Google Street View House Number(SVHN) Dataset, and classifying them through CNN
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Updated
Mar 4, 2018 - Jupyter Notebook
Google Street View House Number(SVHN) Dataset, and classifying them through CNN
A command-line utility program for automating the trivial, frequently occurring data preparation tasks: missing value interpolation, outlier removal, and encoding categorical variables.
Demo on the capability of Yandex CatBoost gradient boosting classifier on a fictitious IBM HR dataset obtained from Kaggle. Data exploration, cleaning, preprocessing and model tuning are performed on the dataset
Analysis and preprocessing of the kdd cup 99 dataset using python and scikit-learn
Adaptive Reinforcement Learning of curious AI basketball agents
This repository contains Sentiment Classification, Word Level Text Generation, Character Level Text Generation and other important codes/notes on NLP. Python and Keras are used for implementation.
Semantic Segmentation Using U-Net Architecture
Deeplearning4J框架搭建的第一个问答小AI
Keras 응용(CNN, RNN, GAN, DNN, ETC...) 사용법 예시
Movie Recommendation System
one hot encoding using numpy, sklearn, and keras. Created Date: 7 Jan 2019
Machine-learning models to predict whether customers respond to a marketing campaign
Customer churn analysis for a telecommunication company
To predict whether booked appointment will be completed or it will be no show.
Feature Importance of categorical variables by converting them into dummy variables (One-hot-encoding) can skewed or hard to interpret results. Here I present a method to get around this problem using H2O.
Implementation of Character level CNN
Determining the housing prices of California properties for new sellers and also for buyers to estimate the profitability of the deal.
Generic encoding of record types
Deep Neural Networks like Single Layer Perceptron and Multi Layer Perceptron implementation using Tensorflow library on Datasets like MNIST and Naval Mine for categorical Classification. Saving and Restoring Tensorflow "Variables" weights for testing.
Kaggle Challenge
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