GoSOM2
| 'Using Self Organizing Maps to categorize arbitrary text' | ![]() |
| 1. Concept of Self Organizing Maps | ![]() |
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1.1. What is a SOM? Analysis of similarities, grouping similar things. |
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| Clustering Classification Topology Dimension Reduction |
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| Artificial Intelligence Not a neuronal network, no teaching input needed for training. |
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1.2. Example use cases Protein 3d structure |
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| HIV classification |
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2. Document Vectors 2.1. What is similarity of texts |
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Word Distribution 2.2. Code example
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2.3. Dimension Reduction Almost infinite number of languages |
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| 2.3.2. Low Dimension (Constant) Random Matrix Multiplication |
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| Document Vector | ![]() |
| Teuvo Kohonen (born July 11, 1934) Finnish academican |
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| cell |
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| neighbourhood of the cells | ![]() |
| eigenvector | ![]() |
| winner | ![]() |
| Elastic grid | ![]() |
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3.1. Examples 3.1.1. 2d Grid unfolding 3.1.1.1. Square unfolding |
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3.1.1.2. Triangle unfolding |
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| 3.1.1.3. Topological defect | ![]() |
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3.2. Code example
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3. Live Demo 3.1. Gutenberg Texts Texts swim on the map 4.1. Problems 4.1.1. Problems with large amounts of text 4.1.2. Problem with definition of similarity for text Two level decument vector generation 4.2. References 4.2.1. WEBSOM 5. Thanks |
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