We spent an evening at last week's Rationality Minicamp brainstorming strategies for reducing existential risk from Unfriendly AI, and for estimating their marginal benefit-per-dollar. To summarize the issue briefly, there is a lot of research into artificial general intelligence (AGI) going on, but very few AI researchers take safety seriously; if someone succeeds in making an AGI, but they don't take safety seriously or they aren't careful enough, then it might become very powerful very quickly and be a threat to humanity. The best way to prevent this from happening is to promote a safety culture - that is, to convince as many artificial intelligence researchers as possible to think about safety so that if they make a breakthrough, they won't do something stupid.
We came up with a concrete (albeit greatly oversimplified) model which suggests that the marginal reduction in existential risk per dollar, when pursuing this strategy, is extremely high. The model is this: assume that if an AI is created, it's because one researcher, chosen at random from the pool of all researchers, has the key insight; and humanity survives if and only if that researcher is careful and takes safety seriously. In this model, the goal is to convince as many researchers as possible to take safety seriously. So the question is: how many researchers can we convince, per dollar? Some people are very easy to convince - some blog posts are enough. Those people are convinced already. Some people are very hard to convince - they won't take safety seriously unless someone who really cares about it will be their friend for years. In between, there are a lot of people who are currently unconvinced, but would be convinced if there were lots of good research papers about safety in machine learning and computer science journals, by lots of different authors.
Right now, those articles don't exist; we need to write them. And it turns out that neither the Singularity Institute nor any other organization has the resources - staff, expertise, and money to hire grad students - to produce very much research or to substantially alter the research culture. We are very far from the realm of diminishing returns. Let's make this model quantitative.
Let A be the probability that an AI will be created; let R the fraction of researchers that would be convinced to take safety seriously if there were a 100 good papers in about it in the right journals; and let C be the cost of one really good research paper. Then the marginal reduction in existential risk per dollar is A*R/100*C. The total cost of a grad student-year (including recruiting, management and other expenses) is about $100k. Estimate a 10% current AI risk, and estimate that 30% of researchers currently don't take safety seriously but would be convinced. That gives is a marginal existential risk reduction per dollar of 0.1*0.3/100*100k = 3*10^-9. Counting only the ~7 billion people alive today, and not any of the people who will be born in the future, this comes to a little over two expected lives saved per dollar.
That's huge. Enormous. So enormous that I'm instantly suspicious of the model, actually, so let's take note of some of the things it leaves out. First, the "one researcher at random determines the fate of humanity" part glosses over the fact that research is done in groups; but it's not clear whether adding in this detail should make us adjust the estimate up or down. It ignores all the time we have between now and the creation of the first AI, during which a safety culture might arise without intervention; but it's also easier to influence the culture now, while the field is still young, rather than later. In order for promoting AI research safety to not be an extraordinarily good deal for philanthropists, there would have to be at least an additional 10^3 penalty somewhere, and I can't find one.
As a result of this calculation, I will be thinking and writing about AI safety, attempting to convince others of its importance, and, in the moderately probable event that I become very rich, donating money to the SIAI so that they can pay others to do the same.
In general, there seems to have been substantial planning fallacy on the ease of getting skilled people to make progress on them via the Visiting Fellows program and other means. Versions of many of them have eventually come into being (as discussed below) but with great delays. And it seems that delivery of the planned reporting infrastructure failed badly. With respect to the individual papers:
.Containing superintelligence led to this paper which was accepted for a subsequently-cancelled conference and is now seeking a venue, as well as (I believe) an accepted Singularity Hypothesis chapter by Daniel Dewey.
The WBE-AGI one has lagged, but is a submission to the JCS special issue Chalmers' Singularity paper (by myself and Anders Sandberg), with presentations of the content at FHI, San Diego State University, and the AGI-11 workshop on the future of AI.
Collective Action Problems and AI Risk led to another Singularity Hypothesis submission.
AI risk philanthropy was taken on by an external author who never delivered, and subsequently had to be transferred to a different person who hasn't finished it yet.
There is an incarnation of the Singularity FAQ, and lukeprog, along with Anna Salamon, have custody of the landing pages project, with an academic one in place (although they are trading off against the minicamp/bootcamp timewise).
The Coherence of Human Goals led to this paper, at AGI-10.
The Visitors Grants were used.
The two papers at the top, submissions for the cancelled Minds and Machines issue funded before the Challenge, went into limbo after the cancellation.
Software Minds and Endogenous Growth led to a paper at ECAP-2010 which is under continued development but is not a journal article yet.
And then there have been various other non-Challenge papers, like Bostrom and Yudkowsky's joint piece on AI ethics, my piece with Bostrom on inference from evolution to AI difficulty, etc.
Note that that one wasn't actually funded. The ECAP paper is online here.