Short story: I am searching for advice as a doctoral student interested in learning advanced quantitative methods.
Long story: As an undergraduate, I took one statistics class, and while I enjoyed it, I didn't take another class in it. I didn't take any math classes either, which were not required by my university because it had an open curriculum. When I entered my master's program, however, I was exposed to psychometric theory and became really interested in the field. I took a course on multiple regression in my master's program, but there was a lot of hand waving regarding the derivation of formulas and their relationships to each other. This knowledge wasn't absolutely necessary to interpret the output, but I would have loved to develop a more conceptual understanding of the procedures.
I'm starting a doctoral program this fall and our department has a strong quantitative methods program, so I'm looking forward to taking as many quantitative courses as possible and using the methods and concepts I learn in my research (specifically, EFA, CFA, SEM, latent variable growth curve modeling, latent class analysis, and item response theory). For those on the board with experience in advanced quantitative methods, what would you recommend I do to prepare myself? I'm self-studying linear algebra this summer in the hope of unlocking the secrets of correlation/covariance matrices, which has been interesting. However, my last math course was calculus was in high school and I'm slowly becoming accustomed to the proofs. Do you believe that studying linear algebra, calculus, probability, and other fundamental math areas will help me significantly or is it overkill considering the methods I want to learn? What books/online resources have you found useful in learning psychometrics/advanced statistical techniques? How did you learn the techniques - was it through self-study, taking courses, performing analyses and consulting with professors/colleagues, or wrestling with problems with analyses by yourself? I'm supposing it was a combination of these methods, but which if any was the most important? What advice in general would you have for a doctoral psychology student interested in the quantitative path?
Thanks!
Long story: As an undergraduate, I took one statistics class, and while I enjoyed it, I didn't take another class in it. I didn't take any math classes either, which were not required by my university because it had an open curriculum. When I entered my master's program, however, I was exposed to psychometric theory and became really interested in the field. I took a course on multiple regression in my master's program, but there was a lot of hand waving regarding the derivation of formulas and their relationships to each other. This knowledge wasn't absolutely necessary to interpret the output, but I would have loved to develop a more conceptual understanding of the procedures.
I'm starting a doctoral program this fall and our department has a strong quantitative methods program, so I'm looking forward to taking as many quantitative courses as possible and using the methods and concepts I learn in my research (specifically, EFA, CFA, SEM, latent variable growth curve modeling, latent class analysis, and item response theory). For those on the board with experience in advanced quantitative methods, what would you recommend I do to prepare myself? I'm self-studying linear algebra this summer in the hope of unlocking the secrets of correlation/covariance matrices, which has been interesting. However, my last math course was calculus was in high school and I'm slowly becoming accustomed to the proofs. Do you believe that studying linear algebra, calculus, probability, and other fundamental math areas will help me significantly or is it overkill considering the methods I want to learn? What books/online resources have you found useful in learning psychometrics/advanced statistical techniques? How did you learn the techniques - was it through self-study, taking courses, performing analyses and consulting with professors/colleagues, or wrestling with problems with analyses by yourself? I'm supposing it was a combination of these methods, but which if any was the most important? What advice in general would you have for a doctoral psychology student interested in the quantitative path?
Thanks!
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