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Doc2Vec×Label Propagation×Word2Vec×
CampoText miningApprendimento automaticoText mining
FamigliaProcess / pipelineMachine learningProcess / pipeline
Anno di origine201420022013
IdeatoreQuoc V. Le & Tomas MikolovZhu, X. & Ghahramani, Z.Tomas Mikolov et al.
TipoDocument-embedding representation learningGraph-based semi-supervised classificationNeural word-embedding model
Fonte seminaleLe, Q. V. & Mikolov, T. (2014). Distributed Representations of Sentences and Documents. Proceedings of the 31st International Conference on Machine Learning (ICML), 1188-1196. link ↗Zhu, X., & Ghahramani, Z. (2002). Learning from labeled and unlabeled data with label propagation. Technical Report CMU-CALD-02-107, Carnegie Mellon University. link ↗Mikolov, T., Chen, K., Corrado, G. & Dean, J. (2013). Efficient Estimation of Word Representations in Vector Space. link ↗
Aliasparagraph vector, document embeddings, Doc2Vec Belge GömülmeleriLP, label spreading, graph-based semi-supervised learning, harmonic label propagationword embeddings, skip-gram, continuous bag-of-words, Word2Vec Kelime Gömülmeleri
Correlati434
SintesiDoc2Vec, also known as Paragraph Vector, is a representation-learning method introduced by Le and Mikolov (2014) that maps whole documents to fixed-length dense vectors. These vectors place similar documents close together in space, supporting document comparison and classification.Label Propagation is a graph-based semi-supervised learning algorithm introduced by Zhu and Ghahramani in 2002 that spreads class labels from a small set of labeled nodes to a large set of unlabeled nodes by iteratively diffusing label information along the edges of a similarity graph, exploiting the manifold structure of the data.Word2Vec is a neural word-embedding technique introduced by Mikolov and colleagues in 2013 that maps each word in a text corpus to a dense numeric vector. Words that appear in similar contexts end up close together in the vector space, so the embeddings capture semantic similarity that can be measured arithmetically.
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ScholarGateConfronta i metodi: Doc2Vec · Label Propagation · Word2Vec. Consultato il 2026-06-17 da https://scholargate.app/it/compare