Computing and Information Systems - Research Publications

Permanent URI for this collection

Search Results

Now showing 1 - 7 of 7
  • Item
    Thumbnail Image
    Detecting modification of biomedical events using a deep parsing approach
    MacKinlay, A ; Martinez, D ; Baldwin, T (BMC, 2012-04-30)
    BACKGROUND: This work describes a system for identifying event mentions in bio-molecular research abstracts that are either speculative (e.g. analysis of IkappaBalpha phosphorylation, where it is not specified whether phosphorylation did or did not occur) or negated (e.g. inhibition of IkappaBalpha phosphorylation, where phosphorylation did not occur). The data comes from a standard dataset created for the BioNLP 2009 Shared Task. The system uses a machine-learning approach, where the features used for classification are a combination of shallow features derived from the words of the sentences and more complex features based on the semantic outputs produced by a deep parser. METHOD: To detect event modification, we use a Maximum Entropy learner with features extracted from the data relative to the trigger words of the events. The shallow features are bag-of-words features based on a small sliding context window of 3-4 tokens on either side of the trigger word. The deep parser features are derived from parses produced by the English Resource Grammar and the RASP parser. The outputs of these parsers are converted into the Minimal Recursion Semantics formalism, and from this, we extract features motivated by linguistics and the data itself. All of these features are combined to create training or test data for the machine learning algorithm. RESULTS: Over the test data, our methods produce approximately a 4% absolute increase in F-score for detection of event modification compared to a baseline based only on the shallow bag-of-words features. CONCLUSIONS: Our results indicate that grammar-based techniques can enhance the accuracy of methods for detecting event modification.
  • Item
    Thumbnail Image
    Word sense disambiguation for event trigger word detection in biomedicine
    Martinez, D ; Baldwin, T (BMC, 2011-03-29)
    This paper describes a method for detecting event trigger words in biomedical text based on a word sense disambiguation (WSD) approach. We first investigate the applicability of existing WSD techniques to trigger word disambiguation in the BioNLP 2009 shared task data, and find that we are able to outperform a traditional CRF-based approach for certain word types. On the basis of this finding, we combine the WSD approach with the CRF, and obtain significant improvements over the standalone CRF, gaining particularly in recall.
  • Item
    Thumbnail Image
    Take and Took, Gaggle and Goose, Book and Read: Evaluating the Utility of Vector Differences for Lexical Relation Learning
    Vylomova, E ; Rimell, L ; Cohn, T ; Baldwin, T ; Erk, K ; Smith, NA (The Association for Computational Linguistics, 2016)
    Recent work on word embeddings has shown that simple vector subtraction over pre-trained embeddings is surprisingly effective at capturing different lexical relations, despite lacking explicit supervision. Prior work has evaluated this intriguing result using a word analogy prediction formulation and hand-selected relations, but the generality of the finding over a broader range of lexical relation types and different learning settings has not been evaluated. In this paper, we carry out such an evaluation in two learning settings: (1) spectral clustering to induce word relations, and (2) supervised learning to classify vector differences into relation types. We find that word embeddings capture a surprising amount of information, and that, under suitable supervised training, vector subtraction generalises well to a broad range of relations, including over unseen lexical items.
  • Item
    Thumbnail Image
    Classifying dialogue acts in one-on-one live chats
    Kim, SN ; Cavedon, L ; Baldwin, T (The Association for Computational Linguistics, 2010-12-01)
  • Item
    Thumbnail Image
    Unsupervised parse selection for HPSG
    Dridan, R ; Baldwin, T (The Association for Computational Linguistics, 2010-12-01)
  • Item
    Thumbnail Image
    Best topic word selection for topic labelling
    Lau, JH ; Newman, D ; Karimi, S ; Baldwin, T (The Association for Computational Linguistics, 2010-12-01)
  • Item
    Thumbnail Image
    Word sense disambiguation for event trigger word detection
    Martinez, D ; Baldwin, T (ACM, 2010-12-01)