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Dimensionality Reduction
High dimensions Machine learning Visualization T-SNE PCA
+6
  1. Go to item
    Workflow
    Semi Supervised Clustering
    T-SNE Clustering Dimensionality Reduction
    +3
    Visualize a table with t-SNE and cluster using k-means and hierarchical clustering.
    aaron_hart > Public > supervised-clustering
    2
  2. Go to item
    Workflow
    Mixing Deep Learning with XGBoost
    Deep Learning Machine Learning XGBoost
    +11
    This workflow shows how to train an XGBoost based image classifier that uses a pretrained convolutional neural network to extract…
    christian.birkhold > My Sandbox > Mixing_DL_with_XGBoost
    1
  3. Go to item
    Workflow
    Techniques for Dimensionality Reduction
    ETL Big data Data preprocessing
    +11
    This workflow performs classification on data sets that were reduced using the following dimensionality reduction techniques: - L…
    knime > Examples > 04_Analytics > 01_Preprocessing > 02_Techniques_for_Dimensionality_Reduction > 02_Techniques_for_Dimensionality_Reduction
    1
  4. Go to item
    Workflow
    Dimensionality Reduction with PCA and t-SNE
    TheGuideBook Scatter plot PCA
    +4
    This workflow applyes two dimensionality reduction techniques: -PCA -t-SNE to reduce the dataset dimensions from three to two fea…
    knime > Academic Alliance > Guide to Intelligent Data Science > Example Workflows > Chapter4 > 02_PCA_t-SNE
    0
  5. Go to item
    Workflow
    Dimensionality reduction
    High dimensions Dimensionality reduction Machine learning
    +1
    This workflow illustrates easy and common technique how to lower the high dimensional data by using simple method.
    barbora > Courses > L4-DV Codeless Data Exploration and Visualization_06.2021 > L4-DV Codeless Data Exploration and Visualization - Exercises > exercises > 03a. DimensionalityReduction
    0
  6. Go to item
    Workflow
    Dimensionality reduction
    High dimensions Dimensionality reduction Machine learning
    +1
    This workflow illustrates easy and common technique how to lower the high dimensional data by using simple method.
    barbora > Courses > L4-DV Codeless Data Exploration and Visualization_06.2021 > L4-DV Codeless Data Exploration and Visualization - Demos > Demos empty > Session_03a_dimensionality reduction_empty
    0
  7. Go to item
    Workflow
    Dimensionality reduction
    High dimensions Dimensionality reduction Machine learning
    +1
    This workflow illustrates easy and common technique how to lower the high dimensional data by using simple method.
    barbora > Courses > L4-DV Codeless Data Exploration and Visualization_12.2020 > L4-DV Codeless Data Exploration and Visualization - Exercises > solutions > 03a. DimensionalityReduction - solution
    0
  8. Go to item
    Workflow
    Dimensionality reduction
    High dimensions Dimensionality reduction Machine learning
    +1
    This workflow illustrates easy and common technique how to lower the high dimensional data by using simple method.
    barbora > Courses > L4-DV Codeless Data Exploration and Visualization_12.2020 > L4-DV Codeless Data Exploration and Visualization - Demos > Session_solutions > Session_03a_demo_dimensionality reduction
    0
  9. Go to item
    Workflow
    Dimensionality Reduction & Outlier Detection
    TheGuideBook Outliers Outlier detection
    +6
    This workflow processes the adult dataset, containing people demographics, by eliminating columns with too many missing values or…
    knime > Academic Alliance > Guide to Intelligent Data Science > Example Workflows > Chapter6 > 01_Column_Row_Filtering
    0
  10. Go to item
    Workflow
    Mixing Deep Learning with XGBoost
    Deep Learning Machine Learning XGBoost
    +11
    This workflow shows how to train an XGBoost based image classifier that uses a pretrained convolutional neural network to extract…
    yusupov > Public > Mixing_DL_with_XGBoost
    0
  11. Go to item
    Workflow
    Sarcasm Detected with Machine Learning
    Redfield BERT Sarcasm
    +3
    In this workflow we are using BERT embeddings to detect sarcasm in texts. Other cases for embeddings are also considered: using P…
    redfield > Public > Sarcasm_detection_with_BERT_by_Redfield
    0
  12. Go to item
    Workflow
    Dimensionality reduction
    High dimensions Dimensionality reduction Machine learning
    +1
    This workflow illustrates easy and common technique how to lower the high dimensional data by using simple method.
    barbora > Courses > L4-DV Codeless Data Exploration and Visualization_06.2021 > L4-DV Codeless Data Exploration and Visualization - Exercises > solutions > 03a. DimensionalityReduction - solution
    0
  13. Go to item
    Workflow
    Mixing Deep Learning with XGBoost
    Deep Learning Machine Learning XGBoost
    +11
    This workflow shows how to train an XGBoost based image classifier that uses a pretrained convolutional neural network to extract…
    lyudmila > Public > Mixing_DL_with_XGBoost
    0
  14. Go to item
    Workflow
    Dimensionality reduction
    High dimensions Dimensionality reduction Machine learning
    +1
    This workflow illustrates easy and common technique how to lower the high dimensional data by using simple method.
    barbora > Courses > L4-DV Codeless Data Exploration and Visualization_12.2020 > L4-DV Codeless Data Exploration and Visualization - Exercises > exercises > 03a. DimensionalityReduction
    0
  15. Go to item
    Workflow
    Mixing_DL_with_XGBoost
    Deep Learning Machine Learning XGBoost
    +11
    This workflow shows how to train an XGBoost based image classifier that uses a pretrained convolutional neural network to extract…
    nemad > Public > Mixing_DL_with_XGBoost
    0
  16. Go to item
    Workflow
    Dimensionality reduction
    High dimensions Dimensionality reduction Machine learning
    +1
    This workflow illustrates easy and common technique how to lower the high dimensional data by using simple method.
    knime > Education > Courses > L4-DV Codeless Data Exploration and Visualization > solutions > 03a. DimensionalityReduction - solution
    0
  17. Go to item
    Workflow
    Dimensionality Reduction
    Dimensionality reduction Data manipulation Preprocessing
    +3
    Introduction to Machine Learning Algorithms course - Session 4 Solution to exercise 4 Apply the following dimensionality reductio…
    hayasaka > L4-ML-2Hrs-2021-07 > Solutions > 07_Dimensionality_Reduction_solution
    0
  18. Go to item
    Workflow
    Backward Feature Elimination
    ETL Accuracy Classification
    +5
    This workflow shows the implementation of the backward feature elimination procedure via the Backward Feature Elimnation metanode…
    knime > Academic Alliance > Guide to Intelligent Data Science > Example Workflows > Chapter6 > 03_Backward_Feature_Elimination
    0
  19. Go to item
    Workflow
    Dimensionality reduction
    High dimensions Dimensionality reduction Machine learning
    +1
    This workflow illustrates easy and common technique how to lower the high dimensional data by using simple method.
    barbora > Courses > L4-DV Codeless Data Exploration and Visualization_06.2021 > L4-DV Codeless Data Exploration and Visualization - Demos > Session_solutions > Session_03a_demo_dimensionality reduction
    0
  20. Go to item
    Workflow
    Dimensionality Reduction
    Dimensionality reduction Data manipulation Preprocessing
    +3
    Introduction to Machine Learning Algorithms course - Session 4 Exercise 4 Apply the following dimensionality reduction techniques…
    hayasaka > L4-ML-2Hrs-2021-07 > Exercises > 07_Dimensionality_Reduction
    0

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