Slickml

Latest version: v0.2.1

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0.1.4

🛠 Fixed
- [70](https://github.com/slickml/slick-ml/pull/70) fixed bugs in `plot_xgb_cv_results`.
- [70](https://github.com/slickml/slick-ml/pull/70) fixed bugs in `plot_regression_metrics`.
- [70](https://github.com/slickml/slick-ml/pull/70) updated metrics initialization in `XGBoostClassifier` and `XGBoostCVClassifier`.
- [70](https://github.com/slickml/slick-ml/pull/70) updated notebook examples to go over each class separetely.

🔥 Added
- [70](https://github.com/slickml/slick-ml/pull/70) added `XGBoostRegressor` and `XGBoostCVRegressor` classes.
- [70](https://github.com/slickml/slick-ml/pull/70) added `NeurIPS 2021` submission pdf.

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0.1.3

🛠 Fixed
- [68](https://github.com/slickml/slick-ml/pull/68) updated `save_path` in plotting functions.
- [68](https://github.com/slickml/slick-ml/pull/68) updated `bibtex` citations to software.
- [67](https://github.com/slickml/slick-ml/pull/67) fixed bugs in metrics.
- [66](https://github.com/slickml/slick-ml/pull/66) fixed bugs in feature selection algorithm.
- [66](https://github.com/slickml/slick-ml/pull/66) updated the order of the functions inside each class.

🔥 Added
- [68](https://github.com/slickml/slick-ml/pull/68) added directories for `JOSS` and `NeurIPS` papers.

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0.1.2

🛠 Fixed
- [64](https://github.com/slickml/slick-ml/pull/64) updated `setup.py` with dynamic version and install requirements
- [63](https://github.com/slickml/slick-ml/pull/63) fixed bugs in RegressionMetrics plotting. Now, the text label positions are dynamic and invariat of the data. Additionally, fixed the bug in coef. shapes in `GLMNet` classes.
- [63](https://github.com/slickml/slick-ml/pull/63) updated all docstrings based on Scikit-Learn API
- [61](https://github.com/slickml/slick-ml/pull/61) updated `metrics.py` attributes API to end with under-score

🔥 Added
- [63](https://github.com/slickml/slick-ml/pull/63) added `GLMNetCVRegressor` class
- [60](https://github.com/slickml/slick-ml/pull/60) added `CHANGELOG.md`

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0.1.1

🛠 Fixed
- [59](https://github.com/slickml/slick-ml/pull/59) updated docstrings
- [57](https://github.com/slickml/slick-ml/pull/57) updated `requirements.txt`
- [56](https://github.com/slickml/slick-ml/pull/56) fixed bugs in plotting
- [54](https://github.com/slickml/slick-ml/pull/54) fixed bug in XGBoostClassifer. dtest has `y_test` as required parameter while it should be optional, since you wont have the `y_true` in production.

🔥 Added
- [57](https://github.com/slickml/slick-ml/pull/57) added GLMNetCVClassifier class, plotting, and examples, `CODE_OF_CONDUCT.md`
- [44](https://github.com/slickml/slick-ml/pull/44) added XGBoostClassifierHyperOpt

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0.0.8

🛠 Fixed
- [52](https://github.com/slickml/slick-ml/pull/52) updated xgboost version to 1.0.0 to remove the conflict with shap version
- [47](https://github.com/slickml/slick-ml/pull/47) fixed bugs in HyperOpt `__init__`

🔥 Added
- [52](https://github.com/slickml/slick-ml/pull/52) added SHAP waterfall plot
- [51](https://github.com/slickml/slick-ml/pull/51) added regression metrics
- [49](https://github.com/slickml/slick-ml/pull/49) added Google Colab links to notebooks
- [44](https://github.com/slickml/slick-ml/pull/44) added XGBoostClassifierHyperOpt

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0.0.7

🛠 Fixed
- [41](https://github.com/slickml/slick-ml/pull/41) updated requirements for bayesian optimization, design pattern, classification examples
- [38](https://github.com/slickml/slick-ml/pull/38) fixed typos in README and bug in `df_to_csr` function
- [34](https://github.com/slickml/slick-ml/pull/34) fixed formatting and import bugs in source code
- [28](https://github.com/slickml/slick-ml/pull/28) updated feature selection method from run to fit and removed X, y from init and added to fit to be similar to sklearn API.
- [17](https://github.com/slickml/slick-ml/pull/17) updated plotting to Matplotlib object oriented API

🔥 Added
- [43](https://github.com/slickml/slick-ml/pull/43) added BayesianOpt class
- [38](https://github.com/slickml/slick-ml/pull/38) added unit tests for classification
- [37](https://github.com/slickml/slick-ml/pull/37) added SHAP summary plots
- [24](https://github.com/slickml/slick-ml/pull/24) added XGBoostCVClassifier
- [23](https://github.com/slickml/slick-ml/pull/23) added examples for feature selection
- [20](https://github.com/slickml/slick-ml/pull/20) added `formatting.py`
- [15](https://github.com/slickml/slick-ml/pull/15) added `feature_selection.py` and `tests/`
- [12](https://github.com/slickml/slick-ml/pull/12) added PEP8
- [9](https://github.com/slickml/slick-ml/pull/9) added plots for metrics and `utilities.py`
- [6](https://github.com/slickml/slick-ml/pull/6) added logo design
- [4](https://github.com/slickml/slick-ml/pull/4) added `metrics.py`

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