Data Science Austria

Multiplicative RNN-LSTM for Sequence-based Recommenders

Recommender Systems support the decision making processes of customers with personalized suggestions. They are widely used and influence the daily life of almost everyone in different domains like e-commerce, social media, or entertainment. Quite often the dimension of time plays a dominant role in the generation of a relevant recommendation. Which … Read moreMultiplicative RNN-LSTM for Sequence-based Recommenders

A Guide to Restricted Boltzmann Machines Using Pytorch

A Boltzmann machine defines a probability distribution over binary-valued patterns. What makes Boltzmann machine models different from other deep learning models is that they’re undirected and don’t have an output layer. The other key difference is that all the hidden and visible nodes are all connected with each other. Due … Read moreA Guide to Restricted Boltzmann Machines Using Pytorch

Practical tips for class imbalance in binary classification

4. Class weighted / cost sensitive learning Without resampling the data, one can also make the classifier aware of the imbalanced data by incorporating the weights of the classes into the cost function (aka objective function). Intuitively, we want to give higher weight to minority class and lower weight to … Read morePractical tips for class imbalance in binary classification