/experiments

Experiments in NLP, Deep Learning, Reinforcement Learning and Artificial Intelligence

Experiments

Experiments in NLP, Deep Learning, Reinforcement Learning and Artificial Intelligence

Autoencoder for Audio is a model where I compressed an audio file and used Autoencoder to reconstruct the audio file, for use in phoneme classification.

Hyperparameter Tuning RL is a model where hyperparameters of Neural Networks are adjusted via Reinforcement Learning. According to a reward, hyperparameter tuning (environment) is changed through a policy (mechanization of knowledge) using the Boston Dataset. Hyperparameters tuned are: learning rate, epochs, decay, momentum, number of hidden layers and nodes and initial weights.

Lasagne Neural Nets Regression is a Neural Network model based in Theano and Lasagne, that makes a linear regression with a continuous target variable and reaches 99.4% accuracy. It uses the DadosTeseLogit.csv sample file.

Lasagne Neural Nets + Weights is a Neural Network model based in Theano and Lasagne, where is possible to visualize weights between X1 and X2 to hidden layer. Can also be adapted to visualize weights between hidden layer and output. It uses the DadosTeseLogit.csv sample file.

Multinomial Regression is a regression model where target variable has 3 classes.

Neural Networks for Regression shows multiple solutions for a regression problem, solved with sklearn, Keras, Theano and Lasagne. It uses the Boston dataset sample file from sklearn and reaches more than 98% accuracy.

NLP + Naive Bayes Classifier is a model where movie reviews were labeled as positive and negative and the algorithm then classifies a totally new set of reviews using Logistic Regression, Decision Trees and Naive Bayes, reaching an accuracy of 92%.

NLP Semantic Doc2Vec + Neural Network is a model where positive and negative movie reviews were extracted and semantically classified with NLTK and BeautifulSoup, then labeled as positive or negative. Text was then used as an input for the Neural Network model training. After training, new sentences are entered in the Keras Neural Network model and then classified. It uses the zip file.

NLP Sentiment Positive is a model that identifies website content as positive, neutral or negative using BeautifulSoup and NLTK libraries, plotting the results.

More files to be added.