Hi all,
I ran an ANCOVA model which yielded a significant interaction between a fixed factor and a continuous covariate. I am interested in investigating the interaction further but I ran into the following problem: I created a median split in the continuous covariate, which in combination with the factor gave me four means for pairwise comparisons. While I realize all the issues attached to median splits, I have the additional problem that the pairwise comparisons weren;t significant, indicating that the interactions is not represented well by the median split. So I am wondering if there are any other statistical methods to investigate an interaction between a continuous covariate and a factor or if I am doomed to fish around for the appropriate split because for reporting purposes I will need the pairwise comparisons. What do people do in general in those cases. Given that we didn't expect the interaction (not part of the design) it's hard to come up with a theoretical rationale on how to split the data for pairwise comparisons and graphs. Many thanks in advance, Nicki *********************************************************************** This email may contain confidential material. If you were not an intended recipient, please notify the sender and delete all copies. We may monitor email to and from our network. *********************************************************************** |
Stephen Brand
www.statisticsdoc.com Hi Nicole, One of the core assumptions of ANCOVA is that the relationship between the covariate and the dependent variable is the same for both groups. When you have a significant group by covariate interaction, then this assumption is not met. The significant interaction term implies that the relationship between the covariate and the dependent variable differs between groups. As a result, I would not use ANCOVA to analyse these data. I would use a regression framework instead, with the following predictors: 1.) the continuous variable; 2.) dummy codes for the categorical variable (or effect codes, if these are appropriate); 3.) the cross-product, or interaction, between the continuous variable and each of the dummy codes. You can use the regression weights to compute values of the dependent variable for each group at one standard deviation above and below the mean on the continuous variable. These points will allow you to plot the slope and intercept of the continuous variable for each group. HTH, Stephen Brand For personalized and professional consultation in statistics and research design, visit www.statisticsdoc.com -----Original Message----- From: SPSSX(r) Discussion [mailto:[hidden email]]On Behalf Of Kersting, Nicole Sent: Thursday, December 14, 2006 1:48 PM To: [hidden email] Subject: Re: Statistical methods to investigate interactions between factors and continuous covariates Hi all, I ran an ANCOVA model which yielded a significant interaction between a fixed factor and a continuous covariate. I am interested in investigating the interaction further but I ran into the following problem: I created a median split in the continuous covariate, which in combination with the factor gave me four means for pairwise comparisons. While I realize all the issues attached to median splits, I have the additional problem that the pairwise comparisons weren;t significant, indicating that the interactions is not represented well by the median split. So I am wondering if there are any other statistical methods to investigate an interaction between a continuous covariate and a factor or if I am doomed to fish around for the appropriate split because for reporting purposes I will need the pairwise comparisons. What do people do in general in those cases. Given that we didn't expect the interaction (not part of the design) it's hard to come up with a theoretical rationale on how to split the data for pairwise comparisons and graphs. Many thanks in advance, Nicki *********************************************************************** This email may contain confidential material. If you were not an intended recipient, please notify the sender and delete all copies. We may monitor email to and from our network. *********************************************************************** |
In reply to this post by Kersting, Nicole
Nicki,
I've often wondered about this myself. How to interpret the interaction between a factor and a continuous covariate? Recently I've been exposed to Cluster Analysis. If you have a number of variables that are related in some theoretical way to your covariate you could run a Cluster Analysis to create profiles of individuals based on the covariate and the other variables that it is theoretically associated with and then see if those profiles differ as a function of your factor. Basically what you will have done is divided up your sample into much more meaningful groupings than a median split would do. You'd have to interpret what each cluster represents as you would do in a factor analysis. You would then look at the interaction between cluster membership and the factor. If you get an interaction it is then more interpretable because you have all of the other variables (the theoretically associated variables that you used to help create your clusters) that characterize each cluster. Furthermore, now that your sample is divided up into the theoretically meaningful clusters (of which you can have more than 2) it seems to me that you're preserving more info about your data than with a median split. Of course, it would rely on your having other variables that logically relate to you covariate. I'd be curious to know what others think about this. It seems to me like it gets rid of some of the messiness of interpreting an interaction between a factor and a continuous covariate. I've not done much of this, but this has been my impression. Thanks, Matt -----Original Message----- From: SPSSX(r) Discussion [mailto:[hidden email]] On Behalf Of Kersting, Nicole Sent: Thursday, December 14, 2006 10:48 AM To: [hidden email] Subject: Re: Statistical methods to investigate interactions between factors and continuous covariates Hi all, I ran an ANCOVA model which yielded a significant interaction between a fixed factor and a continuous covariate. I am interested in investigating the interaction further but I ran into the following problem: I created a median split in the continuous covariate, which in combination with the factor gave me four means for pairwise comparisons. While I realize all the issues attached to median splits, I have the additional problem that the pairwise comparisons weren;t significant, indicating that the interactions is not represented well by the median split. So I am wondering if there are any other statistical methods to investigate an interaction between a continuous covariate and a factor or if I am doomed to fish around for the appropriate split because for reporting purposes I will need the pairwise comparisons. What do people do in general in those cases. Given that we didn't expect the interaction (not part of the design) it's hard to come up with a theoretical rationale on how to split the data for pairwise comparisons and graphs. Many thanks in advance, Nicki *********************************************************************** This email may contain confidential material. If you were not an intended recipient, please notify the sender and delete all copies. We may monitor email to and from our network. *********************************************************************** |
In reply to this post by Kersting, Nicole
Hi:
I second Stephen's suggestion. The following reference will be useful: Aiken, L.S., & West, S.G. 1991. Multiple regression: Testing and interpreting interactions. London: Sage. You should steer clear of median splits. It is a big "no no" nowadays. Not only do you throw away information but in most cases you lose power. Using regressiona and plotting the interaction is the best thing to do. HTH, John Antonakis ----- Original Message ----- Expéditeur: Statisticsdoc <[hidden email]> à: [hidden email] Sujet: Re: Statistical methods to investigate interactions between factors and continuous covariates Date: Thu, 14 Dec 2006 14:15:34 -0500 > Stephen Brand > www.statisticsdoc.com > > Hi Nicole, > > One of the core assumptions of ANCOVA is that the > relationship between the covariate and the dependent > variable is the same for both groups. When you have a > significant group by covariate interaction, then this > assumption is not met. The significant interaction term > implies that the relationship between the covariate and > the dependent variable differs between groups. As a > result, I would not use ANCOVA to analyse these data. I > would use a regression framework instead, with the > following predictors: 1.) the continuous variable; 2.) > dummy codes for the categorical variable (or effect codes, > if these are appropriate); 3.) the cross-product, or > interaction, between the continuous variable and each of > the dummy codes. You can use the regression weights to > compute values of the dependent variable for each group at > one standard deviation above and below the mean on the > continuous variable. These points will allow you to plot > the slope and intercept of the continuous variable for > each group. > > HTH, > > Stephen Brand > > For personalized and professional consultation in > statistics and research design, visit > www.statisticsdoc.com > > > -----Original Message----- > From: SPSSX(r) Discussion > [mailto:[hidden email]]On Behalf Of Kersting, > Nicole Sent: Thursday, December 14, 2006 1:48 PM > To: [hidden email] > Subject: Re: Statistical methods to investigate > interactions between factors and continuous covariates > > > Hi all, > > I ran an ANCOVA model which yielded a significant > interaction between a fixed factor and a continuous > covariate. I am interested in investigating the > interaction further but I ran into the following problem: > I created a median split in the continuous covariate, > which in combination with the factor gave me four means > for pairwise comparisons. While I realize all the issues > attached to median splits, I have the additional problem > that the pairwise comparisons weren;t significant, > indicating that the interactions is not represented well > by the median split. > > So I am wondering if there are any other statistical > methods to investigate an interaction between a continuous > covariate and a factor or if I am doomed to fish around > for the appropriate split because for reporting purposes I > will need the pairwise comparisons. What do people do in > general in those cases. Given that we didn't expect the > interaction (not part of the design) it's hard to come up > with a theoretical rationale on how to split the data for > pairwise comparisons and graphs. > > Many thanks in advance, > Nicki > > ********************************************************** > ************* This email may contain confidential > material. If you were not an intended recipient, > please notify the sender and delete all copies. > We may monitor email to and from our network. > > ********************************************************** > ************* ___________________________________ Prof. John Antonakis Faculty of Management and Economics University of Lausanne Internef #527 CH-1015 Lausanne-Dorigny Switzerland Tel: ++41 (0)21 692-3438 Fax: ++41 (0)21 692-3305 http://www.hec.unil.ch/jantonakis ___________________________________ |
I concur with the recommendations.
Wrt avoiding median splits. In public policy for the past couple of decades we like to use adjectives with pejorative connotations before median split such as deceptive median split nefarious median split insidious median split invidious median split misleading median split etc. Art Kendall Social Research Consultants John Antonakis wrote: >Hi: > >I second Stephen's suggestion. The following reference will >be useful: > >Aiken, L.S., & West, S.G. 1991. Multiple regression: Testing >and interpreting interactions. London: Sage. > >You should steer clear of median splits. It is a big "no no" >nowadays. Not only do you throw away information but in >most cases you lose power. Using regressiona and plotting >the interaction is the best thing to do. > >HTH, >John Antonakis > >----- Original Message ----- >Expéditeur: Statisticsdoc <[hidden email]> >à: [hidden email] >Sujet: Re: Statistical methods to investigate interactions >between factors and continuous covariates >Date: Thu, 14 Dec 2006 14:15:34 -0500 > > > >>Stephen Brand >>www.statisticsdoc.com >> >>Hi Nicole, >> >>One of the core assumptions of ANCOVA is that the >>relationship between the covariate and the dependent >>variable is the same for both groups. When you have a >>significant group by covariate interaction, then this >>assumption is not met. The significant interaction term >>implies that the relationship between the covariate and >>the dependent variable differs between groups. As a >>result, I would not use ANCOVA to analyse these data. I >>would use a regression framework instead, with the >>following predictors: 1.) the continuous variable; 2.) >>dummy codes for the categorical variable (or effect codes, >>if these are appropriate); 3.) the cross-product, or >>interaction, between the continuous variable and each of >>the dummy codes. You can use the regression weights to >>compute values of the dependent variable for each group at >>one standard deviation above and below the mean on the >>continuous variable. These points will allow you to plot >>the slope and intercept of the continuous variable for >>each group. >> >>HTH, >> >>Stephen Brand >> >>For personalized and professional consultation in >>statistics and research design, visit >>www.statisticsdoc.com >> >> >>-----Original Message----- >>From: SPSSX(r) Discussion >>[mailto:[hidden email]]On Behalf Of Kersting, >>Nicole Sent: Thursday, December 14, 2006 1:48 PM >>To: [hidden email] >>Subject: Re: Statistical methods to investigate >>interactions between factors and continuous covariates >> >> >>Hi all, >> >>I ran an ANCOVA model which yielded a significant >>interaction between a fixed factor and a continuous >>covariate. I am interested in investigating the >>interaction further but I ran into the following problem: >>I created a median split in the continuous covariate, >>which in combination with the factor gave me four means >>for pairwise comparisons. While I realize all the issues >>attached to median splits, I have the additional problem >>that the pairwise comparisons weren;t significant, >>indicating that the interactions is not represented well >>by the median split. >> >>So I am wondering if there are any other statistical >>methods to investigate an interaction between a continuous >>covariate and a factor or if I am doomed to fish around >>for the appropriate split because for reporting purposes I >>will need the pairwise comparisons. What do people do in >>general in those cases. Given that we didn't expect the >>interaction (not part of the design) it's hard to come up >>with a theoretical rationale on how to split the data for >>pairwise comparisons and graphs. >> >>Many thanks in advance, >>Nicki >> >>********************************************************** >>************* This email may contain confidential >>material. If you were not an intended recipient, >>please notify the sender and delete all copies. >>We may monitor email to and from our network. >> >>********************************************************** >>************* >> >> > >___________________________________ > >Prof. John Antonakis >Faculty of Management and Economics >University of Lausanne >Internef #527 >CH-1015 Lausanne-Dorigny >Switzerland > >Tel: ++41 (0)21 692-3438 >Fax: ++41 (0)21 692-3305 > >http://www.hec.unil.ch/jantonakis >___________________________________ > > > >
Art Kendall
Social Research Consultants |
In reply to this post by Kersting, Nicole
I don't know if that's of any use but if you run your ANCOVA using GLM
procedure in SPSS, you can request /PRINT=PARAMETER which basically prints slopes for regressions where covariate predicts DV separately at each level of fixed factor var. This allows you to look at the slopes and see in what way they differ. Bozena Bozena Zdaniuk, Ph.D. University of Pittsburgh UCSUR, 6th Fl. 121 University Place Pittsburgh, PA 15260 Ph.: 412-624-5736 Fax: 412-624-4810 email: [hidden email] -----Original Message----- From: SPSSX(r) Discussion [mailto:[hidden email]] On Behalf Of Kersting, Nicole Sent: Thursday, December 14, 2006 1:48 PM To: [hidden email] Subject: Re: Statistical methods to investigate interactions between factors and continuous covariates Hi all, I ran an ANCOVA model which yielded a significant interaction between a fixed factor and a continuous covariate. I am interested in investigating the interaction further but I ran into the following problem: I created a median split in the continuous covariate, which in combination with the factor gave me four means for pairwise comparisons. While I realize all the issues attached to median splits, I have the additional problem that the pairwise comparisons weren;t significant, indicating that the interactions is not represented well by the median split. So I am wondering if there are any other statistical methods to investigate an interaction between a continuous covariate and a factor or if I am doomed to fish around for the appropriate split because for reporting purposes I will need the pairwise comparisons. What do people do in general in those cases. Given that we didn't expect the interaction (not part of the design) it's hard to come up with a theoretical rationale on how to split the data for pairwise comparisons and graphs. Many thanks in advance, Nicki *********************************************************************** This email may contain confidential material. If you were not an intended recipient, please notify the sender and delete all copies. We may monitor email to and from our network. *********************************************************************** |
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