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technik's user avatar
technik
  • Member for 1 year, 9 months
  • Last seen more than a week ago
3 votes

Which database to use for storing machine learning data?

1 vote

Does PCA helps to include all the variables even if there is high collinearity among variables?

1 vote

Why are neural networks equivalent to kernel methods?

1 vote

What are the differences among Proper Orthogonal Decomposition (POD), Singular value decomposition (SVD) and principal component analysis (PCA)?

1 vote

Twitter Sentiment Analysis: problem in predicting

1 vote

What are popular deep learning models for tabular data of texts?

1 vote
Accepted

Can a Transformers be used for a classification problem?

1 vote
Accepted

Why does SVM considered as discriminative model?

1 vote

What is Data Lake?

1 vote

How to categorise customer complaint using NLP

1 vote
Accepted

Auto-Encoder/Decoder - Generic Swapping Model

1 vote

Best way to deploy and Schedule Deep Learning Model

1 vote

Batch-driven or event-driven ETL

1 vote

Stemming/lemmatization for German words

0 votes

Detecting grammatical errors with BERT

0 votes

k-means clustering or classification?

0 votes

Is the decision tree the right choice to classify for this dataset?

0 votes

Can CNNs detect features of different images?

0 votes

Lemmatization Vs Stemming

0 votes

Sentiment Analysis of Movie Reviews using Python

0 votes

Artificial Intelligence trends and topics

0 votes

Disadvantage of decision tree

0 votes

Do neural networks have explainability like decision trees do?

0 votes

CNN for image classification with two outputs

0 votes

Do I need to train a separate DeepFake model for every input person?

0 votes
Accepted

Sentiment analysis of tweets (Train model on a labelled dataset and use on some other unlabelled data)

0 votes

Machine Learning resources

0 votes

Why is random forest an improvement of decision tree?

0 votes

How to multi label text Classification using Deep learning

0 votes

Get the keywords from positive and negative reviews