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Neurosymbolic AI in Search with Professor Laura Dietz - Weaviate Podcast #49!

Weaviate Podcast

NOTE

Enhancing Knowledge Graph Retrieval with Text Analysis and Query Languages

Retrieving information from knowledge graphs can sometimes miss crucial details not explicitly mentioned in the query. By first retrieving relevant snippets and then analyzing them to identify important entities, researchers can improve knowledge graph retrieval. Query languages for knowledge graphs, similar to text to SQL conversion, may become important in enabling large language models to generate graph queries from natural language questions. However, the effectiveness of these approaches is influenced by the relevance of the search domain and the compatibility of the schema with the query. The challenge arises when the schema does not align with the query, impacting the performance of information retrieval systems. Utilizing technology designed for specific domains, like relation extraction systems, might not translate effectively to general information retrieval benchmarks due to the mismatch in schema and the entities being studied.

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