Decreasing false negative classification rate in a balanced dataset
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I have a balanced dataset for a multiclass classification problem with one high-priority label (this ought to be classified properly at all costs). How do I go about creating a workflow for this problem? What specific feature engineering/selection methods and classifiers should I be considering for this problem? The data (including labels) is anonymized, so I have no way of knowing what it all stands for.
classification feature-engineering multiclass-classification
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add a comment |
$begingroup$
I have a balanced dataset for a multiclass classification problem with one high-priority label (this ought to be classified properly at all costs). How do I go about creating a workflow for this problem? What specific feature engineering/selection methods and classifiers should I be considering for this problem? The data (including labels) is anonymized, so I have no way of knowing what it all stands for.
classification feature-engineering multiclass-classification
$endgroup$
add a comment |
$begingroup$
I have a balanced dataset for a multiclass classification problem with one high-priority label (this ought to be classified properly at all costs). How do I go about creating a workflow for this problem? What specific feature engineering/selection methods and classifiers should I be considering for this problem? The data (including labels) is anonymized, so I have no way of knowing what it all stands for.
classification feature-engineering multiclass-classification
$endgroup$
I have a balanced dataset for a multiclass classification problem with one high-priority label (this ought to be classified properly at all costs). How do I go about creating a workflow for this problem? What specific feature engineering/selection methods and classifiers should I be considering for this problem? The data (including labels) is anonymized, so I have no way of knowing what it all stands for.
classification feature-engineering multiclass-classification
classification feature-engineering multiclass-classification
asked 1 min ago
mallochiomallochio
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2615
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