Tags
#deeplearning #embeddings #nlp
Question
Describe 2 shortcomings in using one-hot encoding of Categorical Variables
Answer
- When we have many high cardinality features one-hot encoding often results in an unrealistic amount of computational resource requirement.
- It treats different values of categorical variables completely independent of each other and often ignores the informative relations between them.
Tags
#deeplearning #embeddings #nlp
Question
Describe 2 shortcomings in using one-hot encoding of Categorical Variables
Tags
#deeplearning #embeddings #nlp
Question
Describe 2 shortcomings in using one-hot encoding of Categorical Variables
Answer
- When we have many high cardinality features one-hot encoding often results in an unrealistic amount of computational resource requirement.
- It treats different values of categorical variables completely independent of each other and often ignores the informative relations between them.
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owner:
ronaldokun - (no access) - Entity Embeddings as Categorical Variables , p1
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