Reading List This repository collates the papers I am reading for my MSCS thesis. 2015 and later Paper Method Venue Code Analyzing and Improving Representations with the Soft Nearest Neighbor Loss SNNL ICML 2019 Variational Mixture-of-Experts Autoencoders for Multi-Modal Deep Generative Models MMVAE NeurIPS 2019 PyTorch Multimodal Generative Models for Scalable Weakly-Supervised Learning MVAE NeurIPS 2018 PyTorch Cooperative Learning of Audio and Video Models from Self-Supervised Synchronization SS AVTS NeurIPS 2018 Cooperative neural networks: Exploiting prior independence structure for improved classification CoNN NeurIPS 2018 PyTorch Learning to Specialize with Knowledge Distillation for Visual Question Answering MCL-KD NeurIPS 2018 PyTorch KATE: K-Competitive Autoencoder for Text KATE KDD 2017 Keras Distilling the Knowledge in Neural Networks KD NeurIPS 2015 Workshop A network of deep neural networks for distant speech recognition CN-DNN ICASSP 2017 Cooperative Training for Generative Modeling of Discrete Data CoT ICML 2019 Learning a Text-Video Embedding from Incomplete and Heterogeneous Data MEE PyTorch MIX'EM: Unsupervised Image Classification using a Mixture of Embeddings MIX'EM ACCV 2020 Confident Multiple Choice Learning CMCL ICML 2017 TensorFlow Stochastic Multiple Choice Learning sMCL NeurIPS 2016 2014 and older Paper Method Venue Code Multiple Choice Learning: Learning to Produce Multiple Structured Outputs MCL NeurIPS 2012 A Cooperative Ensemble Learning System CELS IJCNN 1998