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[阅读小分队] 【揽瓜阁5.0】Day10 2021.02.17【社会科学-科技、材料、疫苗】

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发表于 2021-2-16 22:53:24 | 只看该作者 回帖奖励 |正序浏览 |阅读模式
  揽瓜阁俱乐部第五期
  Day10 2021.02.17



【社会科学-科技】
How machine learning is revolutionising market intelligence:The business of gathering market-sensitive information is ripe for automation
(The Economist-751 字 长阅读)

The thames seems to draw people who work on intelligence-gathering. The spooks of mi6 are housed in a funky-looking building overlooking the river. Two miles downstream, in a shared office space near Blackfriars Bridge, lives Arkera, a firm that uses machine-learning technology to sort intelligence from newspapers, websites and other public sources for emerging-market investors. Its location is happenstance. London has the right time zone, between the Americas and Asia. It is a nice place to live. The Thames happens to run through it.

Arkera’s founders, Nav Gupta and Vinit Sahni, both have a background in “macro” hedge funds, the sort that like to bet on big moves in currencies and bond and stock prices ahead of predicted changes in the political climate. The firm’s clients might want a steer on the political risks affecting public finances in Brazil, or to gauge the social pressures that could arise as a consequence of an austerity programme in Egypt. It applies machine learning to find market intelligence and make it usable.

For many people, the use of such technologies in finance is the stuff of dystopian science fiction, of machines running amok. But once you look at market intelligence through the eyes of computer science, it provokes disquieting thoughts of a different kind. It gives a sense of just how creaky and haphazard the old-school, analogue business of intelligence-gathering has been.

Analysts have used text data to try to predict changes in asset prices for a century or more. In 1933 Alfred Cowles, an economist whose grandfather had founded the Chicago Tribune, published a pioneering paper in this vein. Cowles sorted stockmarket commentary by William Peter Hamilton, a long-ruling editor of the Wall Street Journal, into three buckets (bullish, bearish or doubtful) and attached an action to each (buy, sell or avoid). He concluded that investors would have done better simply to buy and hold the leading stocks in the Dow Jones index than to follow Hamilton’s steer.

The application of machine-learning models to text-as-data might seem a world away from Cowles’s approach. But in concept, it is similar. The relevant text is sought. Values are ascribed to it. A statistical model is applied. Its predictions are tested for robustness. Of course, with bags of computing power and suites of self-learning models, the enterprise is on a different scale from Cowles’s rudimentary exercise. The endless expanse of the internet means far richer source material. The range of possible values ascribed to it will be broader than “bullish, bearish or doubtful”. And self-learning algorithms can test and retest the combinations that yield the best predictions.

It is tempting to focus on the black-box elements of all this: the language software that “reads” the source text and the algorithms that use the data to make predictions. But this is like judging a hi-fi system by its speakers. A lot of the important work comes earlier in the process. Arkera, for instance, spends a lot of effort finding all the relevant text and “cleaning” it—stripping it of extraneous junk, such as captions and disclaimers. “A good signal is crucial,” says Mr Gupta.

He gives Brazil’s pension reform as an example. The country has 513 parliamentarians. They have social-media accounts, websites and blogs. They speak to the press—Brazil has scores of regional newspapers. All are potential sources of useful data. If you cut corners at this stage you might miss something that even the best statistical model cannot fix later. There is little point in having a cool amplifier and great speakers if the stylus on your record-player is worn out.

Any good emerging-market analyst knows this, too. If you bumped into one shortly after Brazil’s elections last year, he was probably on his way to Brasília to sound out prospects for a crucial pension reform. Without it, Brazil’s public debt would be certain to explode, sparking capital flight. In July a pension bill finally passed Brazil’s lower house. Arkera’s models tracked the leanings of Brazil’s politicians to get an early sense of the likely outcome. It would be hard for an analyst working unaided to mimic this reach, even if he was always on the ground and spoke perfect Portuguese.

Intelligence-gathering is a labour-intensive business. It is thus ripe for automation. That this is happening in finance is also natural. There is a well-defined objective (to make money). There is a well-defined end-point (buy, sell or avoid). Without such clarity of purpose, intelligence is an endless river. It is one undammed thing after another.

Source: The Economist


【社会科学-材料】
Residue Stress
( WSY -346 字 短精读)


Source: WSY


【社会科学-疫苗】
The European Union has begun a mass vaccination program
(BBC-3分00秒-精听)

先做听力再核对原文哦~


BBC News. I'm John Shay. The European Union has begun a mass vaccination program to protect the 450 million people in the block against the coronavirus. The scale of the campaign means that some countries have called on retired medics to help out while others have loosened rules on who can give the injections. Damien McGuinness has more details. Across Europe, the first groups are now receiving the jab. Individual countries are deciding who goes first. Most are prioritizing the elderly and health workers. In some countries, people started vaccinated ahead of the official rollout as soon as they got the first batches. Here in Germany, a nursing home vaccinated on Saturday. So the first person in Germany to get the vaccine was a 101-year-old woman. In Hungary and Slovakia, some health workers were also vaccinated on Saturday.

Israel is entering a third coronavirus lockdown later today, which is due to last for at least 2 weeks. The Prime Minister Benjamin Netanyahu has set a goal of vaccinating around 150,000 people a day within a week. Sebastian Usher reports. Israelis made use of their last hours before the new lockdown as they packed shopping malls and parks and two big outdoor parties were held in Tel Aviv. The new restrictions will confine them to within 1 kilometer of their homes with all nonessential shops and services closed. Two previous lockdown in April and September brought infections down, but rates have been rising againm, topping 3,000 a day in the past week. Hospitals treating coronavirus in Jerusalem are close to full capacity. There's also concern of a rash of cases of a new coronavirus strain. This is all despite the vaccination rollout having started a week ago.

Polling is underway in presidential and legislative elections in the Central African Republic, where President Faustin-Archange Touadera is seeking a second term in office. The vote has been overshadowed by a rebel offensive and UN peacekeepers are patrolling the streets in the capital Bangui. Kami Lefone of the French news agency AFP in Bangui says there's little optimism about the poll. If you ask anyone here, any experts, any Central African people or any humanitarian maker, they will all tell you that they don't see how this country could change in a positive way.

Because all the major issues that were the root of the crisis, when it solved and the election, especially if they are rigged, or if a few people vote, these elections are not gonna change anything.

Ballots are also being cast in the presidential election in Niger, where voters are choosing a successor to Mahamadou Issoufou. He's stepping down after completing the permitted two terms. Handing over power to a democratically elected successor would be the first such peaceful transition in Niger history. The favorite to win is the former interior and Foreign Minister Mohamed Bazoum. This is the latest world news from the BBC.

Source: BBC


【笔记格式要求】
同学们任选 2 篇文章精读/精听并进行笔记打卡

精读笔记格式要求:
1.总结文章中心大意
2.总结分论点或每段段落大意
3.摘抄印象深刻或者觉得优美的句子
4.总结文章中的生词
5.记录阅读时间、总结时间、总时间

精听笔记格式要求:
1.逐句听写整篇文章
2.对照原文修改听写稿,标记出错原因
3.总结文章中心大意
4.总结精听过程中的生词
5.记录听写时间、总结时间、总时间

这里也给大家三点学习小建议哦~
精读:如遇到读不懂的复杂句,建议找出句子主干,分析句子成分,也可以尝试翻译句子来帮助理解~
精听:建议每句不要反复纠结听,如果听 5 遍都没听出来,那就跳过,等完成后再回听总结原因,时间宝贵,不要过于执着哦~


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48#
发表于 2021-2-20 22:30:29 | 只看该作者
我想毕业 球球了

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47#
发表于 2021-2-19 14:33:42 | 只看该作者
day10补卡

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46#
发表于 2021-2-18 17:12:16 | 只看该作者
【社会科学-科技】
How machine learning is revolutionizing market intelligence:The business of gathering market-sensitive information is ripe for automation

5‘03

1.        A公司 智能收集整理信息
2.        A的业务
3.        历史上计算机收集信息
4.        用数据预测资本价格变化 早就出现了
5.        方法:收集信息-过滤无用-建模-预测
6.        各环节要严谨
7.        情报收集已经转向智能领域


Happenstance 偶然事件
Hedge 障碍
Gauge 规格
Austerity 严厉 朴素
Dystopian 反乌托邦的
Amok 狂乱的
Creaky 老朽的
Haphazard 偶然的
Analogue 类似物
Vein 使成脉络
Robustness 强健的
Rudimentary 基本的
Algorithm 运算法则


【社会科学-材料】
Residue Stress

2’45

1.        所有物质应力都有补偿效应 要消除应力
2.        残余应力可能有益或有害
3.        三种测算应力方式

Rigid 严格的
Trimming 修剪

45#
发表于 2021-2-18 07:57:45 | 只看该作者
DAY10

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44#
发表于 2021-2-18 00:16:14 | 只看该作者
Day10卡卡卡

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43#
发表于 2021-2-18 00:02:07 | 只看该作者
Day-10 打卡~滴~

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42#
发表于 2021-2-18 00:00:10 | 只看该作者
谢谢!下期见:)

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41#
发表于 2021-2-18 00:00:00 | 只看该作者
1111111111

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40#
发表于 2021-2-17 23:56:12 | 只看该作者
Day 10

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