scholarly journals Parallel Text Ranking for Cleaning Up Translation Memory

Author(s):  
Tsutomu MATSUNAGA ◽  
Shogo SHINKAI ◽  
Takashi SUENAGA
2020 ◽  
Vol 499 (3) ◽  
pp. 4054-4067
Author(s):  
Steven Cunnington ◽  
Stefano Camera ◽  
Alkistis Pourtsidou

ABSTRACT Potential evidence for primordial non-Gaussianity (PNG) is expected to lie in the largest scales mapped by cosmological surveys. Forthcoming 21 cm intensity mapping experiments will aim to probe these scales by surveying neutral hydrogen (H i) within galaxies. However, foreground signals dominate the 21 cm emission, meaning foreground cleaning is required to recover the cosmological signal. The effect this has is to damp the H i power spectrum on the largest scales, especially along the line of sight. Whilst there is agreement that this contamination is potentially problematic for probing PNG, it is yet to be fully explored and quantified. In this work, we carry out the first forecasts on fNL that incorporate simulated foreground maps that are removed using techniques employed in real data. Using an Monte Carlo Markov Chain analysis on an SKA1-MID-like survey, we demonstrate that foreground cleaned data recovers biased values [$f_{\rm NL}= -102.1_{-7.96}^{+8.39}$ (68 per cent CL)] on our fNL = 0 fiducial input. Introducing a model with fixed parameters for the foreground contamination allows us to recover unbiased results ($f_{\rm NL}= -2.94_{-11.9}^{+11.4}$). However, it is not clear that we will have sufficient understanding of foreground contamination to allow for such rigid models. Treating the main parameter $k_\parallel ^\text{FG}$ in our foreground model as a nuisance parameter and marginalizing over it, still recovers unbiased results but at the expense of larger errors ($f_{\rm NL}= 0.75^{+40.2}_{-44.5}$), which can only be reduced by imposing the Planck 2018 prior. Our results show that significant progress on understanding and controlling foreground removal effects is necessary for studying PNG with H i intensity mapping.


2013 ◽  
Vol 311 ◽  
pp. 158-163 ◽  
Author(s):  
Li Qin Huang ◽  
Li Qun Lin ◽  
Yan Huang Liu

MapReduce framework of cloud computing has an effective way to achieve massive text categorization. In this paper a distributed parallel text training algorithm in cloud computing environment based on multi-class Support Vector Machines(SVM) is designed. In cloud computing environment Map tasks realize distributing various types of samples and Reduce tasks realize the specific SVM training. Experimental results show that the execution time of text training decreases with the number of Reduce tasks increasing. Also a parallel text classifying based on cloud computing is designed and implemented, which classify the unknown type texts. Experimental results show that the speed of text classifying increases with the number of Map tasks increasing.


2021 ◽  
pp. 1-23
Author(s):  
Dawn LaValle Norman

Abstract The contest over the resurrection of the body used the scientific authority of Aristotle as ammunition on both sides. Past scholars have read Methodius of Olympus as displaying an anti-Aristotelian bias. In contrast, through close reading of the entire text with attention to characterization and development of argument, I prove that Methodius of Olympus’ dialogue the De Resurrectione utilizes Aristotelian biology as a morally neutral tool. To put this into higher relief, I compare Methodius’ dialogue with the anonymous Dialogue of Adamantius, a text directly dependent upon the Methodius’ De Resurrectione, but which rejects arguments based on scientific reasoning. Reading Methodius’ De Resurrectione with greater attention to the whole and putting it in the context of its nearest parallel text retells the traditional story of early Christian resistance to Aristotle. Methodius of Olympus’ characters, although they view scientific knowledge as subordinate to philosophy, see it as neutral in and of itself.


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