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Hi ,
My requirement is dynamically switch between different demographic categories using the slicer, display their proportions over time on the line chart, and add a reference line to show the gap for the selected category. I would like to see two lines one for young and one for muture with year on x axis, parameter on Legend and Proportion on Y axis. I have created the table parameter for all the demographics categories lets say for example:
Solved! Go to Solution.
Hi @Anonymous
I have tested your problem and your code seems to be fine. The key to the problem lies in the creation of visual objects.
I suggest you create two visual objects that show the data corresponding to different parameters.
Select "Gender"
Select "Age"
Select "line chart", "Year" in the x axis, "SelectedCategoryProportion" into the y axis.
It should be noted that "Gender" and "Age" are placed into the "Small multiples" of the two visual objects respectively.
At the same time, you can adjust the visual object to two rows and one column.
Regards,
Nono Chen
If this post helps, then please consider Accept it as the solution to help the other members find it more quickly.
Hi @Anonymous
I have tested your problem and your code seems to be fine. The key to the problem lies in the creation of visual objects.
I suggest you create two visual objects that show the data corresponding to different parameters.
Select "Gender"
Select "Age"
Select "line chart", "Year" in the x axis, "SelectedCategoryProportion" into the y axis.
It should be noted that "Gender" and "Age" are placed into the "Small multiples" of the two visual objects respectively.
At the same time, you can adjust the visual object to two rows and one column.
Regards,
Nono Chen
If this post helps, then please consider Accept it as the solution to help the other members find it more quickly.
Can you provide some sample data or pbix file? The cause cannot be determined because the model and context are not clear.
Thanks for looking into this. Please below table for your rererence:
Age | Gender | Proportion | Year | Gap age | YoungProportion | MatureProportion | MaleProportion | FemaleProportion |
Mature | Female | 7.20% | 2015/16 | 8.60% | 0.157723577 | 0.071726893 | 0.080260304 | 0.071726893 |
Mature | Male | 8.00% | 2015/16 | 8.80% | 0.168731563 | 0.080260304 | 0.080260304 | 0.071726893 |
Mature | Female | 8.40% | 2016/17 | 8.50% | 0.16861167 | 0.083595922 | 0.07884097 | 0.083595922 |
Mature | Male | 7.90% | 2016/17 | 8.60% | 0.165222415 | 0.07884097 | 0.07884097 | 0.083595922 |
Mature | Other | 0.00% | 2016/17 | 0.00% | 0 | 0 | 0.07884097 | 0.083595922 |
Young | Female | 15.80% | 2015/16 | 8.60% | 0.157723577 | 0.071726893 | 0.168731563 | 0.157723577 |
Young | Male | 16.90% | 2015/16 | 8.80% | 0.168731563 | 0.080260304 | 0.168731563 | 0.157723577 |
Young | Female | 16.90% | 2016/17 | 8.50% | 0.16861167 | 0.083595922 | 0.165222415 | 0.16861167 |
Young | Male | 16.50% | 2016/17 | 8.60% | 0.165222415 | 0.07884097 | 0.165222415 | 0.16861167 |
Young | Other | 0.00% | 2016/17 | 0.00% | 0 | 0 | 0.165222415 | 0.16861167 |
Thanks for looking into this. Please below table for your rererence:
Age | Gender | Proportion | Year | Gap age | YoungProportion | MatureProportion | MaleProportion | FemaleProportion |
Mature | Female | 7.20% | 2015/16 | 8.60% | 0.157723577 | 0.071726893 | 0.080260304 | 0.071726893 |
Mature | Male | 8.00% | 2015/16 | 8.80% | 0.168731563 | 0.080260304 | 0.080260304 | 0.071726893 |
Mature | Female | 8.40% | 2016/17 | 8.50% | 0.16861167 | 0.083595922 | 0.07884097 | 0.083595922 |
Mature | Male | 7.90% | 2016/17 | 8.60% | 0.165222415 | 0.07884097 | 0.07884097 | 0.083595922 |
Mature | Other | 0.00% | 2016/17 | 0.00% | 0 | 0 | 0.07884097 | 0.083595922 |
Young | Female | 15.80% | 2015/16 | 8.60% | 0.157723577 | 0.071726893 | 0.168731563 | 0.157723577 |
Young | Male | 16.90% | 2015/16 | 8.80% | 0.168731563 | 0.080260304 | 0.168731563 | 0.157723577 |
Young | Female | 16.90% | 2016/17 | 8.50% | 0.16861167 | 0.083595922 | 0.165222415 | 0.16861167 |
Young | Male | 16.50% | 2016/17 | 8.60% | 0.165222415 | 0.07884097 | 0.165222415 | 0.16861167 |
Young | Other | 0.00% | 2016/17 | 0.00% | 0 | 0 | 0.165222415 | 0.16861167 |
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