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Dive into the research topics where Michael Symonds is active.

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Featured researches published by Michael Symonds.


australasian document computing symposium | 2012

Is the unigram relevance model term independent?: classifying term dependencies in query expansion

Michael Symonds; Peter D. Bruza; Guido Zuccon; Laurianne Sitbon; Ian Turner

This paper develops a framework for classifying term dependencies in query expansion with respect to the role terms play in structural linguistic associations. The framework is used to classify and compare the query expansion terms produced by the unigram and positional relevance models. As the unigram relevance model does not explicitly model term dependencies in its estimation process it is often thought to ignore dependencies that exist between words in natural language. The framework presented in this paper is underpinned by two types of linguistic association, namely syntagmatic and paradigmatic associations. It was found that syntagmatic associations were a more prevalent form of linguistic association used in query expansion. Paradoxically, it was the unigram model that exhibited this association more than the positional relevance model. This surprising finding has two potential implications for information retrieval models: (1) if linguistic associations underpin query expansion, then a probabilistic term dependence assumption based on position is inadequate for capturing them; (2) the unigram relevance model captures more term dependency information than its underlying theoretical model suggests, so its normative position as a baseline that ignores term dependencies should perhaps be reviewed.


Journal of the Association for Information Science and Technology | 2014

Automatic query expansion: A structural linguistic perspective

Michael Symonds; Peter D. Bruza; Guido Zuccon; Bevan Koopman; Laurianne Sitbon; Ian Turner

A users query is considered to be an imprecise description of their information need. Automatic query expansion is the process of reformulating the original query with the goal of improving retrieval effectiveness. Many successful query expansion techniques model syntagmatic associations that infer two terms co‐occur more often than by chance in natural language. However, structural linguistics relies on both syntagmatic and paradigmatic associations to deduce the meaning of a word. Given the success of dependency‐based approaches to query expansion and the reliance on word meanings in the query formulation process, we argue that modeling both syntagmatic and paradigmatic information in the query expansion process improves retrieval effectiveness. This article develops and evaluates a new query expansion technique that is based on a formal, corpus‐based model of word meaning that models syntagmatic and paradigmatic associations. We demonstrate that when sufficient statistical information exists, as in the case of longer queries, including paradigmatic information alone provides significant improvements in retrieval effectiveness across a wide variety of data sets. More generally, when our new query expansion approach is applied to large‐scale web retrieval it demonstrates significant improvements in retrieval effectiveness over a strong baseline system, based on a commercial search engine.


conference on information and knowledge management | 2012

A tensor encoding model for semantic processing

Michael Symonds; Peter D. Bruza; Laurianne Sitbon; Ian Turner

This paper develops and evaluates an enhanced corpus based approach for semantic processing. Corpus based models that build representations of words directly from text do not require pre-existing linguistic knowledge, and have demonstrated psychologically relevant performance on a number of cognitive tasks. However, they have been criticised in the past for not incorporating sufficient structural information. Using ideas underpinning recent attempts to overcome this weakness, we develop an enhanced tensor encoding model to build representations of word meaning for semantic processing. Our enhanced model demonstrates superior performance when compared to a robust baseline model on a number of semantic processing tasks.


conference on information and knowledge management | 2013

Term associations in query expansion: a structural linguistic perspective

Michael Symonds; Guido Zuccon; Bevan Koopman; Peter D. Bruza; Laurianne Sitbon

Many successful query expansion techniques ignore information about the term dependencies that exist within natural language. However, researchers have recently demonstrated that consistent and significant improvements in retrieval effectiveness can be achieved by explicitly modelling term dependencies within the query expansion process. This has created an increased interest in dependency-based models. State-of-the-art dependency-based approaches primarily model term associations known within structural linguistics as syntagmatic associations, which are formed when terms co-occur together more often than by chance. However, structural linguistics proposes that the meaning of a word is also dependent on its paradigmatic associations, which are formed between words that can substitute for each other without effecting the acceptability of a sentence. Given the reliance on word meanings when a user formulates their query, our approach takes the novel step of modelling both syntagmatic and paradigmatic associations within the query expansion process based on the (pseudo) relevant documents returned in web search. The results demonstrate that this approach can provide significant improvements in web retrieval effectiveness when compared to a strong benchmark retrieval system.


pacific asia conference on language information and computation | 2011

Modelling Word Meaning using Efficient Tensor Representations

Michael Symonds; Peter D. Bruza; Laurianne Sitbon; Ian Turner


Science & Engineering Faculty | 2012

QUT Para at TREC 2012 Web Track: Word Associations for Retrieving Web Documents

Michael Symonds; Guido Zuccon; Bevan Koopman; Peter D. Bruza


Science & Engineering Faculty | 2012

Is the unigram relevance model term independent? Classifying term dependencies in query expansion

Michael Symonds; Peter D. Bruza; Guido Zuccon; Laurianne Sitbon; Ian Turner


text retrieval conference | 2012

QUT_Para at TREC 2012 Web Track: Word Associations for Retrieving Web Documents.

Michael Symonds; Guido Zuccon; Bevan Koopman; Peter D. Bruza


Proceedings of the Australasian Language Technology Association Workshop 2012 | 2012

Semantic Judgement of Medical Concepts: Combining Syntagmatic and Paradigmatic Information with the Tensor Encoding Model

Michael Symonds; Guido Zuccon; Bevan Koopman; Peter D. Bruza; Anthony Nguyen


Archive | 2011

Tensor query expansion : a cognitively motivated relevance model

Michael Symonds; Peter D. Bruza; Laurianne Sitbon; Ian Turner

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Peter D. Bruza

Queensland University of Technology

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Laurianne Sitbon

Queensland University of Technology

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Guido Zuccon

Queensland University of Technology

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Bevan Koopman

Commonwealth Scientific and Industrial Research Organisation

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Ian Turner

Queensland University of Technology

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Anthony Nguyen

Commonwealth Scientific and Industrial Research Organisation

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