4 research outputs found

    Improving large-scale k-nearest neighbor text categorization with label autoencoders

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    In this paper, we introduce a multi-label lazy learning approach to deal with automatic semantic indexing in large document collections in the presence of complex and structured label vocabularies with high inter-label correlation. The proposed method is an evolution of the traditional k-Nearest Neighbors algorithm which uses a large autoencoder trained to map the large label space to a reduced size latent space and to regenerate the predicted labels from this latent space. We have evaluated our proposal in a large portion of the MEDLINE biomedical document collection which uses the Medical Subject Headings (MeSH) thesaurus as a controlled vocabulary. In our experiments we propose and evaluate several document representation approaches and different label autoencoder configurations.Ministerio de Ciencia e Innovaci贸n | Ref. PID2020-113230RB-C2

    Surfing the modeling of pos taggers in low-resource scenarios

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    The recent trend toward the application of deep structured techniques has revealed the limits of huge models in natural language processing. This has reawakened the interest in traditional machine learning algorithms, which have proved still to be competitive in certain contexts, particularly in low-resource settings. In parallel, model selection has become an essential task to boost performance at reasonable cost, even more so when we talk about processes involving domains where the training and/or computational resources are scarce. Against this backdrop, we evaluate the early estimation of learning curves as a practical mechanism for selecting the most appropriate model in scenarios characterized by the use of non-deep learners in resource-lean settings. On the basis of a formal approximation model previously evaluated under conditions of wide availability of training and validation resources, we study the reliability of such an approach in a different and much more demanding operational environment. Using as a case study the generation of pos taggers for Galician, a language belonging to the Western Ibero-Romance group, the experimental results are consistent with our expectations.Ministerio de Ciencia e Innovaci贸n | Ref. PID2020-113230RB-C21Ministerio de Ciencia e Innovaci贸n | Ref. PID2020-113230RB-C22Xunta de Galicia | Ref. ED431C 2020/1

    Early stopping by correlating online indicators in neural networks

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    Financiado para publicaci贸n en acceso aberto: Universidade de Vigo/CISUGinfo:eu-repo/grantAgreement/AEI/Plan Estatal de Investigaci贸n Cient铆fica y T茅cnica y de Innovaci贸n 2013-2016/TIN2017-85160-C2-2-R/ES/AVANCES EN NUEVOS SISTEMAS DE EXTRACCION DE RESPUESTAS CON ANALISIS SEMANTICO Y APRENDIZAJE PROFUNDOinfo:eu-repo/grantAgreement/AEI/Plan Estatal de Investigaci贸n Cient铆fica y T茅cnica y de Innovaci贸n 2017-2020/PID2020-113230RB-C22/ES/SEQUENCE LABELING MULTITASK MODELS FOR LINGUISTICALLY ENRICHED NER: SEMANTICS AND DOMAIN ADAPTATION (SCANNER-UVIGO)In order to minimize the generalization error in neural networks, a novel technique to identify overfitting phenomena when training the learner is formally introduced. This enables support of a reliable and trustworthy early stopping condition, thus improving the predictive power of that type of modeling. Our proposal exploits the correlation over time in a collection of online indicators, namely characteristic functions for indicating if a set of hypotheses are met, associated with a range of independent stopping conditions built from a canary judgment to evaluate the presence of overfitting. That way, we provide a formal basis for decision making in terms of interrupting the learning process. As opposed to previous approaches focused on a single criterion, we take advantage of subsidiarities between independent assessments, thus seeking both a wider operating range and greater diagnostic reliability. With a view to illustrating the effectiveness of the halting condition described, we choose to work in the sphere of natural language processing, an operational continuum increasingly based on machine learning. As a case study, we focus on parser generation, one of the most demanding and complex tasks in the domain. The selection of cross-validation as a canary function enables an actual comparison with the most representative early stopping conditions based on overfitting identification, pointing to a promising start toward an optimal bias and variance control.Agencia Estatal de Investigaci贸n | Ref. TIN2017-85160-C2-2-RAgencia Estatal de Investigaci贸n | Ref. PID2020-113230RB-C22Xunta de Galicia | Ref. ED431C 2018/5

    Soluci贸n tecnol贸xica para PREVIN-MAT

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    Este proxecto realiza a implementaci贸n tecnol贸xica dun proceso de avaliaci贸n cognitiva e matem谩tica de alumnado de idade escolar. Este proceso de avaliaci贸n 茅 un est谩ndar utilizado amplamente. Est谩 composto por un conxunto de escalas, que 谩 s煤a vez est谩n compostas de probas e estas est谩n formadas por exercicios. Un avaliador/a realiza unha avaliaci贸n cun alumno/a dirixindo o proceso de realizaci贸n de todos os exercicios, tendo cada un deles unha mec谩nica diferente e un conxunto de caracter铆sticas de execuci贸n e medici贸n dos resultados espec铆fico. Os resultados e os datos de execuci贸n (como tempo, n煤mero de intentos ou n煤mero de erros) almac茅nanse para cada proba de cada avaliaci贸n para un posterior c谩lculo de cualificaci贸ns normalizadas para cada alumno/a. Esta ferramenta est谩 constru铆da nunha arquitectura cliente-servidor cun servidor Apache, linguaxe de programaci贸n PHP e base de datos MYSQL
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