18,036 research outputs found
Neural End-to-End Learning for Computational Argumentation Mining
We investigate neural techniques for end-to-end computational argumentation
mining (AM). We frame AM both as a token-based dependency parsing and as a
token-based sequence tagging problem, including a multi-task learning setup.
Contrary to models that operate on the argument component level, we find that
framing AM as dependency parsing leads to subpar performance results. In
contrast, less complex (local) tagging models based on BiLSTMs perform robustly
across classification scenarios, being able to catch long-range dependencies
inherent to the AM problem. Moreover, we find that jointly learning 'natural'
subtasks, in a multi-task learning setup, improves performance.Comment: To be published at ACL 201
Semantic Tagging with Deep Residual Networks
We propose a novel semantic tagging task, sem-tagging, tailored for the
purpose of multilingual semantic parsing, and present the first tagger using
deep residual networks (ResNets). Our tagger uses both word and character
representations and includes a novel residual bypass architecture. We evaluate
the tagset both intrinsically on the new task of semantic tagging, as well as
on Part-of-Speech (POS) tagging. Our system, consisting of a ResNet and an
auxiliary loss function predicting our semantic tags, significantly outperforms
prior results on English Universal Dependencies POS tagging (95.71% accuracy on
UD v1.2 and 95.67% accuracy on UD v1.3).Comment: COLING 2016, camera ready versio
What can we learn from Semantic Tagging?
We investigate the effects of multi-task learning using the recently
introduced task of semantic tagging. We employ semantic tagging as an auxiliary
task for three different NLP tasks: part-of-speech tagging, Universal
Dependency parsing, and Natural Language Inference. We compare full neural
network sharing, partial neural network sharing, and what we term the learning
what to share setting where negative transfer between tasks is less likely. Our
findings show considerable improvements for all tasks, particularly in the
learning what to share setting, which shows consistent gains across all tasks.Comment: 9 pages with references and appendixes. EMNLP 2018 camera read
A Lexicalized Tree-Adjoining Grammar for Vietnamese
In this paper, we present the first sizable grammar built for Vietnamese using LTAG, developed over the past two years, named vnLTAG. This grammar aims at modelling written language and is general enough to be both application- and domain-independent. It can be used for the morpho-syntactic tagging and syntactic parsing of Vietnamese texts, as well as text generation. We then present a robust parsing scheme using vnLTAG and a parser for the grammar. We finish with an evaluation using a test suite
Hexatagging: Projective Dependency Parsing as Tagging
We introduce a novel dependency parser, the hexatagger, that constructs
dependency trees by tagging the words in a sentence with elements from a finite
set of possible tags. In contrast to many approaches to dependency parsing, our
approach is fully parallelizable at training time, i.e., the structure-building
actions needed to build a dependency parse can be predicted in parallel to each
other. Additionally, exact decoding is linear in time and space complexity.
Furthermore, we derive a probabilistic dependency parser that predicts hexatags
using no more than a linear model with features from a pretrained language
model, i.e., we forsake a bespoke architecture explicitly designed for the
task. Despite the generality and simplicity of our approach, we achieve
state-of-the-art performance of 96.4 LAS and 97.4 UAS on the Penn Treebank test
set. Additionally, our parser's linear time complexity and parallelism
significantly improve computational efficiency, with a roughly 10-times
speed-up over previous state-of-the-art models during decoding.Comment: accepted at ACL 202
Towards Universal Semantic Tagging
The paper proposes the task of universal semantic tagging---tagging word
tokens with language-neutral, semantically informative tags. We argue that the
task, with its independent nature, contributes to better semantic analysis for
wide-coverage multilingual text. We present the initial version of the semantic
tagset and show that (a) the tags provide semantically fine-grained
information, and (b) they are suitable for cross-lingual semantic parsing. An
application of the semantic tagging in the Parallel Meaning Bank supports both
of these points as the tags contribute to formal lexical semantics and their
cross-lingual projection. As a part of the application, we annotate a small
corpus with the semantic tags and present new baseline result for universal
semantic tagging.Comment: 9 pages, International Conference on Computational Semantics (IWCS
Chunk Tagger - Statistical Recognition of Noun Phrases
We describe a stochastic approach to partial parsing, i.e., the recognition
of syntactic structures of limited depth. The technique utilises Markov Models,
but goes beyond usual bracketing approaches, since it is capable of recognising
not only the boundaries, but also the internal structure and syntactic category
of simple as well as complex NP's, PP's, AP's and adverbials. We compare
tagging accuracy for different applications and encoding schemes.Comment: 7 pages, LaTe
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