Search Results for author: Kristina Gulordava

Found 11 papers, 3 papers with code

Probing for Referential Information in Language Models

no code implementations ACL 2020 Ionut-Teodor Sorodoc, Kristina Gulordava, Gemma Boleda

Language models keep track of complex information about the preceding context {--} including, e. g., syntactic relations in a sentence.

Sentence

Deep daxes: Mutual exclusivity arises through both learning biases and pragmatic strategies in neural networks

no code implementations8 Apr 2020 Kristina Gulordava, Thomas Brochhagen, Gemma Boleda

We find that constraints in both learning and selection can foster mutual exclusivity, as long as they put words in competition for lexical meaning.

Towards Incremental Learning of Word Embeddings Using Context Informativeness

1 code implementation ACL 2019 Alex Kabbach, re, Kristina Gulordava, Aur{\'e}lie Herbelot

In this paper, we investigate the task of learning word embeddings from very sparse data in an incremental, cognitively-plausible way.

Incremental Learning Informativeness +1

Putting words in context: LSTM language models and lexical ambiguity

1 code implementation ACL 2019 Laura Aina, Kristina Gulordava, Gemma Boleda

In neural network models of language, words are commonly represented using context-invariant representations (word embeddings) which are then put in context in the hidden layers.

Language Modelling Word Embeddings

Colorless green recurrent networks dream hierarchically

2 code implementations NAACL 2018 Kristina Gulordava, Piotr Bojanowski, Edouard Grave, Tal Linzen, Marco Baroni

Recurrent neural networks (RNNs) have achieved impressive results in a variety of linguistic processing tasks, suggesting that they can induce non-trivial properties of language.

Language Modelling

Discontinuous Verb Phrases in Parsing and Machine Translation of English and German

no code implementations LREC 2016 Sharid Lo{\'a}iciga, Kristina Gulordava

In this paper, we focus on the verb-particle (V-Prt) split construction in English and German and its difficulty for parsing and Machine Translation (MT).

Dependency Parsing Machine Translation +1

Multi-lingual Dependency Parsing Evaluation: a Large-scale Analysis of Word Order Properties using Artificial Data

no code implementations TACL 2016 Kristina Gulordava, Paola Merlo

We propose a method to evaluate the effects of word order of a language on dependency parsing performance, while controlling for confounding treebank properties.

Dependency Parsing Sentence

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