Cornell Neural Team 6 has thoroughly researched many papers in the process of creating our architecture proposal. The papers cited have been listed below in order of reference.
Our Proposal: Paper
Example Word Embedding: Embedding
- Latent Dirichlet Allocation
- [A Neural Network for Factoid Question Answering over Paragraphs](./research/NN factoid question answering over paragraphs.pdf)
- [Text Categorization with Support Vector Machines: Learning with Many Relevant Features](./research/Text Categorization with SVM.pdf)
- [Convolutional Neural Networks for Sentence Classification](./research/Text Classification with CNN.pdf)
- [Ask Me Anything: Dynamic Memory Networks for Natural Language Processing](./research/Dynamic Memory Networks for Natural Language Processing.pdf)
- A Persona-Based Neural Conversation Model
- Deep Reinforcement Learning for Dialogue Generation
- [Pointer Sentinel Mixture Model](./research/pointer sentinel mixture models.pdf)
- [Text Categorization and Support Vector Machines](./research/Text Categorization with SVM more recent.pdf)
- A Neural Network Approach to Context-Sensitive Generation of Conversational Responses
- A Neural Conversational Model
- [End-to-End LSTM-Based Dialog Control Optimized with Supervised and Reinforcement Learning](./research/end to end lstm-based dialogue with supervised and reinforcement learning.pdf)
- Response Selection with Topic Clues for Retrieval-based Chatbots
- Dynamic Memory Networks for Visual and Textual Question Answering
- Freebase QA: Information Extraction or Semantic Parsing?
- Information Extraction over Structured Data: Question Answering with Freebase
- [Reinforcement Learning Neural Turing Machines](./research/reinforcement learning--neural turing machines.pdf)
- [Question Answering over Knowledge Base with Neural Attention Combining Global Knowledge Information](./research/QA with KB and neural nets.pdf)
- [Comparing Twitter and Traditional Media using Topic Models](./research/twitter topic models.pdf)
- A Diversity-Promoting Objective Function for Neural Conversation Models
- Building End-To-End Dialogue Systems Using Generative Hierarchical Neural Network Models