Difference between revisions of "Sugar Labs/SOM"

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== Kohonen Self Organising Maps ==
 
== Kohonen Self Organising Maps ==
  
 
[[Image:SOM_legend.jpg|thumb|172px|Legend]]
 
[[Image:SOM_legend.jpg|thumb|172px|Legend]]
Self Organising Maps (SOMs) can act as 2D spatial summariser visualisations of multidimensional data. In the maps shown here, text distance metrics are generated from the weekly/monthly content on some of the more active mailing lists. Using a geographic like landscape metaphor, the height (colour gradient) indicates features with strong associations to all other features; proximity represents association between specific features (e.g. related words), and label size is a rough guide to basic frequency of a feature. There are many "correct" map layouts for the same set of data, each map generation will usually settle into a slightly different set of local minima, but the associations are no less valid for each. After removing linguistic junk words, and word stemming, the maps currently pick the weeks/months top ~200 features by frequency. Each is a continuous surface and wraps around north/south and east/west (surface of a torus), so if you find an interesting label to one side, remember to check it's neighbours on the opposite side.
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Self Organising Maps (SOMs) can be used as 2d spatial summariser visualisations of multidimensional data. In the maps shown here, text distance metrics are generated from the weekly/monthly content on some of the more active mailing lists. Using a geographic like landscape metaphor, the height (colour gradient) indicates features with strong associations to all other features; proximity represents association between specific features (e.g. related terms), and label size indicates guide to basic frequency of a feature. There are many "correct" 2d map layouts for the same set of data (due to the multidimensional nature of the data), each map generation will usually settle into a slightly different set of local minima, but the associations are no less valid for each. After removing linguistic junk words, and word stemming, the maps currently pick the weeks/months top ~200 features by frequency. Each map is a continuous, tillable surface, and wraps around north/south and east/west (surface of a torus); so if you find an interesting label to one edge, remember to check it's neighbours on the opposite side.
  
 
== What Do They Show? ==
 
== What Do They Show? ==
  
Well, you could just treat them like tag clouds, showing the top 200 word features used on the list for a given week/month, but the maps also hold spacial information. Word features that appear close together on the map were used closely (on average) in text content from the list. A height metaphor is also used to indicate the features with the strongest mean associations - the map auto centres on the highest pink peak features, these words have the strongest associations with all the rest of the features on the map; word features in the blue and green areas have weaker mean associations relative to the pink highs, but should not be considered negatively as they will often be tightly associated with surrounding neighbours.
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Well, you could just treat them as tag clouds, showing the top two hundred word features used on the mail-list for a given week/month, but the maps also hold spacial information that provides context. Word features that appear close together on the map were used closely (on average) in email content from the mail-list. A height metaphor is used to indicate the combination of feature association strength and feature frequency; word features in the blue and green areas have weaker mean associations and frequency relative to the hot orange and pink highs, but should not be considered negatively as they are still in the top ~200 terms, and will often be tightly associated with surrounding neighbours.
  
== It's An Education Project Mailing List (Weekly) ==
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== SOM Related Research Papers ==
  
<gallery>
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[[Image:Teemu_leinonen_som_learning_som.jpg|thumb|220px|Self-Organizing Maps and Constructive Learning SOM from text.]]
Image:2008-July-05-11-som.jpg|2008 July 5th to 11th
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[http://www2.uiah.fi/~tleinone/teemu_leinonen_som_learning.pdf Self-Organizing Maps and Constructive Learning (PDF)] Honkela T., Leinonen T., Lonka K., Raike A. (2000): Self-Organizing Maps and Constructive Learning. Proceedings of ICEUT'2000, International Conference on Educational Uses of Communication and Information Technologies, Beijing, China. August 21-25, 2000, pp. 339-343.
Image:2008-June-28-July-4-som.jpg|2008 June 28th to July 4th
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:''In this article, the use of the self-organizing map (SOM) is approached on the basis of current theories of learning. Possibilities of computer and networked platforms that aim at helping human learning are also inspected. It is shown how the SOM can be considered a model of constructive learning. The area of constructive learning is outlined and two cases of using the self-organizing map in computer supported learning environments are presented.''
Image:2008-June-21-27-som.jpg|2008 June 21st to 27th
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<br clear="all"/>
Image:2008-June-14-20-som.jpg|2008 June 14th to 20th
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Image:2008-June-07-13-som.jpg|2008 June 7th to 13th
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== It's An Education Project Mailing List ==
Image:2008-May-31-June-06-som.jpg|2008 May 31st to June 6th
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Image:2008-May-24-30-som.jpg|2008 May 24th to 30th
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Monthly maps generated with posts from the [http://lists.sugarlabs.org/listinfo/iaep IAEP mailing list]. Most recent maps shown first - for older maps please see the [[Sugar_Labs/SOM/IAEP|IAEP map history map archive]] page.
Image:2008-May-17-23-som.jpg|2008 May 17th to 23rd
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Image:2008-May-10-16-som.jpg|2008 May 10th to 16th
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<gallery widths="275" heights="150" perrow="2">
Image:2008-May-01-09-som.jpg|2008 May 1st to 9th
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File:2012-July-som.png|'''2012 July''' (31 emails)
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File:2012-June-som.png|'''2012 June''' (81 emails)
 
</gallery>
 
</gallery>
  
== Sugar Mailing List (Monthly) ==
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== Sugar Mailing List ==
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Monthly maps generated with posts from the [http://lists.laptop.org/listinfo/sugar Sugar mailing list]. Most recent maps shown first - for older maps see the [[Sugar_Labs/SOM/Sugar|Sugar map history]] page.
  
 
<gallery>
 
<gallery>
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Image:2009-April-Sugar devel som.jpg|'''2009 April'''
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Image:2009-March-Sugar-devel-som.jpg|'''2009 March'''
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Image:2009-February-Sugar-devel-som.jpg|'''2009 February'''
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Image:2009-January-Sugar-devel-som.jpg|'''2009 January'''
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Image:2008-December-Sugar-devel-som.jpg|'''2008 December'''
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Image:2008-November-Sugar-devel-som.jpg|'''2008 November'''
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Image:2008-October-Sugar-devel-som.jpg|'''2008 October'''
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Image:2008-September-Sugar-devel-som.jpg|'''2008 September'''
 
</gallery>
 
</gallery>
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== Technology in Education Academic Research Papers ==
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A selection of SOMs for technology in education [http://wiki.laptop.org/go/Academic_papers research papers] relating to the One Laptop Per Child project can be found on the laptop.org wiki.
  
 
== Future ==
 
== Future ==
  
The mapping algorithms and visualisation style will continue to be refined, details will be posted here on any significant modifications. The code base was originally designed for bulk text documents from a single author, tested on works of literature from Project Gutenberg.
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The mapping algorithms and visualisation style will continue to be refined, details will be posted on any significant modifications (see comments under images for changes). The code base was originally designed for bulk text documents from a single author, tested on works of literature from Project Gutenberg.

Latest revision as of 21:23, 6 August 2012

Kohonen Self Organising Maps

Legend

Self Organising Maps (SOMs) can be used as 2d spatial summariser visualisations of multidimensional data. In the maps shown here, text distance metrics are generated from the weekly/monthly content on some of the more active mailing lists. Using a geographic like landscape metaphor, the height (colour gradient) indicates features with strong associations to all other features; proximity represents association between specific features (e.g. related terms), and label size indicates guide to basic frequency of a feature. There are many "correct" 2d map layouts for the same set of data (due to the multidimensional nature of the data), each map generation will usually settle into a slightly different set of local minima, but the associations are no less valid for each. After removing linguistic junk words, and word stemming, the maps currently pick the weeks/months top ~200 features by frequency. Each map is a continuous, tillable surface, and wraps around north/south and east/west (surface of a torus); so if you find an interesting label to one edge, remember to check it's neighbours on the opposite side.

What Do They Show?

Well, you could just treat them as tag clouds, showing the top two hundred word features used on the mail-list for a given week/month, but the maps also hold spacial information that provides context. Word features that appear close together on the map were used closely (on average) in email content from the mail-list. A height metaphor is used to indicate the combination of feature association strength and feature frequency; word features in the blue and green areas have weaker mean associations and frequency relative to the hot orange and pink highs, but should not be considered negatively as they are still in the top ~200 terms, and will often be tightly associated with surrounding neighbours.

SOM Related Research Papers

Self-Organizing Maps and Constructive Learning SOM from text.

Self-Organizing Maps and Constructive Learning (PDF) Honkela T., Leinonen T., Lonka K., Raike A. (2000): Self-Organizing Maps and Constructive Learning. Proceedings of ICEUT'2000, International Conference on Educational Uses of Communication and Information Technologies, Beijing, China. August 21-25, 2000, pp. 339-343.

In this article, the use of the self-organizing map (SOM) is approached on the basis of current theories of learning. Possibilities of computer and networked platforms that aim at helping human learning are also inspected. It is shown how the SOM can be considered a model of constructive learning. The area of constructive learning is outlined and two cases of using the self-organizing map in computer supported learning environments are presented.


It's An Education Project Mailing List

Monthly maps generated with posts from the IAEP mailing list. Most recent maps shown first - for older maps please see the IAEP map history map archive page.

Sugar Mailing List

Monthly maps generated with posts from the Sugar mailing list. Most recent maps shown first - for older maps see the Sugar map history page.

Technology in Education Academic Research Papers

A selection of SOMs for technology in education research papers relating to the One Laptop Per Child project can be found on the laptop.org wiki.

Future

The mapping algorithms and visualisation style will continue to be refined, details will be posted on any significant modifications (see comments under images for changes). The code base was originally designed for bulk text documents from a single author, tested on works of literature from Project Gutenberg.