Data Mining

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description

Data Mining. Data Mining. Data Mining. Data Mining. Data Mining. Data Mining. Data Mining. Data Mining. One Possible Solution. Iris Flower. Iris Flower. Data Mining. Data Mining. Data Mining. Creating Trees. Creating Trees. Creating Trees. Creating Trees. Creating Trees. - PowerPoint PPT Presentation

Transcript of Data Mining

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Data Mining

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Data Mining

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Data Mining

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Data Mining

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Data Mining

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One Possible Solution

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Iris Flower

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Iris Flower

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Data Mining

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Data Mining

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Data Mining

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Creating Trees

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Creating Trees

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Creating Trees

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Creating Trees

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Creating Trees

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Artificial Neural Networks

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Swarm Intelligence

In a Bee Colony, who knows the blue print of the nest? The queen or hive?

In a Termite Nest knows the blue print of the nest?

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Self-organizing processes exhibit emergent properties. The resulting structures appear to be more complex than what could be provided by

individual contributions. Given a connected, undirected graph, a spanning tree of that graph is a subgraph

that is a tree and connects all the vertices together A minimum spanning tree (MST) or minimum weight spanning tree is then a

spanning tree with weight less than or equal to the weight of every other spanning tree. http://en.wikipedia.org/wiki/Minimum_spanning_tree

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Double Bridge Experiments (Real Ants)

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Expert Systems