Evolution of semantic similarity—a survey
Estimating the semantic similarity between text data is one of the challenging and open
research problems in the field of Natural Language Processing (NLP). The versatility of …
research problems in the field of Natural Language Processing (NLP). The versatility of …
Analysis methods in neural language processing: A survey
The field of natural language processing has seen impressive progress in recent years, with
neural network models replacing many of the traditional systems. A plethora of new models …
neural network models replacing many of the traditional systems. A plethora of new models …
Evaluating word embedding models: Methods and experimental results
Extensive evaluation on a large number of word embedding models for language
processing applications is conducted in this work. First, we introduce popular word …
processing applications is conducted in this work. First, we introduce popular word …
A survey of cross-lingual word embedding models
Cross-lingual representations of words enable us to reason about word meaning in
multilingual contexts and are a key facilitator of cross-lingual transfer when develo** …
multilingual contexts and are a key facilitator of cross-lingual transfer when develo** …
Interpreting pretrained contextualized representations via reductions to static embeddings
Contextualized representations (eg ELMo, BERT) have become the default pretrained
representations for downstream NLP applications. In some settings, this transition has …
representations for downstream NLP applications. In some settings, this transition has …
All-but-the-top: Simple and effective postprocessing for word representations
Real-valued word representations have transformed NLP applications; popular examples
are word2vec and GloVe, recognized for their ability to capture linguistic regularities. In this …
are word2vec and GloVe, recognized for their ability to capture linguistic regularities. In this …
On the limitations of unsupervised bilingual dictionary induction
Unsupervised machine translation---ie, not assuming any cross-lingual supervision signal,
whether a dictionary, translations, or comparable corpora---seems impossible, but …
whether a dictionary, translations, or comparable corpora---seems impossible, but …
[KNJIGA][B] Fundamentals of cognition
MW Eysenck, M Brysbaert - 2018 - api.taylorfrancis.com
Is it possible to learn something without being aware of it? How does emotion influence the
way we think? How can we improve our memory? Fundamentals of Cognition, third edition …
way we think? How can we improve our memory? Fundamentals of Cognition, third edition …
All bark and no bite: Rogue dimensions in transformer language models obscure representational quality
Similarity measures are a vital tool for understanding how language models represent and
process language. Standard representational similarity measures such as cosine similarity …
process language. Standard representational similarity measures such as cosine similarity …
Distributional models of word meaning
A Lenci - Annual review of Linguistics, 2018 - annualreviews.org
Distributional semantics is a usage-based model of meaning, based on the assumption that
the statistical distribution of linguistic items in context plays a key role in characterizing their …
the statistical distribution of linguistic items in context plays a key role in characterizing their …