60,651 research outputs found
Automatic Translating Between Ancient Chinese and Contemporary Chinese with Limited Aligned Corpora
The Chinese language has evolved a lot during the long-term development.
Therefore, native speakers now have trouble in reading sentences written in
ancient Chinese. In this paper, we propose to build an end-to-end neural model
to automatically translate between ancient and contemporary Chinese. However,
the existing ancient-contemporary Chinese parallel corpora are not aligned at
the sentence level and sentence-aligned corpora are limited, which makes it
difficult to train the model. To build the sentence level parallel training
data for the model, we propose an unsupervised algorithm that constructs
sentence-aligned ancient-contemporary pairs by using the fact that the aligned
sentence pair shares many of the tokens. Based on the aligned corpus, we
propose an end-to-end neural model with copying mechanism and local attention
to translate between ancient and contemporary Chinese. Experiments show that
the proposed unsupervised algorithm achieves 99.4% F1 score for sentence
alignment, and the translation model achieves 26.95 BLEU from ancient to
contemporary, and 36.34 BLEU from contemporary to ancient.Comment: Acceptted by NLPCC 201
Modeling Spacing Distribution of Queuing Vehicles in Front of a Signalized Junction Using Random-Matrix Theory
Modeling of headway/spacing between two consecutive vehicles has many
applications in traffic flow theory and transport practice. Most known
approaches only study the vehicles running on freeways. In this paper, we
propose a model to explain the spacing distribution of queuing vehicles in
front of a signalized junction based on random-matrix theory. We show that the
recently measured spacing distribution data well fit the spacing distribution
of a Gaussian symplectic ensemble (GSE). These results are also compared with
the spacing distribution observed for car parking problem. Why
vehicle-stationary-queuing and vehicle-parking have different spacing
distributions (GSE vs GUE) seems to lie in the difference of driving patterns
The roles of endoglin gene in cerebrovascular diseases.
Endoglin (ENG, also known as CD105) is a transforming growth factor β (TGFβ) associated receptor and is required for both vasculogenesis and angiogenesis. Angiogenesis is important in the development of cerebral vasculature and in the pathogenesis of cerebral vascular diseases. ENG is an essential component of the endothelial nitric oxide synthase activation complex. Animal studies showed that ENG deficiency impairs stroke recovery. ENG deficiency also impairs the regulation of vascular tone, which contributes to the pathogenesis of brain arteriovenous malformation (bAVM) and vasospasm. In human, functional haploinsufficiency of ENG gene causes type I hereditary hemorrhagic telangiectasia (HHT1), an autosomal dominant disorder. Compared to normal population, HHT1 patients have a higher prevalence of AVM in multiple organs including the brain. Vessels in bAVM are fragile and tend to rupture, causing hemorrhagic stroke. High prevalence of pulmonary AVM in HHT1 patients are associated with a higher incidence of paradoxical embolism in the cerebral circulation causing ischemic brain injury. Therefore, HHT1 patients are at risk for both hemorrhagic and ischemic stroke. This review summarizes the possible mechanism of ENG in the pathogenesis of cerebrovascular diseases in experimental animal models and in patients
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