Temporal Graph Embedding

Temporal Graph Embedding is a technique that aims to represent nodes and edges in a dynamic graph within a low-dimensional vector space, capturing their temporal evolution. By learning meaningful representations, these embeddings enable various downstream tasks such as link prediction, anomaly detection, and community discovery in time-varying networks. These models effectively capture the evolving relationships between entities over time, providing valuable insights into dynamic systems like social networks, citation networks, and financial transactions.

Persona-Knowledge interactive multi-context retrieval for grounded dialouge

"Persona-Knowledge Interactive Multi-Context Retrieval for Grounded Dialogue" (PK-ICR) is a novel approach to improving conversational AI systems. PK-ICR focuses on enhancing the retrieval of relevant information, such as a user's personality (persona) and external knowledge, to generate more engaging and informative dialogue responses. By considering both persona and knowledge simultaneously, PK-ICR aims to create a more comprehensive understanding of the user and the conversation context. This allows the system to generate responses that are not only factually accurate but also personalized and relevant to the user's individual preferences and interests.