2012
DOI: 10.1007/978-3-642-35341-3_28
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Topical Relevance Model

Abstract: Cross-lingual relevance modelling (CLRLM) is a state-of-the-art technique for cross-lingual information retrieval (CLIR) which integrates query term disambiguation and expansion in a unified framework, to directly estimate a model of relevant documents in the target language starting with a query in the source language. However, CLRLM involves integrating a translation model either on the document side if a parallel corpus is available, or on the query side if a bilingual dictionary is available. For low resou… Show more

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Cited by 13 publications
(12 citation statements)
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“…Stopword removal is also performed. 1 The Lemur toolkit 2 is employed as the retrieval engine in our experiments.…”
Section: Methodsmentioning
confidence: 99%
See 1 more Smart Citation
“…Stopword removal is also performed. 1 The Lemur toolkit 2 is employed as the retrieval engine in our experiments.…”
Section: Methodsmentioning
confidence: 99%
“…Pseudo-relevance feedback has long been employed as a powerful method for estimating query language models in a large number of studies [6,5,12]. Cross-lingual relevance model (CLRLM) and CLTRLM are state-of-the-art methods in cross-lingual environments [1,11,3]. Unlike CLRLM that depends on parallel corpora and bilingual lexicons, CLTRLM aims at finding a number of bilingual topical variables from a comparable corpus in order to transfer relevance score of a term from one language to another.…”
Section: Related Workmentioning
confidence: 99%
“…On the other hand, we run another set of experiments without applying any morphological processing method similar to the Persian state-of-the-art CLIR methods. Iterative translation disambiguation (ITD) [11], joint cross-lingual topical relevance model (JCLTRLM) [7], top-ranked translation (TOP-1), and the bi-gram coherence translation method (BiCTM), introduced in [5] (assume |c i | = 0), are the baselines without any morphological processing units. As shown in Table 3 BiCTM outperforms all the baselines when there is no morphological processing unit.…”
Section: Comparing Different Morphological Processing Methodsmentioning
confidence: 99%
“…Cross-lingual text mining aims to induce and transfer knowledge across different languages to help applications such as cross-lingual information retrieval (Levow et al, 2005;Ganguly et al, 2012;Vulić et al, 2013), document classification (Prettenhofer and Stein, 2010;Ni et al, 2011;Guo and Xiao, 2012a), or cross-lingual annotation projection (Zhao et al, 2009;Das and Petrov, 2011;van der Plas et al, 2011;Kim et al, 2012;Täckström et al, 2013;Ganchev and Das, 2013) in cases where translation and class-labeled resources are scarce or missing. In this article, we utilize probabilistic topic models to perform cross-lingual text mining.…”
Section: Introductionmentioning
confidence: 99%