问题 问答题 论述题

欧洲货币市场信用扩张的形式。

答案

参考答案:

欧洲货币泛指存放于某一国境外银行的该国货币。欧洲货币市场即在某种货币发行国国境之外从事该种货币借贷的市场。

欧洲货币市场产生与发展的原因。

2.欧洲货币市场的类型。按其在岸业务与离岸业务的关系可分为三种类型:一体型、分离型、走账型或簿记型。

3.欧洲货币市场的特点

⑴市场范围广阔,不受地理限制,交易规模巨大,交易品种、币种繁多。

⑵经营自由,一般不受所在国金融当局的管制。

⑶利率结构独特,存款利率相对高,贷款利率相对低,利差小,因而对存贷方都有吸引力。

填空题
填空题

A computer model has been developed that can predict what word you are thinking of. (41) Researchers led by Tom Mitchell of Carnegie Mellon University in Pittsburgh, Pennsylvania, "trained" a computer model to recognize the patterns of brain activity associated with 60 images, each of which represented a different noun, such as "celery" or "aeroplane".

(42) . Words such as "hammer", for example, axe known to cause movement-related areas of the brain to light up; on the other hand, the word "castle" triggers activity in regions that process spatial information. Mitchell and his colleagues also knew that different nouns are associated more often with some verbs than with others--the verb "eat", for example, is more likely to be found in conjunction with "celery" than with "aeroplane". The researchers designed the model to try and use these semantic links to work out how the brain would react to particular nouns. They fed 25 such verbs into the model.

(43) . The researchers then fed the model 58 of the 60 nouns to train it. For each noun, the model sorted through a trillion-word body of text to find how it was related to the 25 verbs, and how that related to the activation pattern. After training, the models were put to the test. Their task was to predict the pattern of activity for the two missing words from the group of 60, and then to deduce which word was which. On average, the models came up with the right answer more than three-quarters of the time.

The team then went one step further, this time training the models on 59 of the 60 test words, and then showing them a new brain activity pattern and offering them a choice of 1 001 words to match it. The models performed well above chance when they were made to rank the 1001 words according to how well they matched the pattern. The idea is similar to another "brain-reading" technique. (44) . It shouldn’t be too difficult to get the model to choose accurately between a larger number of words, says John-Dylan Haynes.

An average English speaker knows 50 000 words, Mitchell says, so the model could in theory be used to select any word a subject chooses to think of. Even whole sentences might not be too distant a prospect for the model, saysMitchell. "Now that we can see individual words, it gives the scaffolding for starting to see what the brain does with multiple words as it assembles them," he says. (45)

Models such as this one could also be useful in diagnosing disorders of language or helping students pick up a foreign language. In semantic dementia, for example, people lose the ability to remember the meanings of things--shown a picture of a chihuahua, they can only recall "dog", for example--but little is known about what exactly goes wrong in the brain. "We could look at what the neural encoding is for this," says Mitchell.

[A] The team then used functional magnetic resonance imaging (FMRI) to scan the brains of 9 volunteers as they looked at images of the nouns

[B] The study can predict what picture a person is seeing from a selection of more than 100, reported by Nature earlier this year

[C] The model may help to resolve questions about how the brain processes words and language, and might even lead to techniques for decoding people’s thoughts

[D] This gives researchers the chance to understand the "mental chemistry" that the brain does when it processes such phrases, Mitchell suggests

[E] This research may be useful for a human computer interface but does not capture the complex network that allows a real brain to learn and use words in a creative way

[F] The team started with the assumption that the brain processes words in terms of how they relate to movement and sensory information

[G] The new model is different in that it has to look at the meanings of the words, rather than just lower-level visual features of a picture

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