I am in the final year of my PhD and I have used SPSS throughout without any formal training apart from watching your videos. You are the best teacher ever. You are just too phenomenal. You have been a great teacher to some of us low income countries.
I am a PhD student in Epidemiology. My professor just asked me to do factor analysis and I had zero knowledge about this analysis. Your video helped me a lot. Thank you so much.
You are a God sent. I am doing Statistics II and have no clue but through prayer and your videos, I have been getting A's and B's. Thank you.
7 років тому+4
You explain everything in a nice manner, no redundant talking as there are in many other videos on youtube. Although I appreciate any effort made, it is really great to watch a video explaining concepts in detail and also being up to the point. Thank you so much!
Great explanation. Way better than my tutors. Please make more of these. You are helping and, reading from the comments, saving a lot of students. as for a comment, It would be nice if you also explained more to WHY you want or need certain numbers it would explain a lot too. KR. Floris
Thank you so so much you saved my thesis,I didnt knew what to do . after watching this video I was able to complete my report. So again a big thank you .
Great tip about using orthogonal rotation when there is no factor correlation > |0.32|. I was reading Tabachnick and Fidell (2007) and came across similar advice about the factor correlation matrix (p. 646).
Clearly an older version of SPSS since that Factor dialogue box looks different in current version. The last part of the video you mention the 0.3 as a threshold for factors and how they were grouped by type. I wish you had spent another 10-20 seconds and elaborated on that a little bit, what that implies exactly. Overall good video and thank you.
Thank you Sir for the explanation. Sorry i am a little bit confused. I want to do factor analysis precisely CFA for my work, but i don't know if the steps you follow on the video are the same even for EFA or CFA
Thank you for the helpful video. Two follow-up questions. (1) I read elsewhere the suggestion that the item should be removed if the extraction value (in the Communalities table) is < 0.20. That seems to make sense because too little variance is being explained. Do you agree with this approach? (2) What would you recommend in dealing with items that cross-load across multiple factors in an exploratory factor analysis? Thanks in advance!
Dr.Grand, I have some problem in EFA. There are 9 components whicha has eigen value more than one and various items are left with factor loading less than .6 Please help me what to do. KMO is .761 and there is no high correlation above 0.7
Hi Todd I have two questions. Using different rotations methods, how could you know which one is the best one? component matrix is the loading matrix, isnt it? Thank you very much for your help!
i loved your video, it was very informative but i have one difficulty. Does it matter whether the factor loading value is negative or positive or do they both have the weightage. Should we prefer the smaller but positive value such as (0.22) over higher negative value such as (-0.89) when collapsing the variables into factors. Please provide ans to my question
dear dr, is there any extraction value that shows problematic commonalities in factor analysis? you said that higher values are better.. right? what low value would be considered bad?
Hi Professor Todd. Thank you for the video. It was really very helpful for a beginner like me. A quick question- when we analyze the component Transformation matrix (under direct oblimin) and in the output table we have 2-3 variables whoes value is greater than 0.32, do we still need to change the rotation type to varmax or continue with the old output?? I tried displaying the data with both the rotation types and they are different. What do you suggest??
Thank you very much for the video Dr. TL Todd. I did not however get the point of 'mixture of positive and negative correlation matrix' right. Again you mentioned for symmetrical data SPSS give a KMO value of 0.5 hence your rejection of value as suggestive of appropriate factor. My question is is this true for other softwares? Thank you
Hello, Thanks so much for this video! I hope you see this question :) I used direct oblimin and Varimax and had absolute values over .32 in both. How do I decide which to stick with? PS: I am doing a factor reduction for over 100 items and both solutions reduced my items to 25. Also my N = 123
it's very great to learn. I have one question that if I have scores above the .3 on two factors then which and how we can consider that the item xx is on which factor or should be on which factor. thank you
I was just wondering what Absolute value is for? My team and I just started using Factor Analysis so from the instructions we received, we have been using 0.4 for Absolute Value. What happens if i change the value from 0.4 to, per say, 0.5?
What are the differences and implications for extracting factors based on eigenvalues greater than 1 versus using a fixed number of factors to extract while using PAF on spss? Or, do you have any literature that can point me in the right direction? I want to extract a relevant factor for my theory, and when I run my items on spss, using PROMAX, PAF-extraction based on eigenvalues greater than 1, more than one factor extracts from the factor matrix. In prior instances this has happened; even with decent loadings above .500. Is it possible to use a "fixed number of factors to extract," ask SPSS to extract 1 factor only if I can rationalize it through the literature?
Thanks Dr Todd for your very informative videos on Factor Analysis. One question: I notice that the Determinant value for the above Correlation Matrix is 3.81E-5, which to me is 0.0000381 which is less than the thresh-hold value of 0.0001 below which Factor Analysis is not recommended due to high Collinearity, as quoted by various people. Is my understanding incorrect? Thanks again.
What is the formal interpretation of having factors load together of it does not mean that the factors are perceived to be measuring same latent variable? or loading together should mean what?
I have a large number of scale items and I need to narrow it down to factors in order to test the hypothesis, so I used factor analysis, I noticed that I can have 3 component, however 1 component when I ran the reliability test for it it was very low (0.4) it is understandable since it only has 2 items, I can't use it because of this. I decided to do what you did as in limit the components to 2 and in the transformation matrix the first component is 0.682 (correlated, I think the word?) with the second, while the second is the negative of that number (-0.682) with the first component and with each other 1 with 1 and 2 with 2 (0.731). Are the values acceptable and can I continue using 2 components? if yes, then how would I interpret the results in my thesis about the component transformation matrix (the one I just mentioned its values) and the total variance explained table (since it shows 3 component not 2)
Doing factor analysis for 500 samples and 40 variables. If we get a variable extraction value 0.425, shall we consider this as good extraction value? Shall we removed this from variable list or carry forward for further analysis?
Thank you. I applied factor analysis to data from an employee engagement study and identified 2 factors. How will this result assist me further in identifying and prioritizing interventions?
I am not even sure you are going to reply but here goes nothing, I am currently doing my dissertation and my first step on my to do list was to do conduct a factor analysis hoping it would result into three categories but instead it produced over 5 factors so what should I do?
Hi , I'm having an issue with combining my questions into 1 and the test the correlation. Should I follow factor analysis method you have shown above or go with computing under transform tab.
Dr. Grande, thank you for your video. I have a question regarding the variables I've created using FA. Now that the variables are in my dataset and renamed, are those variables ready for use in regression analysis?
I am doing PCA on assets of rural farmers of South Asia. Based on factor loadings on 2-3 different principal components how can we classify them into Poor , Medium and Rich farmers ??
Hey Todd, thank you for this great video! I Just have one question: is this a confirmatory or a exploratory factor analysis? Thank you in advance and best regards, Andrea
THank you Dr TOdd! I really understant all easily, what I was looking for! One question please, what is the minumum&maxumum Absolute value below in Options?
Hi, I have a question. I'm testing a model with 3 variables (2 DV, 1 IV). But 1 DV and the IV load onto the same factor since the answers were so similar (Quality of something and the trust). Is this a problem? How should i mention this in my findings. Thanks for all your great videos!
Hi Prof. Thanks a lot for your wonderful lecture. I just have one quick question: Is the extraction value for variables the same as what is known as Factor loading?
The level of dissonance I experienced when your true crime video was playing on my tv and this video started playing on my computer as I'm tinkering with spss XD
Sir could u please explain how to interpret the variables loaded onto any factor? What interpretations can be drawn from the factors identified and variables loaded with any corresponding factor? Kindly explain.
what is the difference between component matrix and rotated component matrix coz you did not explain component matrix. can you please explain that too?
I am in the final year of my PhD and I have used SPSS throughout without any formal training apart from watching your videos. You are the best teacher ever. You are just too phenomenal. You have been a great teacher to some of us low income countries.
you're currently saving my academic life, so thank-you!
I'm glad you found the video useful. Thanks for watching.
Thanks from my side too....!!!
Agreed
@Brooks Burke I just received a notification and wow can't believe I was doing this 4 years ago
I am a PhD student in Epidemiology. My professor just asked me to do factor analysis and I had zero knowledge about this analysis. Your video helped me a lot. Thank you so much.
This video really saved me from depression, I was struggling to understand so far. A great teaching method. Thanks, Dr. Todd
You are a God sent. I am doing Statistics II and have no clue but through prayer and your videos, I have been getting A's and B's. Thank you.
You explain everything in a nice manner, no redundant talking as there are in many other videos on youtube. Although I appreciate any effort made, it is really great to watch a video explaining concepts in detail and also being up to the point. Thank you so much!
You're welcome - thank you for watching.
Dr. Grande, you even have SPSS tutorials? Who’s better than you?! NO ONE💖
Thank you, my whole semester is clearly explained there and I´m finally get it! I am very grateful.
Great explanation. Way better than my tutors. Please make more of these. You are helping and, reading from the comments, saving a lot of students.
as for a comment, It would be nice if you also explained more to WHY you want or need certain numbers it would explain a lot too.
KR.
Floris
Thank you so so much you saved my thesis,I didnt knew what to do . after watching this video I was able to complete my report. So again a big thank you .
You are the one getting me through my masters degree.
Thanks Dr. Grande, great explanation and very easy to follow. I'm about to take an exam on principal components analysis and canonical correlations.
Thank you for this amazing video.
Everything is more make sense now
Great tip about using orthogonal rotation when there is no factor correlation > |0.32|. I was reading Tabachnick and Fidell (2007) and came across similar advice about the factor correlation matrix (p. 646).
This has just been so much help to me. Thank you.
Thanks you Dr Grande. Awesome videos, helping me a lot!
This video was so helpful for the beginners. Thank u so much.. But I have a doubt regarding choosing the rotation type. Can u plz explain me?
the video just helped alot. the way of explaining and demonstration is really great. Thank you
You're welcome - thanks for watching -
Very well explained. Thank you Sir.
Very simple and to the point! Thank you!
who wanna learn factor analysis should watch this
Very nice explanation. Thankyou so much.
Dr. Grande , thank you so much !
Thank you so much professor. You really help me
Thank's a lot for Dr.Todd your tutorial for that topic so helpfull .....
You're welcome!
Clearly an older version of SPSS since that Factor dialogue box looks different in current version. The last part of the video you mention the 0.3 as a threshold for factors and how they were grouped by type. I wish you had spent another 10-20 seconds and elaborated on that a little bit, what that implies exactly. Overall good video and thank you.
great explanation, thanks Todd
Sir nice explanation.. How to write hypothesis for the above problem
And how to analyse the output.. Relating to hypothesis
Thank you so much. It would be better to attach the description of assumptions for each table and their significant values.
Excellent and so clear! Thank you
Briliant as always!
Thank you Sir for the explanation. Sorry i am a little bit confused. I want to do factor analysis precisely CFA for my work, but i don't know if the steps you follow on the video are the same even for EFA or CFA
Another masterpiece, thank you.
What should we do if there is negative factor loading Sir? Should we keep that item or not? Thank you 🙏
A negative factor loading that is extreme (less than -.40) could be a reversible item, I believe.
Thank you for the helpful video. Two follow-up questions. (1) I read elsewhere the suggestion that the item should be removed if the extraction value (in the Communalities table) is < 0.20. That seems to make sense because too little variance is being explained. Do you agree with this approach? (2) What would you recommend in dealing with items that cross-load across multiple factors in an exploratory factor analysis? Thanks in advance!
Thank you next, Dr. Grande !!!
Dr.Grand, I have some problem in EFA. There are 9 components whicha has eigen value more than one and various items are left with factor loading less than .6 Please help me what to do. KMO is .761 and there is no high correlation above 0.7
Hi Todd I have two questions. Using different rotations methods, how could you know which one is the best one? component matrix is the loading matrix, isnt it? Thank you very much for your help!
found this very helpful. I get the interpretation now. Thank you
You're welcome, thanks for watching -
i loved your video, it was very informative but i have one difficulty.
Does it matter whether the factor loading value is negative or positive or do they both have the weightage. Should we prefer the smaller but positive value such as (0.22) over higher negative value such as (-0.89) when collapsing the variables into factors.
Please provide ans to my question
Hello Dr. The video is very helpful and a good guide. Would you share your data for practice?
dear dr, is there any extraction value that shows problematic commonalities in factor analysis? you said that higher values are better.. right? what low value would be considered bad?
Thank you Dr Grande, Please I would like to know if it is allowed to use the component matrix instead of the rotated component matrix?
Why .32 sir? Thank you so much for this.
Hi Professor Todd. Thank you for the video. It was really very helpful for a beginner like me. A quick question- when we analyze the component Transformation matrix (under direct oblimin) and in the output table we have 2-3 variables whoes value is greater than 0.32, do we still need to change the rotation type to varmax or continue with the old output??
I tried displaying the data with both the rotation types and they are different. What do you suggest??
What does the percentage variance explains? And how much variance is good for the dimensions?
Thank you very much for the video Dr. TL Todd. I did not however get the point of 'mixture of positive and negative correlation matrix' right. Again you mentioned for symmetrical data SPSS give a KMO value of 0.5 hence your rejection of value as suggestive of appropriate factor. My question is is this true for other softwares? Thank you
Wrong post. I meant this for video on KMO. Guess i opened both videos at the time
Hello, Thanks so much for this video! I hope you see this question :) I used direct oblimin and Varimax and had absolute values over .32 in both. How do I decide which to stick with?
PS: I am doing a factor reduction for over 100 items and both solutions reduced my items to 25. Also my N = 123
How do you tell a test is unidimensional or multidimensional? Help please!
it's very great to learn. I have one question that if I have scores above the .3 on two factors then which and how we can consider that the item xx is on which factor or should be on which factor. thank you
I was just wondering what Absolute value is for? My team and I just started using Factor Analysis so from the instructions we received, we have been using 0.4 for Absolute Value.
What happens if i change the value from 0.4 to, per say, 0.5?
Respected Sir,
Is data normality a necessary condition for running EFA?
What are the differences and implications for extracting factors based on eigenvalues greater than 1 versus using a fixed number of factors to extract while using PAF on spss? Or, do you have any literature that can point me in the right direction?
I want to extract a relevant factor for my theory, and when I run my items on spss, using PROMAX, PAF-extraction based on eigenvalues greater than 1, more than one factor extracts from the factor matrix. In prior instances this has happened; even with decent loadings above .500. Is it possible to use a "fixed number of factors to extract," ask SPSS to extract 1 factor only if I can rationalize it through the literature?
i want to ask when you select rotation methodf from obliman to verimax you say 0.32 vlauewhat it means where it comes from
Thanks for ur clarification
Thank you
It very helpful
Hii, How the factors are saved in the dataset?. Which outcomes contribute to that?
How do I know what questions each component is in the "Total variance explained" table?
Thanks Dr Todd for your very informative videos on Factor Analysis. One question: I notice that the Determinant value for the above Correlation Matrix is 3.81E-5, which to me is 0.0000381 which is less than the thresh-hold value of 0.0001 below which Factor Analysis is not recommended due to high Collinearity, as quoted by various people. Is my understanding incorrect? Thanks again.
What is the formal interpretation of having factors load together of it does not mean that the factors are perceived to be measuring same latent variable? or loading together should mean what?
Dr. Todd shall we consider extraction value below 0.5 on communalities table or remove it for further factor loading process? Please help.
how i can get reproduced correlation matrix? how i can calculate standard deviation of residuals ? thanks
Hi Todd, How can i calculate individual case scores following a principal
component analysis? kindly help
Thank you for this videos. I have a question, how I can get the index of fit (chi-squared, RMSEA, CFI) in SPSS?
great video and explanations
Thank you!
I have a large number of scale items and I need to narrow it down to factors in order to test the hypothesis, so I used factor analysis, I noticed that I can have 3 component, however 1 component when I ran the reliability test for it it was very low (0.4) it is understandable since it only has 2 items, I can't use it because of this. I decided to do what you did as in limit the components to 2 and in the transformation matrix the first component is 0.682 (correlated, I think the word?) with the second, while the second is the negative of that number (-0.682) with the first component and with each other 1 with 1 and 2 with 2 (0.731). Are the values acceptable and can I continue using 2 components? if yes, then how would I interpret the results in my thesis about the component transformation matrix (the one I just mentioned its values) and the total variance explained table (since it shows 3 component not 2)
Doing factor analysis for 500 samples and 40 variables. If we get a variable extraction value 0.425, shall we consider this as good extraction value? Shall we removed this from variable list or carry forward for further analysis?
Dr. Todd grande please help me out
Sir what if we get negative values for a component in rotated component matrix?
Is it possible to do factor analysis with yes or no questions?
You are saying: if it is greater than 0.32 (what in this case it is), i would stick to oblimin. But why do you chose for VARMIAX??
Thank you. I applied factor analysis to data from an employee engagement study and identified 2 factors. How will this result assist me further in identifying and prioritizing interventions?
I am not even sure you are going to reply but here goes nothing, I am currently doing my dissertation and my first step on my to do list was to do conduct a factor analysis hoping it would result into three categories but instead it produced over 5 factors so what should I do?
is there any way on how to extract less components in rotated component matrix?
Hi , I'm having an issue with combining my questions into 1 and the test the correlation. Should I follow factor analysis method you have shown above or go with computing under transform tab.
What is the most important value like p value in factor analysis?
Dr. Grande, thank you for your video. I have a question regarding the variables I've created using FA. Now that the variables are in my dataset and renamed, are those variables ready for use in regression analysis?
Thank you for your video. I am wondering how do we get chi square value?
I am doing PCA on assets of rural farmers of South Asia. Based on factor loadings on 2-3 different principal components how can we classify them into Poor , Medium and Rich farmers ??
Hey Todd, thank you for this great video! I Just have one question: is this a confirmatory or a exploratory factor analysis? Thank you in advance and best regards, Andrea
THank you Dr TOdd! I really understant all easily, what I was looking for! One question please, what is the minumum&maxumum Absolute value below in Options?
Please can you reply me?
Hello , i have one question, how can i reextract the component again after we extract at the first time ?
Can I apply this method to create an index of 10 variables with different scoring procedure
Thank you Dr. Grande!
You are welcome - thank you for watching -
Thank you, it was so helpful.
Great video, Tks very much!
Please answer, how to find relationship of factors with dependent variable
how to deal with complex variables with sig. loading in more than 1 components? :-)
Thanks, very helpful!
You're welcome!
Is it true that once you do an orthogonal rotation some of the dual factor loadings are corrected?
Hi, I have a question. I'm testing a model with 3 variables (2 DV, 1 IV). But 1 DV and the IV load onto the same factor since the answers were so similar (Quality of something and the trust). Is this a problem? How should i mention this in my findings.
Thanks for all your great videos!
Hi Prof. Thanks a lot for your wonderful lecture. I just have one quick question: Is the extraction value for variables the same as what is known as Factor loading?
Dr your are a saint
How can the combined eigenvalues of a set of variables which are closely related be ascertain?
Hello Dr. Todd how could i contact you? I working with factor analysis and sPSS and would need some help!
The level of dissonance I experienced when your true crime video was playing on my tv and this video started playing on my computer as I'm tinkering with spss XD
+Todd Grande
how can i use this results for give weights to the variables?
Sir, what is the difference between factor analysis and PCA in SPSS?
Sir could u please explain how to interpret the variables loaded onto any factor? What interpretations can be drawn from the factors identified and variables loaded with any corresponding factor? Kindly explain.
what is the difference between component matrix and rotated component matrix coz you did not explain component matrix. can you please explain that too?
Do after second order factor analysis.. % of variance changes of factors?