Analysis: Understanding time-to-event data, its application in various fields, and survival modeling techniques.
By mapping out the key content and skills you want to learn at each Stage, you’ll gain a clearer understanding of the vast statistical landscape and feel empowered to take on the learning journey ahead.
So, what are you waiting for? Members, head on over to explore the Maps in Statistically Speaking.
And if you are not yet a member, you can sign-up for our waitlist to join Statistically Speaking. We would love to meet you, learn about your research, and help you get started on your statistical learning adventure.