> Instead of confronting racial and socioeconomic biases in our hiring process, we've decided to deflect blame to a consulting firm who will in turn blame it on a mysterious 'cultural fit' algorithm
Seriously though, article does a bang up job ignoring all of the potential problems with systems like this
> Instead of confronting racial and socioeconomic biases in our hiring process, we've decided to deflect blame to a consulting firm who will in turn blame it on a mysterious 'cultural fit' algorithm
Culture encompasses a range of human behavior. Much of that, though it may not be tasteful to say, is tied to workplace performance. Pressure and desire to achieve, collective/individualist tendency, ethics and morals, conformity and deference to authority; if one is willing to acknowledge that cultures exist and vary, then one cannot deny that there will be strong correlations between culture and fit for particular roles. And as it happens culture correlates with nationality, race, and socioeconomic status - because parents and communities generally pass culture on to children.
At some point in the near future neural nets trained to predict human performance will undoubtedly condition on priors like nationality, race, and socioeconomic status, even indirectly if they are not explicit data points. What then? Will we continue to bend over backwards to deny reality in favor of a false Utopia? What happens when these trends suggest different interventions for medical conditions? Different learning environments? Different reactions to authority and punishment?
Edit: I don't understand the downvotes. Why use data analysis tools if you're just going to ignore the results you don't like? How do you expect to solve problems like inequality if you aren't willing to explore their actual causes? Is there something illogical or factually incorrect in my comment?
Assuming that any individual can be judged, or their actions predicted, from generalizations based on their culture or socioeconomic status is quite literally the definition of racism. Using correlations with race and socioeconomic status as a filter by witch to deny people the chance to achieve, advanced, and change those correlations/generalizations, is the definition of systemic racism. If you act based on those kind of generalizations or correlations in a way that enforces them, you're not identifying a problem, you're creating/perpetuating it.
I agree with the sentiment you express, but I think there is some nuance of definition that should be clarified here.
Deployed on a wide scale, the filters you describe would indeed constitute systemic racism. However, on an individual basis such practices would be more correctly termed profiling rather than racism since they lack intent. (This depends entirely on your definition of racism, of course, which it turns out can be quite difficult to pin down. [1])
I realize this may seem like splitting hairs since I ultimately agree with your overall point, but often such definitional issues result in a great deal of miscommunication and misunderstanding.
It also depends on your definition of intent. If you knowingly implement a system with flaws that make it systematically racist, you have intended to be racist.
Hrmn. This makes it sound like you can only implement a systematically racist system if you are overtly/intentionally trying to be racist.
I suspect in many cases, folks who implement racist systems simply do not care whether their system is racist or not. They want to optimize/automate whatever it is that they are about, and if the result is unfair, well, that's just someone else's problem.
Note that while I use/discuses the term racism here, I intend for this argument to apply to prejudice and systemic discrimination more broadly.
I would personally argue against any definition of racism that discounts acts based on intent. Your source seems to start out trying to sort-out a kind of binary (trinary) fallacy, where it's arguing that there must be only a single valid definition of what qualifies as racist that can be used in any/all contexts, rather than just acknowledging that there are multiple ways to be racist, with varying degrees of intent/malice/severity/subtly and contextual applicability. It seems to reach that conclusion in the end though with "Overall We Probably Use A Combination Of All Of These, Weighted In Favor Of Definition By Motives." Beyond that, I’d argue that a more limited definition is dangerous as it allows people to argue/believe that a lack of blatantly malicious intent absolves them of the consequences of their acts.
Broadly speaking, yes this would be accurately termed profiling. That is in no way mutually exclusive with being racist, given either of our definitions of racism. The developer of an AI profiling algorithm must make choices about what data is provided to that system, and others must make a choice to act based on the outputs of that system. The choice to include racial or socioeconomic criteria (or criteria that are proxies for these) as training data for a given model, and act on its outputs in ways that could contribute to systemic racism, could be done without malice or could be driven by blatantly racists motives. We just end up back at the same argument about the definition of racism.
And again, I’d argue that the more limited definition is dangerous as it allows exactly what wlesieutre meant with “we've decided to deflect blame.” Allowing an act that leads to systemic racism to not qualify as racism without a clear blatant intent only serves to excuse those developing/using such systems for the consequences of their choices. Additionally, the narrower definition could actually discourage consideration of such consequences, as acting without any thought or consideration at all is acting without intent. Thus, willful or feigned ignorance becomes a defense against the furtherance of systemic racism.
The trouble is that there is no singular, well delineated definition for the term "culture" in the context of such systems (and thus this discussion in general). Is team culture defined by general attitude? By demeanor when interacting with others? By willingness to work unpaid overtime? Or perhaps by how others generally feel about you?
That last one in particular has serious implications relating to biases and socioeconomic factors.
> Will we continue to bend over backwards to deny reality in favor of a false Utopia?
That would be a rather extreme position. Why do we have to choose between ignoring things that are broken versus ignoring reality itself? Why not attempt to work towards an ideal, even if that ultimately costs our society some small amount of efficiency on the whole?
> At some point in the near future neural nets trained to predict human performance will undoubtedly condition on priors like nationality, race, and socioeconomic status, even indirectly if they are not explicit data points. What then? Will we continue to bend over backwards to deny reality in favor of a false Utopia? What happens when these trends suggest different interventions for medical conditions? Different learning environments? Different reactions to authority and punishment?
This doesn't feel like an argument in good faith because you both seem to already have strong beliefs about what the "actual causes" are, and also place a lot of words in the mouths of those who might disagree with you based on an uncharitable interpretation of their motives.
Consider how you lump in "nationality, race, and socioeconomic status" all of the same category. It seems you've already decided that those are all root causes, and anyone who disagrees is just denying reality.
One might say "I want to be able to identify interventions to counteract negative effects of [socioeconomic status, home life, etc] in a specific and personalized way to improve opportunities." That would be an interesting use of computational power, beyond what we could've accomplished without fancy computers.
Or you could design a model that would just mimic simple naive stats and reinforce your beliefs on race and culture, while not actually be digging into precise, specific, details. Yes, your simple model will label groups that have suffered historical and ongoing discrimination and disadvantages as less likely to succeed if you don't fully model the compounding and generational effects of that. That's neither interesting nor compelling. People are extremely complicated and yet you've concluded that it's all down to a few blunt factors. Ok.
“Please take all our prejudices and biases and turn them into a computer program, please, so we can perpetuate them without having to face uncomfortable questions about our fairness and objectivity”
"Look it's not our fault that people who liked Black Entertainment Television on Facebook aren't a good culture fit, the decision was made by an unbiased data-based algorithm! You're the one bringing race into this!"
> For instance, the successful applicant might have to get up early to start a shift on time or deal with a higher workload when the weather is bad. How do they feel about that and how would they go about it? [...]
> A scoring system is agreed with each client in advance, so that the algorithm can determine how well a candidate has answered a given question. The tool might also deduct a few points should the candidate respond very slowly to questions, for example.
I don't think this is a sophisticated tool. And that's even without questioning the premise that cultural fit as it's generally practiced is a good thing (far from clear).
This is not nearly as bad as I thought it would be. A consultancy is basically using survey-type screening questions to bucket candidates, and another team seems to be doing some very basic text analysis to gauge team-type thinking. I was afraid this was going to be another ML debacle to "objectively" filter out people who don't fit the exact demographic mold the company already has.
That said, approaches like this tend to just lead to more gaming on both sides. Once survey questions become popular, the "right" answers get figured out, posted in how-to guides, and the screening quickly becomes worthless. To me, this says that hiring still sucks for everyone involved.
So a glorified facebook quiz is going to tell me if I’ll be a good fit?
I’d say that the likelihood that employers use this to justify racism or sexism (consciously or otherwise) is nearly 100%.
In fairness, the article does address the potentially of monoculture, but I feel like this isn’t going to work out for employers in the way that they hope; in small doses and properly managed, a toxic but talented person can be good for a team.
One of the most talented engineers I’ve worked with for the stereotypical mold of the “hyper-productive douchebag”. He definitely brought the team down somewhat, but I also learned a ton of useful things from him that I probably otherwise wouldn’t have, and the same can be said for the rest of the team I was on. This guy was eventually fired because of his toxicity, and while I understand why my manager did it, I can’t help but feel that the team lost something that day.
These systems probably do a decent job ensuring that you don’t hire jerks, but I don’t know that that is always going to work out in the company’s favor.
> Take personal pronouns, for instance – do they signal team awareness by referring to work that “we” are doing – or do they rely on “I” and “me” a lot?
> Take personal pronouns, for instance – do they signal team awareness by referring to work that “we” are doing – or do they rely on “I” and “me” a lot?
Oh great, now we have to use these weasel words to describe our work in all our emails to our company so that we won't get pegged as non team players by our benevolent evaluation quiz.
Seriously, the main problem here seems to be that management is trying to reduce the cost of evaluating people as, well, people. If you are in any sort of a people management position (I'm not), they are trying to replace you with these ridiculous algorithms, and you should oppose their use in hiring out of self-interest, if not because they actually don't work.
There might be some self-fulfilling prophecy going on here though...
"Congratulations! Your willingness to have all the complicated things that make up who you are summed up in a numeric score indicates that you'd be a perfect fit with our culture!"
A little more seriously...
> By assessing language in this way, Srivastava and other proponents of LIWC analysis say they can tell whether someone fits in naturally within a group – but also whether they adapt well over time when the group’s dynamics change. This ability to be plastic, to adapt, is often what organisations should really be looking for, says Srivastava.
This just says that we can use algorithms to reinforce the traits that already exist on a team. That's a different question to whether hiring the candidate will help the company become more inline with what they want to be. It also seems like a great way to encourage ideological, gender, and cultural homogeneity.
Not only does it pretty much by definition create a monoculture, but it also runs into what in economics is called the Lucas critique.
Trying to make policy decisions based on highly aggregated historical data without understanding foundations fails because the policy change has an effect on behaviour, summed up by the idiom 'a signal that is being exploited too long ceases to be a useful signal'.
There was already the hilarious case of people putting words like "Oxford", and "Cambridge" in their applications in white font on a white background to trick some ML system that scanned applications for these signals.
I think we need to teach people who think they can solve every problem with some ML system a lesson in economics because this stuff is getting out of hand.
>I think we need to teach people who think they can solve every problem with some ML system a lesson in economics because this stuff is getting out of hand.
AI/ML has become one of the most hyped buzzwords lately. People are trying to find any and every area possible to push some kind of ML system into the project.
Smart toothbrush that uses "AI" to predict the buildup of plaques.
Smart shoes that uses AI to do some niche task... and so on.
You mean "machines can now give you an answer more confident than any human would dare, with additional uncertainty information you'll be unable to grasp, and with a basis in solid pseudoscience.
I'm not 100% convinced that "cultural fit" at its core isn't just another way of saying:
"angsty college grads who haven't fully learned how to accept themselves as individuals think talking to {{other demographic|old people, microsoft engineer, perl programmer, etc...}} is gross".
Or something along those lines (feel free to fill in your favorite flavor above).
In my experience there is almost zero NEED for my co-workers to resemble anything I like or enjoy. I can't say that I would PREFER this, but if my team consisted of a bunch of racist / bigoted purple martians, as long as our work days were 100% focused on our work, and my co-workers were all capable, dedicated, and good communicators, then what's the problem?
It seems this post wasn't that well received, so let me just go ahead and mention as a follow-up that I was once an "angsty college grad" myself. There was a time I contemplated and almost convinced myself that there might be something to this "cultural fit" thing. But then I experienced the work force for an extended period only to realize my preconceived notions of what it takes to be successful in business has almost nothing to do with personal traits. In probably every way I've ever thought about / experienced it, successful businesses are built by people whose workplace behaviors are composed of UNIVERSAL traits.
So, it follows that, for someone to say you're not a "cultural fit" more or less means you don't have what it takes to truly be successful no matter who hires you.
This is a worrying trend. The "culture" fit is a maddening moving target. Culture is grown, it evolves. If we keep "selecting" a homogeneous "culture" (if we self-select) then we shouldn't expect very create results out of the team.
There's a big concern here of algorithmic discrimination. How do you stop a black box algorithm from descriminating based on gender, class, age, or sexual orientation? Even if such discrimintion is inadvertant, it's a dangerous way of screening applicants.
People keep suing until they are forced to explain every decision the black box makes and a couple of defense attorneys do some data analysis and puts the prejudice in front of a jury.
Sadly, I expect this is one of those "make it to expensive to use" situations.
Humans made a machine print a result based on analytical models and a specific set of inputs created by academics on paper.
We’ve been doing that for years. What a shock we keep doing it.
The machine isn’t telling us squat except that after adding/subtracting in this way we found this value. Even if those models are vetted by academics, academia is a politically manipulated shit hole. Nothing to do with ML is anything close to objective consciousness, decoupled from human ideas.
Humans can still blow up the machine and the political system that pushes such things on them.
When we can’t even tell if we’re guessing right or just close enough to trigger emotional familiarity to get a reaction out of someone who thinks the machine runs on magic, well... sorry y’all but absolutely none of this means anything except as confirmation bias to keep behaving as we are.
The only model we know of capable of creating a consciousness is the universe. All that energy/matter had to flow over eons, at a scale far beyond our conscious comprehension, to end up with us.
Thinking we are engineering anything close to consciousness is a conscious trick we’re buying into to justify working for big tech corp.
This is associative generalization at its best, also known as prejudice. Not all prejudice is bad, it is bad when you apply it against persons and irreapective of success rate,if even one individual causes the prejudiced test to fail, the test becomes an instrument of injustice.
We all think prejudice in the context of race or sex,but it can be applied in just about any context.
For example: You can be prejudiced when performing facial recognition and you may have some failure rate which can be tolerable for things like authentication or the police finding a suspect. But let's say this is used to perform an airstrike/assasination of a terrorist, is any level of failure rate acceptable? It shouldn't be,not on it's own. You should have independent corroboration and subjective confirmation. The 0.01% false positive times 7billion faces means a lot of people whose potential death you are tolerating.
This is similar to why lie detector is inadmissible in court.even with dna evidence you need to independently prove either motive or plausibility of the crime being committed by the suspect.
This is far from assasinations and criminal cases but the concept of "you're unethical if you tolerate any form of systemic injustice against even one person"
To me this sort of ML matching should never be used in hiring decisions but it can be used to corroborate manager/peer evaluations/sentiment after a probationary period.
In reality this means people have to lie/fake personality quizzes and verbage/vocabulary resulting in the best fakers outperforming the flawed yet better non-fakers. Very sad how history repeats.
If you asked a researcher on fairness and discrimination in machine learning, "what's an application where ML could go horribly wrong", they would describe exactly this kind of example.
I don't know a thing about this company, maybe they're doing great work. But here are the alarm bells.
- Application domain is extremely difficult even for humans who get in-person interviews with the subject. Claiming to solve a task with ML that humans cannot reliably solve is a symptom of snake-oil.
- Compounding this, feedback is very limited and noisy. It's hard to tell if your algorithm is doing a good or bad job. So it's very hard to train the algorithm to do better.
- Data is likely to be low-quality (because humans can't even label this task well). Much worse, data is likely to reflect human biases, conscious and unconscious both. Racist or sexist data lead to racist or sexist algorithms.
- Algorithms in the space are highly susceptible to learn stereotypes (even from apparently-unbiased data). We can expect tons of noise in most features of an applicant, while more reliable signal would come from very generic features like what college someone attended or other factors closely tied to race or socioeconomic background.
- Feedback loops can be a problem if the algorithm is fed data that is produced by the algorithm. I.e. the algorithm mostly recommends men (let's say) and is fed positive feedback, it will discriminate even more against women and so on.
On a more personal note, it's not clear the premise of the task makes sense. A diverse team will have a greater mix of perspectives, which may make it more effective even if its 'culture fit' score is lower.
It's not clear from your comment whether or not you're familiar with the book Weapons of Math Destruction by Cathy O'Neil, but you echo many of its main arguments about these types of systems. I can recommend the book if you haven't read it.
> A diverse team will have a greater mix of perspectives, which may make it more effective even if its 'culture fit' score is lower.
Maybe this isn't a typical view of 'culture fit' but I would think of it more in terms of whether a candidate is reasonable, pleasant, friendly, etc. (matching the extent of those traits between the candidate and the company average -- maybe a company of argumentative folks wants to continue along that path instead). Such matching would, I think, have little impact on diversity of perspectives, neutrality regarding protected classes, etc.
Yeah, culture fit is different from culture add. If you keep fitting the same culture you can be limited in a number of ways, whereas if have some culture add there is growth (hopefully along good lines).
Seems like a good time to get diagnosed with a personality disorder or some mental condition which legally qualifies as a disability and start making millions from discrimination suits.
Honestly, at some point, we have to regulate this bullshit.
This concept that these private companies feel they can use whatever means they can, to selectively discriminate against people, for whatever they want, has gone too far.
These large tech companies are failing in their social contract. Their purpose is to serve the people, the citizens that makes their success possible, but instead, they feel it is their right to do whatever they want, just because they claim to be a private company.
If these tech companies don’t self regulate themselves, then we need to force their hand, and vote in politicians that will force a policy change down their throats.
Culture has many definitions, and most of them do involve generalizing a people. In the context of workplace culture, I believe it's explicitly not those things, but rather Merriam Webster's definition 1b:
"the set of shared attitudes, values, goals, and practices that characterizes an institution or organization"
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[ 2.9 ms ] story [ 85.5 ms ] threadSeriously though, article does a bang up job ignoring all of the potential problems with systems like this
Culture encompasses a range of human behavior. Much of that, though it may not be tasteful to say, is tied to workplace performance. Pressure and desire to achieve, collective/individualist tendency, ethics and morals, conformity and deference to authority; if one is willing to acknowledge that cultures exist and vary, then one cannot deny that there will be strong correlations between culture and fit for particular roles. And as it happens culture correlates with nationality, race, and socioeconomic status - because parents and communities generally pass culture on to children.
At some point in the near future neural nets trained to predict human performance will undoubtedly condition on priors like nationality, race, and socioeconomic status, even indirectly if they are not explicit data points. What then? Will we continue to bend over backwards to deny reality in favor of a false Utopia? What happens when these trends suggest different interventions for medical conditions? Different learning environments? Different reactions to authority and punishment?
Edit: I don't understand the downvotes. Why use data analysis tools if you're just going to ignore the results you don't like? How do you expect to solve problems like inequality if you aren't willing to explore their actual causes? Is there something illogical or factually incorrect in my comment?
Deployed on a wide scale, the filters you describe would indeed constitute systemic racism. However, on an individual basis such practices would be more correctly termed profiling rather than racism since they lack intent. (This depends entirely on your definition of racism, of course, which it turns out can be quite difficult to pin down. [1])
I realize this may seem like splitting hairs since I ultimately agree with your overall point, but often such definitional issues result in a great deal of miscommunication and misunderstanding.
[1] https://slatestarcodex.com/2017/06/21/against-murderism
I suspect in many cases, folks who implement racist systems simply do not care whether their system is racist or not. They want to optimize/automate whatever it is that they are about, and if the result is unfair, well, that's just someone else's problem.
I would personally argue against any definition of racism that discounts acts based on intent. Your source seems to start out trying to sort-out a kind of binary (trinary) fallacy, where it's arguing that there must be only a single valid definition of what qualifies as racist that can be used in any/all contexts, rather than just acknowledging that there are multiple ways to be racist, with varying degrees of intent/malice/severity/subtly and contextual applicability. It seems to reach that conclusion in the end though with "Overall We Probably Use A Combination Of All Of These, Weighted In Favor Of Definition By Motives." Beyond that, I’d argue that a more limited definition is dangerous as it allows people to argue/believe that a lack of blatantly malicious intent absolves them of the consequences of their acts.
Broadly speaking, yes this would be accurately termed profiling. That is in no way mutually exclusive with being racist, given either of our definitions of racism. The developer of an AI profiling algorithm must make choices about what data is provided to that system, and others must make a choice to act based on the outputs of that system. The choice to include racial or socioeconomic criteria (or criteria that are proxies for these) as training data for a given model, and act on its outputs in ways that could contribute to systemic racism, could be done without malice or could be driven by blatantly racists motives. We just end up back at the same argument about the definition of racism.
And again, I’d argue that the more limited definition is dangerous as it allows exactly what wlesieutre meant with “we've decided to deflect blame.” Allowing an act that leads to systemic racism to not qualify as racism without a clear blatant intent only serves to excuse those developing/using such systems for the consequences of their choices. Additionally, the narrower definition could actually discourage consideration of such consequences, as acting without any thought or consideration at all is acting without intent. Thus, willful or feigned ignorance becomes a defense against the furtherance of systemic racism.
That last one in particular has serious implications relating to biases and socioeconomic factors.
> Will we continue to bend over backwards to deny reality in favor of a false Utopia?
That would be a rather extreme position. Why do we have to choose between ignoring things that are broken versus ignoring reality itself? Why not attempt to work towards an ideal, even if that ultimately costs our society some small amount of efficiency on the whole?
This doesn't feel like an argument in good faith because you both seem to already have strong beliefs about what the "actual causes" are, and also place a lot of words in the mouths of those who might disagree with you based on an uncharitable interpretation of their motives.
Consider how you lump in "nationality, race, and socioeconomic status" all of the same category. It seems you've already decided that those are all root causes, and anyone who disagrees is just denying reality.
One might say "I want to be able to identify interventions to counteract negative effects of [socioeconomic status, home life, etc] in a specific and personalized way to improve opportunities." That would be an interesting use of computational power, beyond what we could've accomplished without fancy computers.
Or you could design a model that would just mimic simple naive stats and reinforce your beliefs on race and culture, while not actually be digging into precise, specific, details. Yes, your simple model will label groups that have suffered historical and ongoing discrimination and disadvantages as less likely to succeed if you don't fully model the compounding and generational effects of that. That's neither interesting nor compelling. People are extremely complicated and yet you've concluded that it's all down to a few blunt factors. Ok.
Yeah you do.
> A scoring system is agreed with each client in advance, so that the algorithm can determine how well a candidate has answered a given question. The tool might also deduct a few points should the candidate respond very slowly to questions, for example.
I don't think this is a sophisticated tool. And that's even without questioning the premise that cultural fit as it's generally practiced is a good thing (far from clear).
That said, approaches like this tend to just lead to more gaming on both sides. Once survey questions become popular, the "right" answers get figured out, posted in how-to guides, and the screening quickly becomes worthless. To me, this says that hiring still sucks for everyone involved.
I’d say that the likelihood that employers use this to justify racism or sexism (consciously or otherwise) is nearly 100%.
In fairness, the article does address the potentially of monoculture, but I feel like this isn’t going to work out for employers in the way that they hope; in small doses and properly managed, a toxic but talented person can be good for a team.
One of the most talented engineers I’ve worked with for the stereotypical mold of the “hyper-productive douchebag”. He definitely brought the team down somewhat, but I also learned a ton of useful things from him that I probably otherwise wouldn’t have, and the same can be said for the rest of the team I was on. This guy was eventually fired because of his toxicity, and while I understand why my manager did it, I can’t help but feel that the team lost something that day.
These systems probably do a decent job ensuring that you don’t hire jerks, but I don’t know that that is always going to work out in the company’s favor.
> Take personal pronouns, for instance – do they signal team awareness by referring to work that “we” are doing – or do they rely on “I” and “me” a lot?
Oh great, now we have to use these weasel words to describe our work in all our emails to our company so that we won't get pegged as non team players by our benevolent evaluation quiz.
Seriously, the main problem here seems to be that management is trying to reduce the cost of evaluating people as, well, people. If you are in any sort of a people management position (I'm not), they are trying to replace you with these ridiculous algorithms, and you should oppose their use in hiring out of self-interest, if not because they actually don't work.
"I did this and that."
Translation: "I assert that I myself did these things."
"We did this and that."
Translation: "Some guys that work at my company did it."
The assumption that we is better than I is poor.
"Congratulations! Your willingness to have all the complicated things that make up who you are summed up in a numeric score indicates that you'd be a perfect fit with our culture!"
A little more seriously...
> By assessing language in this way, Srivastava and other proponents of LIWC analysis say they can tell whether someone fits in naturally within a group – but also whether they adapt well over time when the group’s dynamics change. This ability to be plastic, to adapt, is often what organisations should really be looking for, says Srivastava.
This just says that we can use algorithms to reinforce the traits that already exist on a team. That's a different question to whether hiring the candidate will help the company become more inline with what they want to be. It also seems like a great way to encourage ideological, gender, and cultural homogeneity.
Trying to make policy decisions based on highly aggregated historical data without understanding foundations fails because the policy change has an effect on behaviour, summed up by the idiom 'a signal that is being exploited too long ceases to be a useful signal'.
There was already the hilarious case of people putting words like "Oxford", and "Cambridge" in their applications in white font on a white background to trick some ML system that scanned applications for these signals.
I think we need to teach people who think they can solve every problem with some ML system a lesson in economics because this stuff is getting out of hand.
AI/ML has become one of the most hyped buzzwords lately. People are trying to find any and every area possible to push some kind of ML system into the project. Smart toothbrush that uses "AI" to predict the buildup of plaques. Smart shoes that uses AI to do some niche task... and so on.
"angsty college grads who haven't fully learned how to accept themselves as individuals think talking to {{other demographic|old people, microsoft engineer, perl programmer, etc...}} is gross".
Or something along those lines (feel free to fill in your favorite flavor above).
In my experience there is almost zero NEED for my co-workers to resemble anything I like or enjoy. I can't say that I would PREFER this, but if my team consisted of a bunch of racist / bigoted purple martians, as long as our work days were 100% focused on our work, and my co-workers were all capable, dedicated, and good communicators, then what's the problem?
So, it follows that, for someone to say you're not a "cultural fit" more or less means you don't have what it takes to truly be successful no matter who hires you.
This is a worrying trend. The "culture" fit is a maddening moving target. Culture is grown, it evolves. If we keep "selecting" a homogeneous "culture" (if we self-select) then we shouldn't expect very create results out of the team.
you DeepDream the algorithm to check whether it is dreaming about a young straight white or asian male CS major with high GPA from top university.
Anyway, it is pretty cool that the next article on the same page is "What do we look for in a ‘good’ robot colleague?" Peak cultural fit.
Sadly, I expect this is one of those "make it to expensive to use" situations.
We’ve been doing that for years. What a shock we keep doing it.
The machine isn’t telling us squat except that after adding/subtracting in this way we found this value. Even if those models are vetted by academics, academia is a politically manipulated shit hole. Nothing to do with ML is anything close to objective consciousness, decoupled from human ideas.
Humans can still blow up the machine and the political system that pushes such things on them.
When we can’t even tell if we’re guessing right or just close enough to trigger emotional familiarity to get a reaction out of someone who thinks the machine runs on magic, well... sorry y’all but absolutely none of this means anything except as confirmation bias to keep behaving as we are.
The only model we know of capable of creating a consciousness is the universe. All that energy/matter had to flow over eons, at a scale far beyond our conscious comprehension, to end up with us.
Thinking we are engineering anything close to consciousness is a conscious trick we’re buying into to justify working for big tech corp.
We all think prejudice in the context of race or sex,but it can be applied in just about any context.
For example: You can be prejudiced when performing facial recognition and you may have some failure rate which can be tolerable for things like authentication or the police finding a suspect. But let's say this is used to perform an airstrike/assasination of a terrorist, is any level of failure rate acceptable? It shouldn't be,not on it's own. You should have independent corroboration and subjective confirmation. The 0.01% false positive times 7billion faces means a lot of people whose potential death you are tolerating.
This is similar to why lie detector is inadmissible in court.even with dna evidence you need to independently prove either motive or plausibility of the crime being committed by the suspect.
This is far from assasinations and criminal cases but the concept of "you're unethical if you tolerate any form of systemic injustice against even one person"
To me this sort of ML matching should never be used in hiring decisions but it can be used to corroborate manager/peer evaluations/sentiment after a probationary period.
In reality this means people have to lie/fake personality quizzes and verbage/vocabulary resulting in the best fakers outperforming the flawed yet better non-fakers. Very sad how history repeats.
I don't know a thing about this company, maybe they're doing great work. But here are the alarm bells.
- Application domain is extremely difficult even for humans who get in-person interviews with the subject. Claiming to solve a task with ML that humans cannot reliably solve is a symptom of snake-oil.
- Compounding this, feedback is very limited and noisy. It's hard to tell if your algorithm is doing a good or bad job. So it's very hard to train the algorithm to do better.
- Data is likely to be low-quality (because humans can't even label this task well). Much worse, data is likely to reflect human biases, conscious and unconscious both. Racist or sexist data lead to racist or sexist algorithms.
- Algorithms in the space are highly susceptible to learn stereotypes (even from apparently-unbiased data). We can expect tons of noise in most features of an applicant, while more reliable signal would come from very generic features like what college someone attended or other factors closely tied to race or socioeconomic background.
- Feedback loops can be a problem if the algorithm is fed data that is produced by the algorithm. I.e. the algorithm mostly recommends men (let's say) and is fed positive feedback, it will discriminate even more against women and so on.
On a more personal note, it's not clear the premise of the task makes sense. A diverse team will have a greater mix of perspectives, which may make it more effective even if its 'culture fit' score is lower.
Maybe this isn't a typical view of 'culture fit' but I would think of it more in terms of whether a candidate is reasonable, pleasant, friendly, etc. (matching the extent of those traits between the candidate and the company average -- maybe a company of argumentative folks wants to continue along that path instead). Such matching would, I think, have little impact on diversity of perspectives, neutrality regarding protected classes, etc.
This concept that these private companies feel they can use whatever means they can, to selectively discriminate against people, for whatever they want, has gone too far.
These large tech companies are failing in their social contract. Their purpose is to serve the people, the citizens that makes their success possible, but instead, they feel it is their right to do whatever they want, just because they claim to be a private company.
If these tech companies don’t self regulate themselves, then we need to force their hand, and vote in politicians that will force a policy change down their throats.
Well, I am not a cultural fit then.
"the set of shared attitudes, values, goals, and practices that characterizes an institution or organization"
https://www.merriam-webster.com/dictionary/culture