Introduction. Part
1. Introduction.
1. Introduction to ML and DL in NLP. Part
2. Overview of Conversational Agents.
2. Conversational Agents and Chatbots: Current Trends.
3. Unsupervised Hierarchical Model for Deep Empathetic Conversational Agents. Part
3. Sentiment and Emotions.
4. EMOTRON: An Expressive Text-to-Speech. Part
4. Fake News and Satire.
5. Fake News Classification using Deep Learning Vs. Machine Learning Techniques.
6. Distinguishing Satirical and Fake News.
7. Automated Techniques for Identifying Fake News and Assisting Fact Checkers. Part
5. Applications in Healthcare.
8. Whisper Restoration Combining Real and Source-model Filtered Speech for Clinical and Forensic Applications.
9. An Analysis of Features for Machine Learning Approaches to Parkinson's Disease Detection.
10. Conversational Agents, Natural Language Processing, and Machine Learning for Psychotherapy.