Yes, illusion of transparency at work here. That paragraph has always been so clearly wrong to me that I wrote it off as the usual academic prose fluff, and didn't realize it was in fact the argument being made. Here is the issue I take with that:
You can find instances where industry is clamoring to use AI to reduce costs / improve productivity. For example, Uber and self-driving cars. However in these cases there are a combination of two factors at work: (1) the examples are necessarily specialized narrow AI, not general decision making; and/or (2) the costs of poor decision making are externalized. Let's look at these points in more detail:
Anytime a human is being used as a meat robot, e.g. an Uber driver, a machine can do the job better and more efficiently with quantifiable tradeoffs due to the machine's own quirks. However one must not forget that this is the case because the context has already been specialized! One can replace a minimum wage burger flipper with a machine because the job is part of a three-ring binder enterprise that has already been exhaustively thought out to such a degree that every component task can be taught to a minimum wage, distracted teenage worker. If the mechanical burger flipper fails, you go back to paying a $10/hr meat robot to do the trick. But what happens when the corporate strategy robot fails and the new product is a flop? You lose hundreds of millions of invested dollars. And worse, you don't know until it is all over and played out. Not comparable at all.
Uber might want a fleet of self-driving cars. But that's because the costs of being wrong are externalized. Get in an accident? It's your driver's problem, not Uber. Self-driving car get in an accident? It's the owner of the car's problem which, surprise, is not Uber. The applications of AGI have risks that are not so easily externalized, however.
I can see how one might think that unchecked AGI would improve the efficiency of corporate management, fraud detection, and warfare. However that's confirmation bias. I assure you that the corporate strategists, fraud specialists, and generals get paid the big bucks to think about risk and the ways in which things can go wrong. I can give examples of what could go wrong when an alien AGI psychology tries to interact with irrational humans, but it's much simpler to remember that even presumably superhuman AGIs have error rates, and these error rates will be higher than humans for a good duration of time while the technology is still developing. And what happens when an AGI makes a mistake?
A corporate strategist AGI makes a mistake, and the directors of the corporation who have a fiduciary responsibility to shareholders are held personally accountable. Indemnity insurance refuses to pay out as upper management purposefully took themselves out of the loop, an action that is considered irresponsible in hindsight.
A fraud specialist AGI makes a mistake, and its company turns a blind eye to hundreds of millions of dollars of fraud that a human would have seen. Business goes belly-up.
An war-making AGI makes a mistake, and you are now dead.
I hope that you'll forgive me, but I must call on anecdotal evidence here. I am the co-founder of a startup that has raised >$75MM. I understand very well how investors, upper management, and corporate strategists manage risk. I also have observed how extremely terrified of additional risk they are. The supposition that they would be willing to put a high-risk proto-AGI in the driver's seat is naïve to say the least. These are the people that are held accountable and suffer the largest losses when things go wrong, and they are terrified of that outcome.
What is likely to happen, on the other hand, is a hybridization of machine and human. AGI cognitive assistance will permeate these industries, but their job is to give recommendations, not steer things directly. And it's not at all so clear to me that this approach, "Oracle AI" as it is called on LW, is so dangerous.
Thank you for the patient explanation! This is an interesting argument that I'll have to think about some more, but I've already adjusted my view of how I expect things to go based on it.
Two questions:
First, isn't algorithmic trading a counterexample to your argument? It's true that it's a narrow domain, but it's also one where AI systems are trusted with enormous sums of money, and have the potential to make enormous losses. E.g. one company apparently lost $440 million in less than an hour due to a glitch in their software. Wikipedia on the consequences:...
There have been a couple of brief discussions of this in the Open Thread, but it seems likely to generate more so here's a place for it.
The original paper in Nature about AlphaGo.
Google Asia Pacific blog, where results will be posted. DeepMind's YouTube channel, where the games are being live-streamed.
Discussion on Hacker News after AlphaGo's win of the first game.