小程序
传感搜
传感圈

A Massive LinkedIn Study Reveals Who Actually Helps You Get That Job

2022-09-17
关注

If you want a new job, don’t just rely on friends or family. According to one of the most influential theories in social science, you’re more likely to nab a new position through your “weak ties,” loose acquaintances with whom you have few mutual connections. Sociologist Mark Granovetter first laid out this idea in a 1973 paper that has garnered more than 65,000 citations. But the theory, dubbed “the strength of weak ties,” after the title of Granovetter’s study, lacked causal evidence for decades. Now a sweeping study that looked at more than 20 million people on the professional social networking site LinkedIn over a five-year period finally shows that forging weak ties does indeed help people get new jobs. And it reveals which types of connections are most important for job hunters.

The strength of weak ties “is really a cornerstone of social science,” says Dashun Wang, a professor at the Kellogg School of Management at Northwestern University, who was not involved in the new study. For the original 1973 research, Granovetter interviewed people late in their career and asked them about their experiences with job changes. Before his groundbreaking paper, many had assumed that new positions came from sources such as close personal friends who would put in a good word, headhunters who would seek out strong candidates or public advertisements. But Granovetter’s analysis showed that people actually got new jobs most frequently through friends of friends—often someone the job seeker had not known before they started looking for a new position. “That really shook people up because assumptions about how people find the best jobs in life doesn’t look to be true—it looks like actually strangers might be the best contacts for you,” says Brian Uzzi, also a professor at the Kellogg School of Management, who was not involved in the new study.

What gives strangers an edge over friends? Granovetter posited that close connections—people in the same circle—largely have the same facts and professional options at their disposal. But people who belong to different communities can offer a whole new set of information and helpful connections. A mutual friend can act as a bridge, connecting the job hunter to a contact in a different group, which provides new opportunities.

This explanation was based on observational data showing a correlation between weak ties and job mobility. But correlation is not causation, and in the nearly 50 years since Granovetter first set down his idea, researchers had not proved that an applicant’s weak ties are the specific thing that causes them to nab that new job. Two decades ago, when he was a graduate student, Sinan Aral could not help noticing that gap. “There’s a 500-pound gorilla in the middle of the room of this literature, which is that we don’t have any causal evidence for any of these theories,” says Aral, senior author of the new study, who is now a professor of management at the Massachusetts Institute of Technology. “We don’t know whether weak ties are correlated with goodness [such as new jobs] because weak ties themselves are good or because people who make weak ties have some unobserved characteristics that also make them more productive, have good ideas and get better jobs, promotions and wages.” As Wang puts it, “People use this theory and associated concepts to explain a wide range of phenomena, but there has not been a causal test for whether weak ties are causally linked to job opportunities. And that’s what this paper does.” The study was published in Science on Thursday.

Developing experimental proof of this theory is extremely challenging. To test causality with the rigor of a randomized clinical trial, researchers would have to take two equivalent groups of people, experimentally manipulate their social networks by giving one group more weak ties and the other fewer and then observe whether the groups experienced different outcomes. But Aral and his colleagues discovered that LinkedIn had already done something almost as good. As engineers for the professional networking site tweaked the algorithm for recommending “People You May Know,” they ended up conducting many natural social experiments. In one case, LinkedIn would randomly vary the number of weak-tie, strong-tie and total recommendations that it displayed for users, where the strength of a tie depends on the proportion of mutual to nonmutual connections. This provided a perfect experiment to test Granovetter's idea. The researchers, led by LinkedIn applied research scientist Karthik Rajkumar and M.I.T. graduate student Guillaume Saint-Jacques, analyzed five years of these data, comparing LinkedIn users who were algorithmically assigned more weak-tie recommendations (and therefore formed more weak ties) with those who were assigned more strong-tie suggestions. Next, they estimated how adding a strong or weak tie affected subjects’ subsequent job mobility. Thanks to LinkedIn’s algorithmic experiments, the team could distinguish the influence of tie strength from that of the total number of new ties.

The results not only supported Granovetter’s theory but also added several refinements. First, not all the weak ties were equally helpful. If the strength of a tie depended on the number of mutual contacts, then moderately weak ties where two people shared roughly 10 acquaintances mattered the most. But ties’ strength can also be measured by interaction intensity, or the frequency with which you contact your weak-tie acquaintance. When the researchers examined this metric, they found that the most useful ties were the ones that people did not interact with very often. Finally, the team found that these effects varied by industry: weak ties on LinkedIn were particularly beneficial in digital industries, which tend to involve machine learning, artificial intelligence, robotization, software use, and remote and hybrid work, compared with “analog” industries that require in-person presence.

These results could benefit job seekers pondering how to build and evolve their social networks. For instance, when it comes to LinkedIn’s suggestions of people to connect with, “you may not want to ignore those,” Aral says. “And if you get a recommendation for somebody, and you don’t see what the connection could possibly be,” they still might be worth exploring. “Those are the ... weak ties that might actually be the source of your next job,” he adds.

Despite these results, it’s important not to neglect strong ties, Wang says. This study focused on successes—that is, people who got new jobs. But it did not examine all of the failures and rejections that happened before the success. To persist in a grueling job search, we need strong ties to provide social support. “Only observing successes is going to tell us only part of the story,” Wang notes. “In order to really be successful in the end, you really need your strong ties.” These strong ties are vital for groups such as immigrants, who often form tight-knit communities to deal with the discrimination and other pressures they experience. But this also means that they may have a harder time accessing weak-tie opportunities. “Some of the things that hold immigrant groups or disadvantaged groups back is the very fact that it’s harder for them to have these weak ties,” Uzzi says.

Along with job seekers, policy makers could also learn from the new paper. “One thing the study highlights is the degree to which algorithms are guiding fundamental, baseline, important outcomes, like employment and unemployment,” Aral says. The role that LinkedIn’s People You May Know function plays in gaining a new job demonstrates “the tremendous leverage that algorithms have on employment and probably other factors of the economy as well.” It also suggests that such algorithms could create bellwethers for economic changes: in the same way that the Federal Reserve looks at the Consumer Price Index to decide whether to hike interest rates, Aral suggests, networks such as LinkedIn might provide new data sources to help policy makers parse what is happening in the economy. “I think these digital platforms are going to be an important source of that,” he says.

参考译文
LinkedIn的一项大规模研究揭示了谁能真正帮助你得到这份工作
如果你想要一份新工作,不要只依靠朋友或家人。根据社会科学中最具影响力的理论之一,你更有可能通过你的“弱关系”获得一个新职位,即与你没有多少相互联系的松散熟人。社会学家马克·格兰诺维特(Mark Granovetter)在1973年的一篇论文中首次提出了这一观点,该论文已被引用超过6.5万次。但这个以格兰诺维特的研究命名、被称为“弱关系的强度”的理论,几十年来一直缺乏因果证据。现在,一项对职业社交网站领英(LinkedIn) 5年期间2000多万用户的全面研究终于表明,建立弱关系确实有助于人们找到新工作。它还揭示了哪种类型的人际关系对求职者最重要。西北大学凯洛格管理学院的王大顺教授没有参与这项新研究,他说,弱关系的强度“确实是社会科学的基石”。在1973年最初的研究中,格兰诺维特采访了一些职业生涯后期的人,询问他们的工作变化经历。在他那篇开创性的论文发表之前,许多人都认为,新职位来自于一些来源,比如会为他美言几句的密友、会寻找有实力的候选人的猎头或公开广告。但格兰诺维特的分析显示,人们实际上最常通过朋友的朋友找到新工作——通常是求职者在开始找新工作之前不认识的人。“这真的让人们震惊了,因为关于人们如何找到生活中最好的工作的假设看起来并不正确——看起来实际上陌生人可能是你最好的联系人,”Kellogg管理学院的教授Brian Uzzi说,他没有参与这项新研究。是什么让陌生人比朋友更有优势?格兰诺维特提出,亲密关系——在同一圈子里的人——在很大程度上拥有相同的事实和专业选择。但来自不同社区的人可以提供一整套全新的信息和有用的联系。一个共同的朋友可以充当桥梁,把求职者和另一个群体的联系人联系起来,这就提供了新的机会。这一解释是基于观察数据得出的,数据显示弱关系和工作流动性之间存在相关性。但相关性并不是因果关系,在格兰诺维特第一次提出这一观点以来的近50年里,研究人员还没有证明应聘者的弱关系是导致他们获得新工作的具体原因。20年前,当斯南·阿拉尔还是一名研究生时,他不禁注意到了这一差距。这项新研究的资深作者、现为麻省理工学院管理学教授的阿拉尔说:“这些文献中有一只500磅重的大猩猩,那就是我们对这些理论都没有任何因果证据。”“我们不知道弱关系是否与好(如新工作)相关,因为弱关系本身是好的,还是因为建立弱关系的人有一些未被观察到的特征,这些特征也使他们更有生产力,有好想法,获得更好的工作、晋升和工资。”正如王所言,“人们使用这个理论和相关概念来解释广泛的现象,但还没有一个因果检验来证明弱关系是否与工作机会有因果关系。这就是这篇论文所做的。”这项研究发表在周四的《科学》杂志上。 用实验证明这一理论是极具挑战性的。为了在严格的随机临床试验中检验因果关系,研究人员必须选取两组相当的人,通过实验性地操纵他们的社交网络,给一组人更多的弱联系,给另一组人更少的联系,然后观察两组人是否有不同的结果。但阿拉尔和他的同事们发现,LinkedIn已经做了一些几乎同样出色的事情。当专业社交网站的工程师调整推荐“你可能认识的人”的算法时,他们最终进行了许多自然的社会实验。在一种情况下,LinkedIn会随机改变向用户显示的弱联系、强联系和总推荐的数量,其中联系的强度取决于相互联系与非相互联系的比例。这为Granovetter'的想法提供了一个完美的实验。由领英应用研究科学家Karthik Rajkumar和麻省理工学院研究生Guillaume Saint-Jacques领导的研究人员分析了五年的这些数据,比较了被算法分配到更多弱关系推荐(因此形成了更多弱关系)的领英用户和被分配到更多强关系推荐的用户。接下来,他们估计了添加强或弱关系如何影响受试者随后的工作流动性。多亏了LinkedIn的算法实验,该团队能够区分关系强度和新关系总数的影响。研究结果不仅支持了格兰诺维特的理论,而且还增加了一些改进。首先,不是所有的弱关系都有同样的帮助。如果关系的强度取决于相互联系的数量,那么中等强度的关系(两个人大约有10个熟人)最重要。但联系的强度也可以通过互动强度来衡量,或者通过你与弱联系熟人的联系频率来衡量。当研究人员检验这个指标时,他们发现最有用的关系是那些人们不经常互动的关系。最后,该团队发现,这些影响因行业而异:与需要亲自到场的“模拟”行业相比,LinkedIn上的弱联系在数字行业尤其有益,这往往涉及到机器学习、人工智能、机器人化、软件使用以及远程和混合工作。这些结果可以帮助正在考虑如何建立和发展自己的社交网络的求职者。例如,当谈到LinkedIn的联系人建议时,“你可能不想忽略它们,”阿拉尔说。“如果你收到了某人的推荐信,但你看不出两者之间可能存在什么联系,”他们仍然可能值得探索。“那些是……弱关系实际上可能是你下一份工作的来源,”他补充道。王说,尽管有这些结果,但重要的是不要忽视牢固的关系。这项研究关注的是成功,也就是那些找到新工作的人。但它并没有研究所有发生在成功之前的失败和拒绝。为了坚持艰苦的求职,我们需要强大的关系来提供社会支持。“只观察成功只能告诉我们故事的一部分,”王指出。“为了最终获得真正的成功,你真的需要强大的人际关系。”这些紧密的联系对移民等群体至关重要,他们经常组成紧密的社区,以应对他们所经历的歧视和其他压力。但这也意味着他们可能更难获得弱联系的机会。乌兹说:“阻碍移民群体或弱势群体前进的一些因素是,他们更难拥有这些弱联系。” 除了求职者,政策制定者也可以从这篇新论文中学习。“这项研究强调的一件事是算法在多大程度上指导基本的、基线的、重要的结果,如就业和失业,”阿拉尔说。领英的“你可能认识的人”(People You May Know)功能在获得新工作方面发挥的作用表明,“算法对就业以及经济的其他因素都具有巨大的影响力。”它还表明,这种算法可以创造经济变化的风风雨雨:阿拉尔认为,就像美联储(Federal Reserve)通过消费者价格指数(cpi)来决定是否加息一样,领英(LinkedIn)等网络可能会提供新的数据源,帮助政策制定者分析经济中正在发生的事情。他表示:“我认为这些数字平台将成为这方面的一个重要来源。”
您觉得本篇内容如何
评分

相关产品

EN 650 & EN 650.3 观察窗

EN 650.3 version is for use with fluids containing alcohol.

Acromag 966EN 温度信号调节器

这些模块为多达6个输入通道提供了一个独立的以太网接口。多量程输入接收来自各种传感器和设备的信号。高分辨率,低噪音,A/D转换器提供高精度和可靠性。三路隔离进一步提高了系统性能。,两种以太网协议可用。选择Ethernet Modbus TCP\/IP或Ethernet\/IP。,i2o功能仅在6通道以太网Modbus TCP\/IP模块上可用。,功能

雷克兰 EN15F 其他

品牌;雷克兰 型号; EN15F 功能;防化学 名称;防化手套

Honeywell USA CSLA2EN 电流传感器

CSLA系列感应模拟电流传感器集成了SS490系列线性霍尔效应传感器集成电路。该传感元件组装在印刷电路板安装外壳中。这种住房有四种配置。正常安装是用0.375英寸4-40螺钉和方螺母(没有提供)插入外壳或6-20自攻螺钉。所述传感器、磁通收集器和壳体的组合包括所述支架组件。这些传感器是比例测量的。

TMP Pro Distribution C012EN RF 音频麦克风

C012E射频从上到下由实心黄铜制成,非常适合于要求音质的极端环境,具有非常坚固的外壳。内置的幻像电源模块具有完全的射频保护,以防止在800 Mhz-1.2 Ghz频段工作的GSM设备的干扰。极性模式:心形频率响应:50赫兹-18千赫灵敏度:-47dB+\/-3dB@1千赫

ValueTronics DLRO200-EN 毫欧表

"The DLRO200-EN ducter ohmmeter is a dlro from Megger."

Minco AH439S1N10EN 温湿度变送器

Minco空间湿度探测器组件具有温度补偿功能,结构紧凑,重量轻。它们是为直接安装在建筑内墙上而设计的。他们的特点是集成电路传感器与稳定的聚合物元件,是由烧结不锈钢过滤器封装,加上先进的微处理器,以提供准确和可重复的测量。温度输出是可选的。,用于需要:

评论

您需要登录才可以回复|注册

提交评论

提取码
复制提取码
点击跳转至百度网盘