Interpretation of linear regression interaction term plot












2












$begingroup$


I am interested in looking at the relationship between plant productivity, temperature change and plant biomass change.



I have run a linear model in R using the below equation for this with plant productivity as an interaction term.



Plant biomass change = temperature change * plant productivity



The interaction is statistically significant (p-value = <0.01). I have plotted the estimated coefficient for temperature change from model above against the plant biomass figures and wanted to check I'm interpreting it right!



enter image description here



I think (hope) the plot tells me how the effect of temperature on biomass change changes as productivity changes.



The graph shows me the temperature coefficient becomes less negative as biomass increases. I interpret this to mean that temperature has a negative effect on the biomass change in plants with lower productivity.



Is my interpretation correct?










share|cite|improve this question









$endgroup$

















    2












    $begingroup$


    I am interested in looking at the relationship between plant productivity, temperature change and plant biomass change.



    I have run a linear model in R using the below equation for this with plant productivity as an interaction term.



    Plant biomass change = temperature change * plant productivity



    The interaction is statistically significant (p-value = <0.01). I have plotted the estimated coefficient for temperature change from model above against the plant biomass figures and wanted to check I'm interpreting it right!



    enter image description here



    I think (hope) the plot tells me how the effect of temperature on biomass change changes as productivity changes.



    The graph shows me the temperature coefficient becomes less negative as biomass increases. I interpret this to mean that temperature has a negative effect on the biomass change in plants with lower productivity.



    Is my interpretation correct?










    share|cite|improve this question









    $endgroup$















      2












      2








      2





      $begingroup$


      I am interested in looking at the relationship between plant productivity, temperature change and plant biomass change.



      I have run a linear model in R using the below equation for this with plant productivity as an interaction term.



      Plant biomass change = temperature change * plant productivity



      The interaction is statistically significant (p-value = <0.01). I have plotted the estimated coefficient for temperature change from model above against the plant biomass figures and wanted to check I'm interpreting it right!



      enter image description here



      I think (hope) the plot tells me how the effect of temperature on biomass change changes as productivity changes.



      The graph shows me the temperature coefficient becomes less negative as biomass increases. I interpret this to mean that temperature has a negative effect on the biomass change in plants with lower productivity.



      Is my interpretation correct?










      share|cite|improve this question









      $endgroup$




      I am interested in looking at the relationship between plant productivity, temperature change and plant biomass change.



      I have run a linear model in R using the below equation for this with plant productivity as an interaction term.



      Plant biomass change = temperature change * plant productivity



      The interaction is statistically significant (p-value = <0.01). I have plotted the estimated coefficient for temperature change from model above against the plant biomass figures and wanted to check I'm interpreting it right!



      enter image description here



      I think (hope) the plot tells me how the effect of temperature on biomass change changes as productivity changes.



      The graph shows me the temperature coefficient becomes less negative as biomass increases. I interpret this to mean that temperature has a negative effect on the biomass change in plants with lower productivity.



      Is my interpretation correct?







      r regression interaction






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      asked 3 hours ago









      Clare PClare P

      161




      161






















          2 Answers
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          active

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          2












          $begingroup$

          That interpretation seems correct and that's an interesting way to graph it.



          What I usually do is have one IV on the x axis, the DV on the y axis and several lines for the other IV. Then I make the same plot with the IVs switched. That might be more interpretable.






          share|cite|improve this answer









          $endgroup$





















            1












            $begingroup$

            Not quite sure I follow your argument. If both predictor variables in your model are assumed continuous, then the model summary should report an estimated intercept (b0), an estimated coefficient for temperature change (b1), an estimated coefficient for plant productivity (b2) and an estimated coefficient for the interaction between temperature change and plant productivity (b3). The summary of the model output will report these values in the column titled Estimate - since I don't know what they are, I called them b0, b1, b2 and b3. Thus, the expected (or average) plant biomass change can be expressed as:



            Expected plant biomass change = b0 + b1*(temperature change) + b2*(plant productivity) + 
            b3*(temperature change)*(plant productivity).


            Because the model includes an interaction term, the effect of plant productivity on expected plant biomass change actually depends on temperature change. You can see this by re-arranging the above equation:



            Expected plant biomass change = [b0 + b1*(temperature change)] + [b2 + b3*(temperature change)]*(plant productivity).


            The intercept and slopes describing the relationship between plant productivity are given by:



            Intercept: [b0 + b1*(temperature change)] 

            Slope: [b2 + b3*(temperature change)]


            For example, if the temperature change is zero degrees (Celsius?), then:



            Expected plant biomass change = b0 + (b2 + b3)*(plant productivity).


            As Peter suggested, you can choose several representative values for temperature change and then plot the corresponding lines obtained by substituting those representative values in the expressions of the above Intercept and Slope. Those lines would describe how the expected plant biomass change varies as a function of plant productivity.



            To decide which representative values of temperature change to consider, you can plot the distribution of temperature changes observed in your study. If that distribution looks approximately normal, you can choose the average temperature change (m), as well as m - sd and m + sd, say, where sd is the standard deviation of that distribution. If the distribution is unimodal but skewed, you could replace m with the median and sd with the interquartile range of the distribution.



            Plotting lines with different intercepts and slopes would allow you to see how the effect of plant productivity on expected plant biomass change depends on particular, representative values of temperature change. It's possible that some slopes will be positive, while others will be negative. In that case, you can note that the effect changes direction, etc.



            Addendum:



            If I understand @gung correctly, I think what you did was to re-express the first equation I wrote like so:



            Expected plant biomass change = [b0 + b2*(plant productivity)] +
            [b1 + b3*(plant productivity)]*(temperature change)



            and then plot b1 + b3*(plant productivity) versus productivity to see how the rate of change in expected plant biomass change varies as a function of plant productivity. What is not clear to me though is how you computed the confidence band around b1 + b3*(plant productivity)? Did you compute the standard error (SE) of b1 + b3*(plant productivity) and then computed pointwise confidence bands via the formula b1 + b3*(plant productivity) +/- 1.96 SE? (The SE should take into account the correlation between b1 and b3). Or perhaps you used a critical value from a t-distribution instead of 1.96, with degrees of freedom given by the residual degrees of freedom?






            share|cite|improve this answer











            $endgroup$









            • 1




              $begingroup$
              I interpret the OP's plot as follows: Each point on that line is the slope on the simple effect of temperature at the level of productivity specified on the x-axis.
              $endgroup$
              – gung
              44 mins ago










            • $begingroup$
              @gung: Does my Addendum to the above capture what you think the OP's plot is showing? The OP stated that the coefficient plotted becomes more negative as biomass increases - but it should become more negative as plant productivity increases? That statement threw me off regarding what was actually being plotted.
              $endgroup$
              – Isabella Ghement
              23 mins ago






            • 1




              $begingroup$
              Yes. Confidence intervals for the slope of a simple effect can be computed at any point by the square root of the sum of the variances and 2*Cov(b1, b3), but I don't think that would address the simultaneity.
              $endgroup$
              – gung
              12 mins ago










            • $begingroup$
              Thanks so much, @gung! 😊
              $endgroup$
              – Isabella Ghement
              5 mins ago











            Your Answer





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            2 Answers
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            2 Answers
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            active

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            2












            $begingroup$

            That interpretation seems correct and that's an interesting way to graph it.



            What I usually do is have one IV on the x axis, the DV on the y axis and several lines for the other IV. Then I make the same plot with the IVs switched. That might be more interpretable.






            share|cite|improve this answer









            $endgroup$


















              2












              $begingroup$

              That interpretation seems correct and that's an interesting way to graph it.



              What I usually do is have one IV on the x axis, the DV on the y axis and several lines for the other IV. Then I make the same plot with the IVs switched. That might be more interpretable.






              share|cite|improve this answer









              $endgroup$
















                2












                2








                2





                $begingroup$

                That interpretation seems correct and that's an interesting way to graph it.



                What I usually do is have one IV on the x axis, the DV on the y axis and several lines for the other IV. Then I make the same plot with the IVs switched. That might be more interpretable.






                share|cite|improve this answer









                $endgroup$



                That interpretation seems correct and that's an interesting way to graph it.



                What I usually do is have one IV on the x axis, the DV on the y axis and several lines for the other IV. Then I make the same plot with the IVs switched. That might be more interpretable.







                share|cite|improve this answer












                share|cite|improve this answer



                share|cite|improve this answer










                answered 3 hours ago









                Peter FlomPeter Flom

                76k11107209




                76k11107209

























                    1












                    $begingroup$

                    Not quite sure I follow your argument. If both predictor variables in your model are assumed continuous, then the model summary should report an estimated intercept (b0), an estimated coefficient for temperature change (b1), an estimated coefficient for plant productivity (b2) and an estimated coefficient for the interaction between temperature change and plant productivity (b3). The summary of the model output will report these values in the column titled Estimate - since I don't know what they are, I called them b0, b1, b2 and b3. Thus, the expected (or average) plant biomass change can be expressed as:



                    Expected plant biomass change = b0 + b1*(temperature change) + b2*(plant productivity) + 
                    b3*(temperature change)*(plant productivity).


                    Because the model includes an interaction term, the effect of plant productivity on expected plant biomass change actually depends on temperature change. You can see this by re-arranging the above equation:



                    Expected plant biomass change = [b0 + b1*(temperature change)] + [b2 + b3*(temperature change)]*(plant productivity).


                    The intercept and slopes describing the relationship between plant productivity are given by:



                    Intercept: [b0 + b1*(temperature change)] 

                    Slope: [b2 + b3*(temperature change)]


                    For example, if the temperature change is zero degrees (Celsius?), then:



                    Expected plant biomass change = b0 + (b2 + b3)*(plant productivity).


                    As Peter suggested, you can choose several representative values for temperature change and then plot the corresponding lines obtained by substituting those representative values in the expressions of the above Intercept and Slope. Those lines would describe how the expected plant biomass change varies as a function of plant productivity.



                    To decide which representative values of temperature change to consider, you can plot the distribution of temperature changes observed in your study. If that distribution looks approximately normal, you can choose the average temperature change (m), as well as m - sd and m + sd, say, where sd is the standard deviation of that distribution. If the distribution is unimodal but skewed, you could replace m with the median and sd with the interquartile range of the distribution.



                    Plotting lines with different intercepts and slopes would allow you to see how the effect of plant productivity on expected plant biomass change depends on particular, representative values of temperature change. It's possible that some slopes will be positive, while others will be negative. In that case, you can note that the effect changes direction, etc.



                    Addendum:



                    If I understand @gung correctly, I think what you did was to re-express the first equation I wrote like so:



                    Expected plant biomass change = [b0 + b2*(plant productivity)] +
                    [b1 + b3*(plant productivity)]*(temperature change)



                    and then plot b1 + b3*(plant productivity) versus productivity to see how the rate of change in expected plant biomass change varies as a function of plant productivity. What is not clear to me though is how you computed the confidence band around b1 + b3*(plant productivity)? Did you compute the standard error (SE) of b1 + b3*(plant productivity) and then computed pointwise confidence bands via the formula b1 + b3*(plant productivity) +/- 1.96 SE? (The SE should take into account the correlation between b1 and b3). Or perhaps you used a critical value from a t-distribution instead of 1.96, with degrees of freedom given by the residual degrees of freedom?






                    share|cite|improve this answer











                    $endgroup$









                    • 1




                      $begingroup$
                      I interpret the OP's plot as follows: Each point on that line is the slope on the simple effect of temperature at the level of productivity specified on the x-axis.
                      $endgroup$
                      – gung
                      44 mins ago










                    • $begingroup$
                      @gung: Does my Addendum to the above capture what you think the OP's plot is showing? The OP stated that the coefficient plotted becomes more negative as biomass increases - but it should become more negative as plant productivity increases? That statement threw me off regarding what was actually being plotted.
                      $endgroup$
                      – Isabella Ghement
                      23 mins ago






                    • 1




                      $begingroup$
                      Yes. Confidence intervals for the slope of a simple effect can be computed at any point by the square root of the sum of the variances and 2*Cov(b1, b3), but I don't think that would address the simultaneity.
                      $endgroup$
                      – gung
                      12 mins ago










                    • $begingroup$
                      Thanks so much, @gung! 😊
                      $endgroup$
                      – Isabella Ghement
                      5 mins ago
















                    1












                    $begingroup$

                    Not quite sure I follow your argument. If both predictor variables in your model are assumed continuous, then the model summary should report an estimated intercept (b0), an estimated coefficient for temperature change (b1), an estimated coefficient for plant productivity (b2) and an estimated coefficient for the interaction between temperature change and plant productivity (b3). The summary of the model output will report these values in the column titled Estimate - since I don't know what they are, I called them b0, b1, b2 and b3. Thus, the expected (or average) plant biomass change can be expressed as:



                    Expected plant biomass change = b0 + b1*(temperature change) + b2*(plant productivity) + 
                    b3*(temperature change)*(plant productivity).


                    Because the model includes an interaction term, the effect of plant productivity on expected plant biomass change actually depends on temperature change. You can see this by re-arranging the above equation:



                    Expected plant biomass change = [b0 + b1*(temperature change)] + [b2 + b3*(temperature change)]*(plant productivity).


                    The intercept and slopes describing the relationship between plant productivity are given by:



                    Intercept: [b0 + b1*(temperature change)] 

                    Slope: [b2 + b3*(temperature change)]


                    For example, if the temperature change is zero degrees (Celsius?), then:



                    Expected plant biomass change = b0 + (b2 + b3)*(plant productivity).


                    As Peter suggested, you can choose several representative values for temperature change and then plot the corresponding lines obtained by substituting those representative values in the expressions of the above Intercept and Slope. Those lines would describe how the expected plant biomass change varies as a function of plant productivity.



                    To decide which representative values of temperature change to consider, you can plot the distribution of temperature changes observed in your study. If that distribution looks approximately normal, you can choose the average temperature change (m), as well as m - sd and m + sd, say, where sd is the standard deviation of that distribution. If the distribution is unimodal but skewed, you could replace m with the median and sd with the interquartile range of the distribution.



                    Plotting lines with different intercepts and slopes would allow you to see how the effect of plant productivity on expected plant biomass change depends on particular, representative values of temperature change. It's possible that some slopes will be positive, while others will be negative. In that case, you can note that the effect changes direction, etc.



                    Addendum:



                    If I understand @gung correctly, I think what you did was to re-express the first equation I wrote like so:



                    Expected plant biomass change = [b0 + b2*(plant productivity)] +
                    [b1 + b3*(plant productivity)]*(temperature change)



                    and then plot b1 + b3*(plant productivity) versus productivity to see how the rate of change in expected plant biomass change varies as a function of plant productivity. What is not clear to me though is how you computed the confidence band around b1 + b3*(plant productivity)? Did you compute the standard error (SE) of b1 + b3*(plant productivity) and then computed pointwise confidence bands via the formula b1 + b3*(plant productivity) +/- 1.96 SE? (The SE should take into account the correlation between b1 and b3). Or perhaps you used a critical value from a t-distribution instead of 1.96, with degrees of freedom given by the residual degrees of freedom?






                    share|cite|improve this answer











                    $endgroup$









                    • 1




                      $begingroup$
                      I interpret the OP's plot as follows: Each point on that line is the slope on the simple effect of temperature at the level of productivity specified on the x-axis.
                      $endgroup$
                      – gung
                      44 mins ago










                    • $begingroup$
                      @gung: Does my Addendum to the above capture what you think the OP's plot is showing? The OP stated that the coefficient plotted becomes more negative as biomass increases - but it should become more negative as plant productivity increases? That statement threw me off regarding what was actually being plotted.
                      $endgroup$
                      – Isabella Ghement
                      23 mins ago






                    • 1




                      $begingroup$
                      Yes. Confidence intervals for the slope of a simple effect can be computed at any point by the square root of the sum of the variances and 2*Cov(b1, b3), but I don't think that would address the simultaneity.
                      $endgroup$
                      – gung
                      12 mins ago










                    • $begingroup$
                      Thanks so much, @gung! 😊
                      $endgroup$
                      – Isabella Ghement
                      5 mins ago














                    1












                    1








                    1





                    $begingroup$

                    Not quite sure I follow your argument. If both predictor variables in your model are assumed continuous, then the model summary should report an estimated intercept (b0), an estimated coefficient for temperature change (b1), an estimated coefficient for plant productivity (b2) and an estimated coefficient for the interaction between temperature change and plant productivity (b3). The summary of the model output will report these values in the column titled Estimate - since I don't know what they are, I called them b0, b1, b2 and b3. Thus, the expected (or average) plant biomass change can be expressed as:



                    Expected plant biomass change = b0 + b1*(temperature change) + b2*(plant productivity) + 
                    b3*(temperature change)*(plant productivity).


                    Because the model includes an interaction term, the effect of plant productivity on expected plant biomass change actually depends on temperature change. You can see this by re-arranging the above equation:



                    Expected plant biomass change = [b0 + b1*(temperature change)] + [b2 + b3*(temperature change)]*(plant productivity).


                    The intercept and slopes describing the relationship between plant productivity are given by:



                    Intercept: [b0 + b1*(temperature change)] 

                    Slope: [b2 + b3*(temperature change)]


                    For example, if the temperature change is zero degrees (Celsius?), then:



                    Expected plant biomass change = b0 + (b2 + b3)*(plant productivity).


                    As Peter suggested, you can choose several representative values for temperature change and then plot the corresponding lines obtained by substituting those representative values in the expressions of the above Intercept and Slope. Those lines would describe how the expected plant biomass change varies as a function of plant productivity.



                    To decide which representative values of temperature change to consider, you can plot the distribution of temperature changes observed in your study. If that distribution looks approximately normal, you can choose the average temperature change (m), as well as m - sd and m + sd, say, where sd is the standard deviation of that distribution. If the distribution is unimodal but skewed, you could replace m with the median and sd with the interquartile range of the distribution.



                    Plotting lines with different intercepts and slopes would allow you to see how the effect of plant productivity on expected plant biomass change depends on particular, representative values of temperature change. It's possible that some slopes will be positive, while others will be negative. In that case, you can note that the effect changes direction, etc.



                    Addendum:



                    If I understand @gung correctly, I think what you did was to re-express the first equation I wrote like so:



                    Expected plant biomass change = [b0 + b2*(plant productivity)] +
                    [b1 + b3*(plant productivity)]*(temperature change)



                    and then plot b1 + b3*(plant productivity) versus productivity to see how the rate of change in expected plant biomass change varies as a function of plant productivity. What is not clear to me though is how you computed the confidence band around b1 + b3*(plant productivity)? Did you compute the standard error (SE) of b1 + b3*(plant productivity) and then computed pointwise confidence bands via the formula b1 + b3*(plant productivity) +/- 1.96 SE? (The SE should take into account the correlation between b1 and b3). Or perhaps you used a critical value from a t-distribution instead of 1.96, with degrees of freedom given by the residual degrees of freedom?






                    share|cite|improve this answer











                    $endgroup$



                    Not quite sure I follow your argument. If both predictor variables in your model are assumed continuous, then the model summary should report an estimated intercept (b0), an estimated coefficient for temperature change (b1), an estimated coefficient for plant productivity (b2) and an estimated coefficient for the interaction between temperature change and plant productivity (b3). The summary of the model output will report these values in the column titled Estimate - since I don't know what they are, I called them b0, b1, b2 and b3. Thus, the expected (or average) plant biomass change can be expressed as:



                    Expected plant biomass change = b0 + b1*(temperature change) + b2*(plant productivity) + 
                    b3*(temperature change)*(plant productivity).


                    Because the model includes an interaction term, the effect of plant productivity on expected plant biomass change actually depends on temperature change. You can see this by re-arranging the above equation:



                    Expected plant biomass change = [b0 + b1*(temperature change)] + [b2 + b3*(temperature change)]*(plant productivity).


                    The intercept and slopes describing the relationship between plant productivity are given by:



                    Intercept: [b0 + b1*(temperature change)] 

                    Slope: [b2 + b3*(temperature change)]


                    For example, if the temperature change is zero degrees (Celsius?), then:



                    Expected plant biomass change = b0 + (b2 + b3)*(plant productivity).


                    As Peter suggested, you can choose several representative values for temperature change and then plot the corresponding lines obtained by substituting those representative values in the expressions of the above Intercept and Slope. Those lines would describe how the expected plant biomass change varies as a function of plant productivity.



                    To decide which representative values of temperature change to consider, you can plot the distribution of temperature changes observed in your study. If that distribution looks approximately normal, you can choose the average temperature change (m), as well as m - sd and m + sd, say, where sd is the standard deviation of that distribution. If the distribution is unimodal but skewed, you could replace m with the median and sd with the interquartile range of the distribution.



                    Plotting lines with different intercepts and slopes would allow you to see how the effect of plant productivity on expected plant biomass change depends on particular, representative values of temperature change. It's possible that some slopes will be positive, while others will be negative. In that case, you can note that the effect changes direction, etc.



                    Addendum:



                    If I understand @gung correctly, I think what you did was to re-express the first equation I wrote like so:



                    Expected plant biomass change = [b0 + b2*(plant productivity)] +
                    [b1 + b3*(plant productivity)]*(temperature change)



                    and then plot b1 + b3*(plant productivity) versus productivity to see how the rate of change in expected plant biomass change varies as a function of plant productivity. What is not clear to me though is how you computed the confidence band around b1 + b3*(plant productivity)? Did you compute the standard error (SE) of b1 + b3*(plant productivity) and then computed pointwise confidence bands via the formula b1 + b3*(plant productivity) +/- 1.96 SE? (The SE should take into account the correlation between b1 and b3). Or perhaps you used a critical value from a t-distribution instead of 1.96, with degrees of freedom given by the residual degrees of freedom?







                    share|cite|improve this answer














                    share|cite|improve this answer



                    share|cite|improve this answer








                    edited 21 mins ago

























                    answered 51 mins ago









                    Isabella GhementIsabella Ghement

                    7,151320




                    7,151320








                    • 1




                      $begingroup$
                      I interpret the OP's plot as follows: Each point on that line is the slope on the simple effect of temperature at the level of productivity specified on the x-axis.
                      $endgroup$
                      – gung
                      44 mins ago










                    • $begingroup$
                      @gung: Does my Addendum to the above capture what you think the OP's plot is showing? The OP stated that the coefficient plotted becomes more negative as biomass increases - but it should become more negative as plant productivity increases? That statement threw me off regarding what was actually being plotted.
                      $endgroup$
                      – Isabella Ghement
                      23 mins ago






                    • 1




                      $begingroup$
                      Yes. Confidence intervals for the slope of a simple effect can be computed at any point by the square root of the sum of the variances and 2*Cov(b1, b3), but I don't think that would address the simultaneity.
                      $endgroup$
                      – gung
                      12 mins ago










                    • $begingroup$
                      Thanks so much, @gung! 😊
                      $endgroup$
                      – Isabella Ghement
                      5 mins ago














                    • 1




                      $begingroup$
                      I interpret the OP's plot as follows: Each point on that line is the slope on the simple effect of temperature at the level of productivity specified on the x-axis.
                      $endgroup$
                      – gung
                      44 mins ago










                    • $begingroup$
                      @gung: Does my Addendum to the above capture what you think the OP's plot is showing? The OP stated that the coefficient plotted becomes more negative as biomass increases - but it should become more negative as plant productivity increases? That statement threw me off regarding what was actually being plotted.
                      $endgroup$
                      – Isabella Ghement
                      23 mins ago






                    • 1




                      $begingroup$
                      Yes. Confidence intervals for the slope of a simple effect can be computed at any point by the square root of the sum of the variances and 2*Cov(b1, b3), but I don't think that would address the simultaneity.
                      $endgroup$
                      – gung
                      12 mins ago










                    • $begingroup$
                      Thanks so much, @gung! 😊
                      $endgroup$
                      – Isabella Ghement
                      5 mins ago








                    1




                    1




                    $begingroup$
                    I interpret the OP's plot as follows: Each point on that line is the slope on the simple effect of temperature at the level of productivity specified on the x-axis.
                    $endgroup$
                    – gung
                    44 mins ago




                    $begingroup$
                    I interpret the OP's plot as follows: Each point on that line is the slope on the simple effect of temperature at the level of productivity specified on the x-axis.
                    $endgroup$
                    – gung
                    44 mins ago












                    $begingroup$
                    @gung: Does my Addendum to the above capture what you think the OP's plot is showing? The OP stated that the coefficient plotted becomes more negative as biomass increases - but it should become more negative as plant productivity increases? That statement threw me off regarding what was actually being plotted.
                    $endgroup$
                    – Isabella Ghement
                    23 mins ago




                    $begingroup$
                    @gung: Does my Addendum to the above capture what you think the OP's plot is showing? The OP stated that the coefficient plotted becomes more negative as biomass increases - but it should become more negative as plant productivity increases? That statement threw me off regarding what was actually being plotted.
                    $endgroup$
                    – Isabella Ghement
                    23 mins ago




                    1




                    1




                    $begingroup$
                    Yes. Confidence intervals for the slope of a simple effect can be computed at any point by the square root of the sum of the variances and 2*Cov(b1, b3), but I don't think that would address the simultaneity.
                    $endgroup$
                    – gung
                    12 mins ago




                    $begingroup$
                    Yes. Confidence intervals for the slope of a simple effect can be computed at any point by the square root of the sum of the variances and 2*Cov(b1, b3), but I don't think that would address the simultaneity.
                    $endgroup$
                    – gung
                    12 mins ago












                    $begingroup$
                    Thanks so much, @gung! 😊
                    $endgroup$
                    – Isabella Ghement
                    5 mins ago




                    $begingroup$
                    Thanks so much, @gung! 😊
                    $endgroup$
                    – Isabella Ghement
                    5 mins ago


















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