3,420 research outputs found

    The scholarly impact of TRECVid (2003-2009)

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    This paper reports on an investigation into the scholarly impact of the TRECVid (TREC Video Retrieval Evaluation) benchmarking conferences between 2003 and 2009. The contribution of TRECVid to research in video retrieval is assessed by analyzing publication content to show the development of techniques and approaches over time and by analyzing publication impact through publication numbers and citation analysis. Popular conference and journal venues for TRECVid publications are identified in terms of number of citations received. For a selection of participants at different career stages, the relative importance of TRECVid publications in terms of citations vis a vis their other publications is investigated. TRECVid, as an evaluation conference, provides data on which research teams ‘scored’ highly against the evaluation criteria and the relationship between ‘top scoring’ teams at TRECVid and the ‘top scoring’ papers in terms of citations is analysed. A strong relationship was found between ‘success’ at TRECVid and ‘success’ at citations both for high scoring and low scoring teams. The implications of the study in terms of the value of TRECVid as a research activity, and the value of bibliometric analysis as a research evaluation tool, are discussed

    Sub-word indexing and blind relevance feedback for English, Bengali, Hindi, and Marathi IR

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    The Forum for Information Retrieval Evaluation (FIRE) provides document collections, topics, and relevance assessments for information retrieval (IR) experiments on Indian languages. Several research questions are explored in this paper: 1. how to create create a simple, languageindependent corpus-based stemmer, 2. how to identify sub-words and which types of sub-words are suitable as indexing units, and 3. how to apply blind relevance feedback on sub-words and how feedback term selection is affected by the type of the indexing unit. More than 140 IR experiments are conducted using the BM25 retrieval model on the topic titles and descriptions (TD) for the FIRE 2008 English, Bengali, Hindi, and Marathi document collections. The major findings are: The corpus-based stemming approach is effective as a knowledge-light term conation step and useful in case of few language-specific resources. For English, the corpusbased stemmer performs nearly as well as the Porter stemmer and significantly better than the baseline of indexing words when combined with query expansion. In combination with blind relevance feedback, it also performs significantly better than the baseline for Bengali and Marathi IR. Sub-words such as consonant-vowel sequences and word prefixes can yield similar or better performance in comparison to word indexing. There is no best performing method for all languages. For English, indexing using the Porter stemmer performs best, for Bengali and Marathi, overlapping 3-grams obtain the best result, and for Hindi, 4-prefixes yield the highest MAP. However, in combination with blind relevance feedback using 10 documents and 20 terms, 6-prefixes for English and 4-prefixes for Bengali, Hindi, and Marathi IR yield the highest MAP. Sub-word identification is a general case of decompounding. It results in one or more index terms for a single word form and increases the number of index terms but decreases their average length. The corresponding retrieval experiments show that relevance feedback on sub-words benefits from selecting a larger number of index terms in comparison with retrieval on word forms. Similarly, selecting the number of relevance feedback terms depending on the ratio of word vocabulary size to sub-word vocabulary size almost always slightly increases information retrieval effectiveness compared to using a fixed number of terms for different languages

    Spoken content retrieval: A survey of techniques and technologies

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    Speech media, that is, digital audio and video containing spoken content, has blossomed in recent years. Large collections are accruing on the Internet as well as in private and enterprise settings. This growth has motivated extensive research on techniques and technologies that facilitate reliable indexing and retrieval. Spoken content retrieval (SCR) requires the combination of audio and speech processing technologies with methods from information retrieval (IR). SCR research initially investigated planned speech structured in document-like units, but has subsequently shifted focus to more informal spoken content produced spontaneously, outside of the studio and in conversational settings. This survey provides an overview of the field of SCR encompassing component technologies, the relationship of SCR to text IR and automatic speech recognition and user interaction issues. It is aimed at researchers with backgrounds in speech technology or IR who are seeking deeper insight on how these fields are integrated to support research and development, thus addressing the core challenges of SCR

    Evaluation via Negativa of Chinese Word Segmentation for Information Retrieval

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    A Continuum-Based Approach for Tightness Analysis of Chinese Semantic Units

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    PACLIC 23 / City University of Hong Kong / 3-5 December 200

    Relating Dependent Terms in Information Retrieval

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    Les moteurs de recherche font partie de notre vie quotidienne. Actuellement, plus d’un tiers de la population mondiale utilise l’Internet. Les moteurs de recherche leur permettent de trouver rapidement les informations ou les produits qu'ils veulent. La recherche d'information (IR) est le fondement de moteurs de recherche modernes. Les approches traditionnelles de recherche d'information supposent que les termes d'indexation sont indĂ©pendants. Pourtant, les termes qui apparaissent dans le mĂȘme contexte sont souvent dĂ©pendants. L’absence de la prise en compte de ces dĂ©pendances est une des causes de l’introduction de bruit dans le rĂ©sultat (rĂ©sultat non pertinents). Certaines Ă©tudes ont proposĂ© d’intĂ©grer certains types de dĂ©pendance, tels que la proximitĂ©, la cooccurrence, la contiguĂŻtĂ© et de la dĂ©pendance grammaticale. Dans la plupart des cas, les modĂšles de dĂ©pendance sont construits sĂ©parĂ©ment et ensuite combinĂ©s avec le modĂšle traditionnel de mots avec une importance constante. Par consĂ©quent, ils ne peuvent pas capturer correctement la dĂ©pendance variable et la force de dĂ©pendance. Par exemple, la dĂ©pendance entre les mots adjacents "Black Friday" est plus importante que celle entre les mots "road constructions". Dans cette thĂšse, nous Ă©tudions diffĂ©rentes approches pour capturer les relations des termes et de leurs forces de dĂ©pendance. Nous avons proposĂ© des mĂ©thodes suivantes: ─ Nous rĂ©examinons l'approche de combinaison en utilisant diffĂ©rentes unitĂ©s d'indexation pour la RI monolingue en chinois et la RI translinguistique entre anglais et chinois. En plus d’utiliser des mots, nous Ă©tudions la possibilitĂ© d'utiliser bi-gramme et uni-gramme comme unitĂ© de traduction pour le chinois. Plusieurs modĂšles de traduction sont construits pour traduire des mots anglais en uni-grammes, bi-grammes et mots chinois avec un corpus parallĂšle. Une requĂȘte en anglais est ensuite traduite de plusieurs façons, et un score classement est produit avec chaque traduction. Le score final de classement combine tous ces types de traduction. Nous considĂ©rons la dĂ©pendance entre les termes en utilisant la thĂ©orie d’évidence de Dempster-Shafer. Une occurrence d'un fragment de texte (de plusieurs mots) dans un document est considĂ©rĂ©e comme reprĂ©sentant l'ensemble de tous les termes constituants. La probabilitĂ© est assignĂ©e Ă  un tel ensemble de termes plutĂŽt qu’a chaque terme individuel. Au moment d’évaluation de requĂȘte, cette probabilitĂ© est redistribuĂ©e aux termes de la requĂȘte si ces derniers sont diffĂ©rents. Cette approche nous permet d'intĂ©grer les relations de dĂ©pendance entre les termes. Nous proposons un modĂšle discriminant pour intĂ©grer les diffĂ©rentes types de dĂ©pendance selon leur force et leur utilitĂ© pour la RI. Notamment, nous considĂ©rons la dĂ©pendance de contiguĂŻtĂ© et de cooccurrence Ă  de diffĂ©rentes distances, c’est-Ă -dire les bi-grammes et les paires de termes dans une fenĂȘtre de 2, 4, 8 et 16 mots. Le poids d’un bi-gramme ou d’une paire de termes dĂ©pendants est dĂ©terminĂ© selon un ensemble des caractĂšres, en utilisant la rĂ©gression SVM. Toutes les mĂ©thodes proposĂ©es sont Ă©valuĂ©es sur plusieurs collections en anglais et/ou chinois, et les rĂ©sultats expĂ©rimentaux montrent que ces mĂ©thodes produisent des amĂ©liorations substantielles sur l'Ă©tat de l'art.Search engine has become an integral part of our life. More than one-third of world populations are Internet users. Most users turn to a search engine as the quick way to finding the information or product they want. Information retrieval (IR) is the foundation for modern search engines. Traditional information retrieval approaches assume that indexing terms are independent. However, terms occurring in the same context are often dependent. Failing to recognize the dependencies between terms leads to noise (irrelevant documents) in the result. Some studies have proposed to integrate term dependency of different types, such as proximity, co-occurrence, adjacency and grammatical dependency. In most cases, dependency models are constructed apart and then combined with the traditional word-based (unigram) model on a fixed importance proportion. Consequently, they cannot properly capture variable term dependency and its strength. For example, dependency between adjacent words “black Friday” is more important to consider than those of between “road constructions”. In this thesis, we try to study different approaches to capture term relationships and their dependency strengths. We propose the following methods for monolingual IR and Cross-Language IR (CLIR): We re-examine the combination approach by using different indexing units for Chinese monolingual IR, then propose the similar method for CLIR. In addition to the traditional method based on words, we investigate the possibility of using Chinese bigrams and unigrams as translation units. Several translation models from English words to Chinese unigrams, bigrams and words are created based on a parallel corpus. An English query is then translated in several ways, each producing a ranking score. The final ranking score combines all these types of translations. We incorporate dependencies between terms in our model using Dempster-Shafer theory of evidence. Every occurrence of a text fragment in a document is represented as a set which includes all its implied terms. Probability is assigned to such a set of terms instead of individual terms. During query evaluation phase, the probability of the set can be transferred to those of the related query, allowing us to integrate language-dependent relations to IR. We propose a discriminative language model that integrates different term dependencies according to their strength and usefulness to IR. We consider the dependency of adjacency and co-occurrence within different distances, i.e. bigrams, pairs of terms within text window of size 2, 4, 8 and 16. The weight of bigram or a pair of dependent terms in the final model is learnt according to a set of features. All the proposed methods are evaluated on several English and/or Chinese collections, and experimental results show these methods achieve substantial improvements over state-of-the-art baselines

    Applying digital content management to support localisation

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    The retrieval and presentation of digital content such as that on the World Wide Web (WWW) is a substantial area of research. While recent years have seen huge expansion in the size of web-based archives that can be searched efficiently by commercial search engines, the presentation of potentially relevant content is still limited to ranked document lists represented by simple text snippets or image keyframe surrogates. There is expanding interest in techniques to personalise the presentation of content to improve the richness and effectiveness of the user experience. One of the most significant challenges to achieving this is the increasingly multilingual nature of this data, and the need to provide suitably localised responses to users based on this content. The Digital Content Management (DCM) track of the Centre for Next Generation Localisation (CNGL) is seeking to develop technologies to support advanced personalised access and presentation of information by combining elements from the existing research areas of Adaptive Hypermedia and Information Retrieval. The combination of these technologies is intended to produce significant improvements in the way users access information. We review key features of these technologies and introduce early ideas for how these technologies can support localisation and localised content before concluding with some impressions of future directions in DCM
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