--- license: mit --- # WordNet Semantic Primes ## Dataset Overview We propose a dataset at the core of our semantic towers methodology which combines vectorized knowledge graph information to augment a Retrieval-and-Generation (RAG) pipeline. ## Dataset Construction The dataset is constructed by deriving and building the semantic tower - an ensemble of primitive semantic information related to a term - of 4 term types (noun, verb, adverb, adjective). These term typed are derived from a data dump from the original [WordNet](https://wordnet.princeton.edu/) dataset. The semantic tower encompasses information gathered from Wikidata, specifically: - label - instance of - subclass of - part of - represents - description This information forms the smallest subset of knowledge needed to distinguish a term from another. ## Embeddings Generation The vector embeddings are generated using the [General Text Embeddings (GTE)](https://huggingface.co./thenlper/gte-large) large model.