Prepare tasks for computer practice of the Data Mining course.

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Topics of the tasks should be as follows:

- Association rule mining

* Count frequent itemsets

* Mining association rules

- Classification

* Building decision trees (including learning)

* kNN classification

* Evaluation of classification quality (accuracy, precision, recall, F-measure)

- Clustering

* k-Means

* Fuzzy c-Means

* Hierarchical clustering.

Each topic should include 3 tasks, supposing their increasing difficulty and timing to implement (i.e. trivial, easy, complex).

Task should consist of the following elements:

- Scenario (description of some subject domain, input and output)

- Dataset(s)

- (KNIME or WEKA) workflow that implements given task (need to be done only after approving the scenario and dataset(s)).

Scenario and dataset(s) of the task should be relevant to Industry 4.0 topic (at least in easy and complex tasks; i.e. task should be about mining some machinery/sensor/plant etc. data)..

Extração de Dados

ID do Projeto: #20072106

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4 propostas Projeto remoto Ativo em há 4 anos

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wael100

Hi I had a PhD in computer science. My area of expertise is data mining. I think I can help you. Please contact me. Many thanks.

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utkarshkatiyar19

Hi I'm an expert in data mining. I'm sure that I can easily do this project. We can have a chat about it. Thanks..

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Sindustrus

Hi, I am a enthusiastic freelancer and have a bunch of experience in doing projects related to your skill. You can check my profile. Please consider

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jerome74

I am working on my PhD on financials and have huge expertise working on data and mining and prediction modelling. I myself looking at how to improvise my thesis with advanced analytical techniques. I would like to take Mais

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