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Effort here is to identify important features in relation to our target variable using multiple Correlation methods based on data type. Feature selection is important for ML models to avoid 'curse of dimensionality' but for this dataset we will be using it build our intution that benefits our later EDA effort
ENG/RU Exploratory Data Analysis "Moscow's Taste: Venue Analysis and Recommendations for Investors" in the Jupyter notebook. The analysis uses libraries such as pandas, seaborn, matplotlib, and phik.
Модель прогнозирования выживаемости стартапов с F1 0.997 на основе DecisionTree, оптимизированного через Optuna. Использованы Python, Scikit-learn, Optuna.