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Analyzing the performance of different clustering algorithms with increasing dimensions #14

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sree0917 opened this issue Dec 9, 2019 · 0 comments

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@sree0917
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sree0917 commented Dec 9, 2019

Aim: Testing how the performance of different clustering algorithms for different datasets change on adding noise with different dimensions:

To be done: A jupyter notebook documentation describing the effect of the addition of different dimensions of noise on a dataset. Here different types of synthetic datasets are generated on which the experiment is performed. To these datasets gaussian noise of different dimensions are added, and the performance of each clustering algorithm is measured after noise addition. This is repeated for noise with different variances.

Expected output: The plots that compare the effect of varying noise dimensions on different clustering algorithms for each of the datasets. In this set of subplots, the variance of the added noise changes along the column and the dataset changes along the row.

@sree0917 sree0917 closed this as completed Dec 9, 2019
@sree0917 sree0917 reopened this Dec 9, 2019
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