Simple Starting Point
1. Drag the Order Date Dimension to the Columns shelf.
2. Drag the Sales, Profie, and Quantity Dimensions to the Rows shelf.
3. Notice that the resulting line graphs are displayed in three rows, rather than all on the same graph with a common y-axis scale.
Common frustration
Once you connect to a dataset in Tableau and start placing Dimensions and Measures on Rows and Columns shelves, Tableau has a sometimes-frustrating habit of spreading them out in individual rows and columns rather than layering them on top of each other. This creates at least three problems:
• It can be counter intuitive and difficult to actually compare anything to anything else. And what are data analysis and visual analytics for, if not for comparing things?
• The y-axis scale is different for each row, making direct comparison impossible.
• Before long, the visualizations become unreadable because Tableau has to shrink all those rows and columns to fit on screen, as in the illustration at the top of
http://stevensanne.com/tableau-woes-part-1/.
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In this workbook, we will explore strategies for increasing the dimensionality of Tableau visualizations and avoiding the problem above.
Measure Values (what’s that mean and where did it come from?)
Use the Measure Values and Measure Names, two Calculated Fields that Tableau automatically generates when it connects to a data set. Think of Measure Values as being all the Measure variables grouped together.
1. Drag the Order Date pill from the Dimensions area to the Columns shelf.
2. Instead of dragging individual Measures (i.e. variables) to the Rows shelf, drag the Measure Values pill from the Measures area to the Rows shelf instead.
3. The Measure Values Card automatically opens below the Marks card, listing all the Measures.
4. The visualization will look wierd until you drag the SUM(Number of Records) Measure out of the card (alternatively, right click the SUM(Number of Records) pill and click "Remove").
5. Continue deleting any Measures you don’t want in the viz by dragging them to the side or right clicking on the Measure and selecting Remove (from the Measure Values card, not the original Measures list on the far left).
6. Tableau automatically throws a Measure Names pill into the Marks Card. Think of Measure Names as being the names of all the Measures, grouped together. Drag it onto colour in order to create a colour legend.
Blending axes
Another way to do pretty much the same thing:
1. Drag one Measure, such as Sales, to the Rows Shelf and Order Date to the Columns Shelf.
2. Instead of dragging other Measures to the Rows Shelf, drag them one at a time to the y-axis of the viz. Tableau automatically places Measure Values on the Rows Shelf and opens the Measure Values Card, creating the same end result as the example from the previous tab.
Dual axes
A third way to combine variables is to create a Dual Axis viz. But this only works for a maximum of two variables.
1. Drag Sales and Profit to the Rows Shelf, as before.
2. Drag Order Date to the Columns Shelf, as before.
3. Right click on the second pill on the Rows Shelf and choose Dual Axis from the menu. This creates a single viz with two line graphs. The Sales and Profit pills now look like they are joined together in the centre, indicating that they are Dual Axis.
4. The problem is that the two y-axes are not calibrated the same. It is necessary to right click on the second y-axis and select Synchonize Axis.
5. The appearance of each Measure (Sales and Profit) can be controlled from its own Marks Card. For example, selecting the SUM(Sales) Card will expand it. From there, you can select another graph type, such as Bars, from the menu.
6. Drag Product Category to Colour to turn the Sales Bars into Stacked Bars.
Superstore
Assignment 2 of JRNL 520H, 2016
(Updated 24 Sep 2016)
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Æ
Source
: This workbook is based on instructions developed by Anne Stevens. Tweaks were made to the instructions by Caitlin Havlak to clarify ambiguities, update for Tableau 10 and develop into a Tableau workbook.
http://stevensanne.com/tableau-woes-part-1/
Initial Instructions:
1. Before we can start, we need to connect data to Tableau. Note that you will need to go to this "Introduction" tab to return to these instructions when you have finished connecting the data if you are not automatically redirected here.
2. Click the "Start Page" button in the top left corner of the window, with the Tableau logo. (In this case you do not want to click on the "Data Source" tab in the lower left, since you want to use a built-in data source rather than load data from a file.)
3. On the bottom of the left sidebar, click "Sample-Superstore". This is a sample dataset provided by Tableau.
4. Click on the next tab (O. The Sprawl) to get started with the assignment
Note: the Superstore dataset is a large dataset with many variables. You may find that you need to scroll to see all of the variables in the Dimensions and Measures areas of the worksheet, depending on the size of your display.
[Sample - Superstore (copy)].[yr:Order Date:ok]
[Sample - Superstore].[:Measure Names]
[Sample - Superstore].[yr:Order Date:ok]
[Sample - Superstore].[:Measure Names]
[Sample - Superstore].[yr:Order Date:ok]
[Sample - Superstore].[none:Category:nk]
[Sample - Superstore].[yr:Order Date:ok]
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