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Tài liệu Báo cáo khoa học: "Discriminative Lexicon Adaptation for Improved Character Accuracy – A New Direction in Chinese Language Modeling" pptx

Tài liệu Báo cáo khoa học:

Tài liệu Báo cáo khoa học: "Discriminative Lexicon Adaptation for Improved Character Accuracy A New Direction in Chinese Language Modeling" pptx

... Improved Character Accuracy A New Direction in Chinese Language ModelingYi-cheng PanSpeech Processing LabratoryNational Taiwan UniversityTaipei, Taiwan 10617thomashughPan@gmail.comLin-shan ... therelative increased character accuracy to the relat iveincreased MAP for the three lexicon adaptation ap-proaches are different. A key factor making theproposed LAICA approach advantageous ... whichdefinitely can not be replaced by characters, we cantreat words as a means to enhance character recog-nition accuracy. Such arguments stand at least for Chinese ASR since they evaluate on character...
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Tài liệu Báo cáo khoa học:

Tài liệu Báo cáo khoa học: "Translation Model Adaptation for Statistical Machine Translation with Monolingual Topic Information" doc

... domain to anoth-er, for example, from newswire to weblog.According to adaptation emphases, domain adap-tation in SMT can be classified into translation mod-el adaptation and language model adaptation. ... 2007.Bilingual LSA-based adaptation for statistical machinetranslation. Machine Translation, pages 187-207.Nicola Ueffing, Gholamreza Haffari and Anoop Sarkar.2008. Semi-supervised Model Adaptation ... Adaptation for Statisti-cal Machine Translation. Machine Translation, pages77-94.Hua Wu, Haifeng Wang and Chengqing Zong. 2008. Do-main Adaptation for Statistical Machine Translationwith Domain...
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Tài liệu Báo cáo khoa học:

Tài liệu Báo cáo khoa học: "The Software Architecture for the First Challenge on Generating Instructions in Virtual Environments" docx

... con-tain a number of objects such as chairs and flowerswhich are irrelevant for the task, but can be usedas landmarks by a generation system.Users are asked to fill out a before- and after-game ... to the Matchmaker; these then arestored in the database for later analysis.All of these components are implemented in Java. This allows the client to be portable acrossall major operating systems, ... EdinburghJ.Oberlander@ed.ac.ukKristina StriegnitzUnion Collegestriegnk@union.eduAbstractThe GIVE Challenge is a new Internet-based evaluation effort for natural lan-guage generation systems. In this paper,we motivate and...
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Tài liệu Báo cáo khoa học:

Tài liệu Báo cáo khoa học: "Discriminative Pruning for Discriminative ITG Alignment" pdf

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...
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Tài liệu Báo cáo khoa học:

Tài liệu Báo cáo khoa học: "Discriminative Word Alignment with Conditional Random Fields" ppt

... model.Dice and Model 1 As we have access to only a small amount of word aligned data we wish to beable to incorporate information about word associ-ation from any sentence aligned data available. A common ... string matching features inspired by similarfeatures in Taskar et al. (2005). We use an indica-tor feature for every possible source-target wordpair in the training data. In addition, we includeindicator ... Model 1translation probability as real-valued features for each candidate pair, as well as a normalised score67over all possible candidate alignments for each tar-get word. We derive a feature...
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Tài liệu Báo cáo khoa học:

Tài liệu Báo cáo khoa học: "Discriminative Syntactic Language Modeling for Speech Recognition" pdf

... syntactic language model has the taskof modeling a distribution over strings in the lan-guage, in a very similar way to traditional n-gram language models. The Structured Language Model(Chelba ... reranking approach with syntacticinformation within a machine translation system.Rosenfeld et al. (2001) investigated the use ofsyntactic features in a Maximum Entropy approach. In their paper, ... due to a larger training set being used in our experiments;we have added data that was used as held-out data in (Roark et al., 2005) to the training set that we use.The first additional features...
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Tài liệu Báo cáo khoa học:

Tài liệu Báo cáo khoa học: "Spontaneous Lexicon Change" ppt

... population is changing. Then we introduce stochasticity in language use and show that this leads to a constant innova- tion (new forms and new form-meaning associ- ations) and a maintenance ... explaining lexicon change. 1 Introduction Natural language evolution takes place at all levels of language (McMahon, 1994). This is partly due to external factors such as language contact ... by internal factors. In order to have any explanatory force at all, we cannot put into the model the ingredients that we try to explain. Innovation, mainte- nance of variation, and change...
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Tài liệu Báo cáo khoa học: Modulation of F0F1-ATP synthase activity by cyclophilin D regulates matrix adenine nucleotide levels pptx

Tài liệu Báo cáo khoa học: Modulation of F0F1-ATP synthase activity by cyclophilin D regulates matrix adenine nucleotide levels pptx

... thereforereasonable to assume that a change in matrix ADP–ATP conversion rate caused by a change in F0F1-ATPsynthase activity may not result in an altered rate ofADP in ux (or ATP in ux, in ... thecalculations are shown in Table 1. As shown in Table 1, the increase in ADP–ATP exchange rate med-iated by the ANT as a result of a 30% increase in F0F1-ATP synthase activity is in the range ... extra-mitochondrial compartment for as long as the innermitochondrial membrane remains intact.ResultsADP–ATP exchange rates in intact mitochondriaand ATP hydrolysis rates in permeabilized mito-chondriaADP–ATP...
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Tài liệu Báo cáo khoa học: Nucleolin/C23 mediates the antiapoptotic effect of heat shock protein 70 during oxidative stress pptx

Tài liệu Báo cáo khoa học: Nucleolin/C23 mediates the antiapoptotic effect of heat shock protein 70 during oxidative stress pptx

... Changsha, Hunan, China2 Department of Burns and Plastic Surgery, Xiangya Hospital, Central South University, Changsha, Hunan, ChinaIntroductionCharacterized by cellular and nuclear shrinkage, ... the activity of caspase-3 was analy-sed as a marker of apoptotic cells using an in vitrosubstrate-cleaving reaction. As shown in Fig. 6D,H2O2-induced apoptosis was increased in cells trans-fected ... JM,Garrido C et al. (2001) Heat-shock protein 70 antago-nizes apoptosis-inducing factor. Nat Cell Biol 3, 83 9–8 43.24 Jiang B, Wang K, Xiao W, Wang H & Xiao X (2009)ATP-binding domain of heat shock...
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Tài liệu Báo cáo khoa học: Degradation of tropoelastin by matrix metalloproteinases – cleavage site specificities and release of matrikines pptx

Tài liệu Báo cáo khoa học: Degradation of tropoelastin by matrix metalloproteinases cleavage site specificities and release of matrikines pptx

... elution using a linear binarygradient: 5–6 5% ACN in 0.1% formic acid in 35 min,maintenance at 65% ACN for 10 min, and 6 5–5 % ACN in 10 min.The typical operating conditions for the mass spectrome-ter ... B in 60 min, linear gradient of 5 0–1 00% sol-vent B in 2 min, maintenance at 100% solvent B for 6 min,and linear gradient of 10 0–5 % solvent B in 2 min. The col-umn was maintained at 30 °C and ... beta-galactosidase. J Clin Invest91, 119 8–1 205.24 Privitera S, Prody CA, Callahan JW & Hinek A (1998)The 67-kDa enzymatically inactive alternatively splicedvariant of beta-galactosidase...
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