DataSet Construction: Difference between revisions

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imported>Mathias
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Alternatively this can be acheived by dragging the desired file into the Workspace Browser.  In the case of text based file formats such as CSV, this will launch the following window.   
Alternatively this can be acheived by dragging the desired file into the Workspace Browser.  In the case of text based file formats such as CSV, this will launch the following window.   


[[Image:Text_Import.jpg|||Scores Plot on Image]]
[[Image:Text Import.jpg|||Scores Plot on Image]]


==From the MATLAB Command Line==
==From the MATLAB Command Line==

Revision as of 11:03, 23 May 2016

Getting Started

In general, data is stored in a dataset object.



From a GUI

Using PLS_Toolbox and Solo, it is easy to import data into a dataset object using the data importer. From the workspace browser select File/Import Data to launch the GUI.


Alternatively this can be acheived by dragging the desired file into the Workspace Browser. In the case of text based file formats such as CSV, this will launch the following window.

Scores Plot on Image

From the MATLAB Command Line

From the command line, the easiest way to create a dataset is to pass an array to the dataset function. First we will create an array of data to be passed to the dataset function.

>> t    = [0:0.1:10]';
>> x    = [cos(t) sin(t) exp(-t)];
>> data = dataset(x)
 
data = 
       name: x
       type: data 
       date: 23-May-2016 11:24:53
    moddate: 23-May-2016 11:24:53
       data: 101x3 [double]
      label: {2x1} [array (char)]
               Mode 1  [: ] 
               Mode 2  [: ] 
  axisscale: {2x1} [vector (real)] (axistype)
               Mode 1  [: ] (none) 
               Mode 2  [: ] (none) 
      title: {2x1} [vector (char)]
               Mode 1  [: ] 
               Mode 2  [: ] 
      class: {2x1} [vector (double)]
               Mode 1  [: ] 
               Mode 2  [: ] 
    classid: {2x1} [cell of strings]
    include: {2x1} [vector (integer)]
               Mode 1  [: 1x101] 
               Mode 2  [: 1x3]   
    history: {1x1 cell} [array (char)]
      OTHER: [View Class Summary]

Alternatively we could start with an empty dataset and assign the the array x to its data field.

newdata = dataset;
newdata.data = x;

Similarly we may set the other fields of the dataset object individually.

vars = {'cos(t)';'sin(t)';'exp(-t)'};
newdata.author   = 'Data Manager';        %sets the author field
newdata.label{2} = vars;                  %sets the labels for columns = dimension 2
newdata.labelname{2} = 'Variables';       %sets the name of the label for columns
newdata.axisscale{1} = t;                 %sets the axis scale for rows = dimension 1
newdata.axisscalename{1} = 'Time';        %sets the name of the axis scale for rows
newdata.title{1}         = 'Time (s)';    %sets the title for rows
newdata.titlename{1}     = 'Time Axis';   %sets the titlename for rows
newdata.title{2} = 'f(t)';                %sets the title for columns
newdata.titlename{2} = 'Functions';       %sets the titlename for columns

Creating 3-Way Data

Perhaps the easiest way to import 3-way data is to use the import data GUI.