dzmitry bahdanau, kyunghyun cho, and yoshua bengio. 2014. neural machine translation by jointly learning to align and
Neural machine translation is a recently proposed approach to machine translation. Unlike the traditional statistical machine translation, the neural machine translation aims at building a single neural network that can be jointly tuned to maximize the translation performance.
The models proposed as of late for brain machine interpretation frequently have a place with a group of encoder-decoders and comprises of an encoder that encodes a source sentence into a fixed-length vector from which a decoder creates an interpretation.
In this paper, we guess that the utilization of a fixed-length vector is a bottleneck in working on the exhibition of this essential encoder-decoder engineering, and propose to broaden this by permitting a model to naturally (delicate )look for parts of a source sentence that are pertinent to anticipating an objective word, without shaping these parts as a hard section unequivocally.
With this new methodology, we accomplish an interpretation execution equivalent to the current cutting edge state put together framework with respect to the undertaking of English-to-French interpretation. Moreover, subjective examination uncovers that the (delicate )arrangements found by the model concur well with our instinct.
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Answer:
i believe it is tied knots, since they had to memorize messages and run it across a trail
Question:What is the main idea of this excerpt from an article in the u.s constitution?
Answer: <u>The constitution establishes the Supreme Court as the country's top court.</u>
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Answer:
D. As a teacher, I support this bill to lower class size.
Explanation:
Answer:
Explanation:Digital divide refers to the gap between demographics and regions which have access to modern information.
Explanation:
The correct answer is B. People from some racial or ethnic groups have unequal access to computing technology.
Conclusion:
The different regions have difference in knowledge of the device. Also some regions have lack of access to infrastructure which are required to run a device.