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Open AccessBook ChapterDOI

Text Chunking Using Transformation-Based Learning

Lance Ramshaw, +1 more
- pp 157-176
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TLDR
This work has shown that the transformation-based learning approach can be applied at a higher level of textual interpretation for locating chunks in the tagged text, including non-recursive “baseNP” chunks.
Abstract
Transformation-based learning, a technique introduced by Eric Brill (1993b), has been shown to do part-of-speech tagging with fairly high accuracy. This same method can be applied at a higher level of textual interpretation for locating chunks in the tagged text, including non-recursive “baseNP” chunks. For this purpose, it is convenient to view chunking as a tagging problem by encoding the chunk structure in new tags attached to each word. In automatic tests using Treebank-derived data, this technique achieved recall and precision rates of roughly 93% for baseNP chunks (trained on 950K words) and 88% for somewhat more complex chunks that partition the sentence (trained on 200K words). Working in this new application and with larger template and training sets has also required some interesting adaptations to the transformation-based learning approach.

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Citations
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Proceedings ArticleDOI

The Role of Reentrancies in Abstract Meaning Representation Parsing

TL;DR: The types of errors AMR parsers make with respect to reentrancies are analyzed and it is found that correcting these errors provides an in- crease of up to 5% Smatch in parsing perfor- mance and 20% in reentrancy prediction.
Journal ArticleDOI

Automated Chemical Reaction Extraction from Scientific Literature.

TL;DR: In this article, a two-stage deep learning framework consisting of product extraction and reaction role labeling is proposed to extract chemical reaction data from chemical literature, which is more comprehensive and better represent the latest developments in chemistry compared to patents, however, they are less formulaic in their descriptions of reactions.
Proceedings Article

How to Use Gazetteers for Entity Recognition with Neural Models

TL;DR: Experimental evidences are provided, showing that extracting features from a rich model of the gazetteer and then concatenating such features with the input embeddings of a neural model is the best strategy in all experimental settings, significantly outperforming more conventional approaches.
Proceedings ArticleDOI

Noun Phrase Chunking in Hebrew: Influence of Lexical and Morphological Features

TL;DR: It is shown that the traditional definition of base-NPs as non-recursive noun phrases does not apply in Hebrew, and an alternative definition of Simple NPs is proposed, which applies SVM induction over lexical and morphological features.
References
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Book ChapterDOI

Parsing By Chunks

TL;DR: The typical chunk consists of a single content word surrounded by a constellation of function words, matching a fixed template, and the relationships between chunks are mediated more by lexical selection than by rigid templates.
Proceedings ArticleDOI

A Stochastic Parts Program and Noun Phrase Parser for Unrestricted Text

TL;DR: The authors used a linear-time dynamic programming algorithm to find an assignment of parts of speech to words that optimizes the product of (a) lexical probabilities (probability of observing part of speech i given word i) and (b) contextual probabilities (pb probability of observing n following partsof speech).
Proceedings Article

Some advances in transformation-based part of speech tagging

TL;DR: In this article, a rule-based approach to tagging unknown words is described, where the tagger-can be extended into a k-best tagger, where multiple tags can be assigned to words in some cases of uncertainty.
Journal ArticleDOI

Performance structures: A psycholinguistic and linguistic appraisal☆

TL;DR: In this paper, two lines of research are combined to deal with a long-standing problem in both fields: why the performance structures of sentences (structures based on experimental data, such as pausing and parsing values) are not fully accountable for by linguistic theories of phrase structure.
Book

A corpus-based approach to language learning

Eric D. Brill
TL;DR: A learning algorithm is described that takes a small structurally annotated corpus of text and a larger unannotated corpus as input, and automatically learns how to assign accurate structural descriptions to sentences not in the training corpus.
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