4,590 research outputs found
Russian word sense induction by clustering averaged word embeddings
The paper reports our participation in the shared task on word sense
induction and disambiguation for the Russian language (RUSSE-2018). Our team
was ranked 2nd for the wiki-wiki dataset (containing mostly homonyms) and 5th
for the bts-rnc and active-dict datasets (containing mostly polysemous words)
among all 19 participants.
The method we employed was extremely naive. It implied representing contexts
of ambiguous words as averaged word embedding vectors, using off-the-shelf
pre-trained distributional models. Then, these vector representations were
clustered with mainstream clustering techniques, thus producing the groups
corresponding to the ambiguous word senses. As a side result, we show that word
embedding models trained on small but balanced corpora can be superior to those
trained on large but noisy data - not only in intrinsic evaluation, but also in
downstream tasks like word sense induction.Comment: Proceedings of the 24rd International Conference on Computational
Linguistics and Intellectual Technologies (Dialogue-2018
From Word to Sense Embeddings: A Survey on Vector Representations of Meaning
Over the past years, distributed semantic representations have proved to be
effective and flexible keepers of prior knowledge to be integrated into
downstream applications. This survey focuses on the representation of meaning.
We start from the theoretical background behind word vector space models and
highlight one of their major limitations: the meaning conflation deficiency,
which arises from representing a word with all its possible meanings as a
single vector. Then, we explain how this deficiency can be addressed through a
transition from the word level to the more fine-grained level of word senses
(in its broader acceptation) as a method for modelling unambiguous lexical
meaning. We present a comprehensive overview of the wide range of techniques in
the two main branches of sense representation, i.e., unsupervised and
knowledge-based. Finally, this survey covers the main evaluation procedures and
applications for this type of representation, and provides an analysis of four
of its important aspects: interpretability, sense granularity, adaptability to
different domains and compositionality.Comment: 46 pages, 8 figures. Published in Journal of Artificial Intelligence
Researc
Information Extraction in Illicit Domains
Extracting useful entities and attribute values from illicit domains such as
human trafficking is a challenging problem with the potential for widespread
social impact. Such domains employ atypical language models, have `long tails'
and suffer from the problem of concept drift. In this paper, we propose a
lightweight, feature-agnostic Information Extraction (IE) paradigm specifically
designed for such domains. Our approach uses raw, unlabeled text from an
initial corpus, and a few (12-120) seed annotations per domain-specific
attribute, to learn robust IE models for unobserved pages and websites.
Empirically, we demonstrate that our approach can outperform feature-centric
Conditional Random Field baselines by over 18\% F-Measure on five annotated
sets of real-world human trafficking datasets in both low-supervision and
high-supervision settings. We also show that our approach is demonstrably
robust to concept drift, and can be efficiently bootstrapped even in a serial
computing environment.Comment: 10 pages, ACM WWW 201
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