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| 共计 55 道试题
1 . 汉译英
1. ________v.作曲;组成;撰写;使镇静→________n.作曲家,作曲者
2. ________adj. 激动人心的,引人注目的;突然的;戏剧的;夸张的→________n. 戏剧;戏剧艺术→________adv. 戏剧性地;引人注目地
3. ________vt.&vi.(使)融合;(使)结合,(使)混合;兼做;合并→________n.结合;联合;结合体→________adj.联合的;总计的
4. ________n. 周围,环境→________adj.周围的;附近的→________v.包围,围绕,环绕
5. ________n.改编本,改写本;适应→________adj.能适应的;有适应能力的→________v. 使适应,使适合;改编,改写;适应
6. ________adj.合适的,适宜的,适当的,适用的→________v. 适合,使适合;有利于;相配 n.一套衣服;副;套
7. ________n. 录音,视频;录制;记录,记载→________n. 记录,记载 v.记录,将……录音→ ________n.法官;记录员;录音机;录像机
8. ________ adj. 遥远的,远处的,久远的;冷淡的;远亲的→________n.距离;远处;冷淡,疏远 v. 拉开距离;与……疏远→________adv.冷淡地;遥远地;模糊地
9. ________n. 呼吸的空气;一次吸入的空气;微量,迹象→________v.呼吸;呼气
10. ________adj. 特别的,不寻常的;独特的,与众不同的→________ adj. 寻常的,惯常的,通常的→________adv. 通常,经常地
11. ________adj. 非凡的,奇异的,显著的,引人注目的→________ n.言论,评论 v.评论,谈及,谈论
12. ________n.预言,预测→________adj. 可预见的→________v.预言;预报
13. ________v.使抑郁,使沮丧;使萧条,使不景气→________n.不景气;沮丧,消沉→________adj.抑郁的 n.抑郁症患者
2022-06-19更新 | 63次组卷 | 2卷引用:牛津译林2020版选择性必修二Unit2 Extended reading课前预习
单词拼写-根据汉语意思填空 | 适中(0.65) |
2 . I watched a performance of Butterfly Lovers, a beautiful violin concerto ________ (作曲) by He Zhanhao and Chen Gang. (根据汉语提示单词拼写)
语法填空-单句语填(约10词) | 适中(0.65) |
3 . I am the office manager for a family business________ (compose) of three partners a father and two sons. (所给词的适当形式填空)
2021-08-20更新 | 41次组卷 | 1卷引用:北师大版2019 必修三 Unit 7 Lesson 3 A Musical Genius
语法填空-单句语填(约0词) | 适中(0.65) |
4 . Mozart________ (compose)his last opera shortly before he died. (所给词的适当形式填空)
5 . Directions: Fill in each blank with a proper word chosen from the box. Each word can be used only once. Note that there is one word more than you need.
A. consisted  B. composing  C. measures  D. account  E. patterns  F. limitations
G. moderately  H. progressed  I. distribution  J. significantly  K. complement

AI can distinguish between bots and humans based on Twitter activity

Artificial intelligence is being used to spot the difference between human users and fake accounts on Twitter.

Emilio Ferrara at the University of Southern California in the US, and his colleagues have trained an AI to detect bots on Twitter based on differences in     1     of activity between real and fake accounts.

The team analysed two separate datasets of Twitter users, which had been classified either manually or by a pre-existing algorithm as either bot or human.

The manually verified dataset     2     of 8.4 million tweets from 3500 human accounts, and 3.4 million tweets from 5000 bots.

The researchers found that human users replied four to five times more often to other tweets than bots did. Real users gradually become more interactive, with the fraction of replies increasing over the course of an hour-long session of Twitter use.

The length of tweets by human users also decreased as sessions     3    . “The amount of information that is exchanged diminishes,” says Ferrara. He believes that the change may result from a cognitive depletion over time, in which people become less likely to expend mental effort    4     original content.

Bots, on the other hand, show no changes in their interactivity or the length of information they tweet over time.

The team also analysed the amount of time between any two consecutive (连读的) tweets from a single user. When this     5     is plotted, bots showed spikes for certain time gaps, such as tweeting at 30-minute or 60-minute intervals.

The team then combined these     6     to train an existing bot-detection algorithm, called Botometer, on the difference in activity patterns. The AI was     7     more likely to accurately detect to fake accounts than when it was not taking into     8     the timing of posts.

The algorithm could be used to     9     other bot-detection tools that analyse the language within posts, says Ferrara.

One of the study’s     10     is that the Twitter data the team analysed is from three years ago. In that time, it’s possible that bots have become more human-like in their activity patterns.

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