Mark_Friedenbach comments on New forum for MIRI research: Intelligent Agent Foundations Forum - Less Wrong
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Right. I wanted to encourage semi-formalized topics, but not completely non-technical philosophizing. Can someone suggest a better wording?
Prohibit what you don't want, non-technical philosophizing, rather than a blanket prohibition that covers all sorts of other things. For example, what about existing AGI designs that lack an unified underlying formal model as of yet, e.g. OpenCog? They're apparently off limits, even a discussion involving experimental data of real world systems. That seems wrong.
EDIT: I found the original source:
Wow, I just... wow. Subjects that are off-topic: artificial intelligence and machine learning. Well enjoy your anti-rationalist ivory tower; I won't be participating.
Sorry you feel that way, but it's kind of essential that the forum is not about the latest AI techniques, but about groundwork for the kind of safety research that could stand up to smarter-than-human AI. There are plenty of great places on the Internet for discussing those other topics!
The problem is that you think those are two separate things, that the safety research which could stand up to smarter than human artificial intelligence is something that will arise separate from the work that is being done on artificial intelligence.
And for what it's worth there really isn't a place to discuss practical safety and artificial intelligence.
I think a post saying something like "Deep learning architectures are/are not able to learn human values because of reasons X, Y, Z" would definitely be on topic. As an example of something like this, I wrote a post on the safety implications of statistical learning theory. However, an article about how deep learning algorithms are performing on standard machine learning tasks is not really on topic.
I share your sentiment that safety research is not totally separate from other AI research. But I think there is a lot to be done that does not rely on the details of how practical algorithms work. For example, we could first create a Friendly AI design that relies on Solomonoff induction, and then ask to what extent practical algorithms (like deep learning) can predict bits well enough to be substituted for Solomonoff induction in the design. The practical algorithms are more of a concern when we already have an solution that uses unbounded computing power and are trying to scale it down to something we can actually run.
First of all, purposefully limiting scope to protecting against only the runaway superintelligence scenario is preventing a lot of good that could be done right now, and keeps your work from having practical applications it otherwise would have. For example, right now somewhere deep in Google and Facebook there are machine learning recommendation engines that are suggesting the display of whisky ads to alcoholics. Learning how to create even a simple recommendation engine whose output is constrained by the values of its creators would be a large step forward and would help society today. But I guess that's off-topic.
Second, even if you buy the argument that existential risk trumps all and we should ignore problems that could be solved today such as that recommendation engine example, it is demonstrably not the case in history that the fastest way to develop a solution is to ignore all practicalities and work from theory backwards. No, in almost every case what happens is the practical and the theoretical move forward hand in hand, with each informing progress in the other. You solve the recommendation engine example not because it has the most utilitarian direct outcomes, but because the theoretical and practical outcomes are more likely to be relevant to the larger problem than an ungrounded problem chosen by different means. And on the practical side, you will have engineers coming forward the beginnings of solutions -- "hey I've been working on feedback controls, and this particular setup seems to work very well in the standard problem sets..." In the real world theoreticians more often than not spend their time proving the correctness of the work of a technologist, and then leveraging that theory to improve upon it.
Third, there are specific concerns I have about the approach. Basically time spent now on unbounded AIXI constructs is probably completely wasted. Real AGIs don't have Solomonoff inductors or anything resembling them. Thinking that unbounded solutions could be modified to work on a real, computable superintelligence betrays a misunderstanding of the actual utility of AIXI. AIXI showed that all the complexity of AGI lies in the practicalities, because the pure uncomputable theory is dead simple but utterly divorced from practice. AIXI brought some respectability to the field by having some theoretical backing, even if that theory is presently worse than useless in as much as it is diverting otherwise intelligent people from making meaningful contributions.
Finally, there's the simple matter that an ignore-all-practicalities theory-first approach is useless until it nears completion. My current trajectory places the first AGI at 10 to 15 years out, and the first self-improving superintelligence shortly thereafter. Will MIRI have practical results in that time frame? The schedule is not going to stop and wait for perfection. So if you want to be relevant, then stay relevant.
I think something showing how to do value learning on a small scale like this would be on topic. It might help to expose the advantages and disadvantages of algorithms like inverse reinforcement learning.
I also agree that, if there are more practical applications of AI safety ideas, this will increase interest and resources devoted to AI safety. I don't really see those applications yet, but I will look out for them. Thanks for bringing this to my attention.
I don't have a great understanding of the history of engineering, but I get the impression that working from the theory backwards can often be helpful. For example, Turing developed the basics of computer science before sufficiently general computers existed.
My current impression is that solving FAI with a hypercomputer is a fundamentally easier problem that solving it with a bounded computer, and it's hard to say much about the second problem if we haven't made steps towards solving the first one. On the other hand, I do think that concepts developed in the AI field (such as statistical learning theory) can be helpful even for creating unbounded solutions.
I would really like it if the pure uncomputable theory of Friendly AI were dead simple!
Anyway, AIXI has been used to develop more practical algorithms. I definitely approach many FAI problems with the mindset that we're going to eventually need to scale this down, and this makes issues like logical uncertainty a lot more difficult. In fact, Paul Christiano has written about tractable logical uncertainty algorithms, which is a form of "scaling down an intractable theory". But it helped to have the theory in the first place before developing this.
Solutions that seem to work for practical systems might fail for superintelligence. For example, perhaps induction can yield acceptable practical solutions for weak AIs, but does not necessarily translate to new contexts that a superintelligence might find itself in (where it has to make pivotal decisions without training data for these types of decisions). But I do think working on these is still useful.
I consider AGI in the next 10-15 years fairly unlikely, but it might be worth having FAI half-solutions by then, just in case. Unfortunately I don't really know a good way to make half-solutions. I would like to hear if you have a plan for making these.
The first computer was designed by Babbage who was mostly interested in practical applications (although admitedly it was never built.) 100 years later Konrad Zuse developed the first working computer and was also for practical purposes. I'm not sure if he was even aware of Turing's work.
Not that Turing didn't contribute anything to the development of computers, but I'm not sure if it's a good example of theory preceding practice.
In AI in general this seems to be the case. Neural networks have been around forever, but they keep making progress every time computers get a bit faster. For the most part it's not like scientists have invented good algorithms and are waiting around for computers to get fast enough to run them. Rather the computers get a bit faster and then it drives a new wave of progress and lets researchers experiment with new stuff.
Forgive me if I'm mistaken, but is AIXI really that novel? From a theoreticians point of view maybe, but from the practical side of AI it's just a reformulation of reinforcement learning. MC AIXI is impressive because it works at all, not because there aren't any other algorithms that can learn to play pac man.
One way to fix the lack of historical perspective is to actively involve engineers and their projects into the MIRI research agenda, rather than specifically excluding them.
Regarding your example, Turing hardly invented computing. If anything that honor probably goes to Charles Babbage who nearly a century earlier designed the first general computation devices, or to the various business equipment corporations that had been building and marketing special purpose computers for decades after Babbage and prior to the work of Church and Turing. It is far, far easier to provide theoretical backing to a broad category of devices which are already known to work than to invent out of whole cloth a field with absolutely no experimental validation.
The first statement is trivially true: everything is easier on a hypercomputer. But who cares? we don't have hypercomputers.
The second statement is the real meat of the argument -- that "it's hard to say much about the [tractable FAI] if we haven't made steps towards solving the [uncomputable FAI]." While on the surface that seems like a sensible statement, I'm afraid your intuition fails you here.
Experience with artificial intelligence has shown that there does not seem to be any single category of tractable algorithms which provides general intelligence. Rather we are faced with a dizzying array of special purpose intelligences which in no way resemble general models like AIXI, and the first superintelligences are likely to be some hodge-podge integration of multiple techniques. What we've learned from neuroscience and modern psychology basically backs this up: the human mind at least achieves its generality from a variety of techniques, not some easy-to-analyze general principle.
It's looking more and more likely that the tricks we will use to actually achieve general intelligence will not resemble in the slightest the simple unbounded models for general intelligence that MIRI currently plays with. It's not unreasonable to wonder then whether an unbounded FAI proof would have any relevance to an AGI architecture which must be built on entirely different principles.
The goal is to achieve a positive singularity, not friendly AI. The easiest way to do that on a short timescale is to not require friendliness at all. Use idiot-savant superintelligence only to solve the practical engineering challenges which prevent us from directly augmenting human intelligences, then push a large group of human beings through cognitive enhancement programmes in lock step.
What does that mean in terms of a MIRI research agenda? Revisit boxing. Evaluate experimental setups that allow for a presumed-unfriendly machine intelligence but nevertheless has incentive structures or physical limitations which prevent it from going haywire. Devise traps, boxes, and tests for classifying how dangerous a machine intelligence is, and containment protocols. Develop categories of intelligences which lack foundation social skills critical to manipulating its operators. Etc. Etc.
In section 8.2 of the very document you linked to, it is pointed out why stochastic AIXI will not scale to problems of real world complexity or useful planning horizons.
Thanks for the response. I should note that we don't seem to disagree on the fact that a significant portion of AI safety research should be informed by practical considerations, including current algorithms. I'm currently getting a masters degree in AI while doing work for MIRI, and a substantial portion of my work at MIRI is informed by my experience with more practical systems (including machine learning and probabilistic programming). The disagreement is more that you think that unbounded solutions are almost entirely useless, while I think they are quite useful.
My intuition is that if you are saying that these techniques (or a hodgepodge of them) work, you are referring to some kind of criteria that they perform well on in different situations (e.g. ability to do supervised learning). Sometimes, we can prove that the algorithms perform well (as in statistical learning theory); other times, we can guess that they will perform on future data based on how they perform on past data (while being wary of context shifts). We can try to find ways of turning things that satisfy these criteria into components in a Friendly AI (or a safe utility satisficer etc.), without knowing exactly how these criteria are satisfied.
Like, this seems similar to other ways of separating interface from implementation. We can define a machine learning algorithm without paying too much attention to what programming language it is programmed in, or how exactly the code gets compiled. We might even start from pure probability theory and then add independence assumptions when they increase performance. Some of the abstractions are leaky (for example, we might optimize our machine learning algorithm for good cache performance), but we don't need to get bogged down in the details most of the time. We shouldn't completely ignore the hardware, but we can still usefully abstract it.
I think this stuff is probably useful. Stuart Armstrong is working on some of these problems on the forum. I have thought about the "create a safe genie, use it to prevent existential risks, and have human researchers think about the full FAI problem over a long period of time" route, and I find it appealing sometimes. But there are quite a lot of theoretical issues in creating a safe genie!
That is absolutely not a route I would consider. If that's what you took away from my suggestion, please re-read it! My suggestion is that MIRI should consider pathways to leveradging superintelligence which don't involve agent-y processes (genies) at all. Processes which are incapable of taking action themselves, and whose internal processes are real-time audited and programmatically constrained to make deception detectable. Tools used as cognitive enhancers, not stand-alone cognitive artifacts with their own in-built goals.
SIAI spent a decade building up awareness of the problems that arise from superintelligent machine agents. MIRI has presumed from the start that the way to counteract this threat is to build a provably-safe agent. I have argued that this is the wrong lesson to draw -- the better path forward is to not create non-human agents of any type, at all!
I wouldn't say that the time studying AIXI-like models is completely wasted, even if real AGIs turned out to have very little to do with AIXI. Even if AIXI approximation isn't the way that actual AGI will be built, to the extent that the behavior of a rational agent resembles the model of AIXI, studying models of AIXI can still give hints of what need to be considered in AGI design. lukeprog and Bill Hibbard advanced this argument in Exploratory Engineering in AI:
I think a very important application of AI safety ideas is self driving cars. This is a domain where traditional AI methods aren't straightforwardly applied. You can't merely have an algorithm take in input and predict what a human would do. Otherwise it will just drive like it predicts a human would. You can't have it get in accidents, so training data is limited.
As people have said at length, AIXI is not a solution even in principle. Hence MIRI's work on an actual theory of AI and FAI. Speaking of, I've said this before, but I'll state it now more starkly: your timeline seems as delusional to me as MIRI apparently seems to you.
That's great, I'd love to engage with you on that. What timeline would you give higher probability to, and why?
I roughly agree with Luke - that would be the director of MIRI - in placing the median close to 2070.
What about the second half of the question, why?