Suppose you buy the argument that humanity faces both the risk of AI-caused extinction and the opportunity to shape an AI-built utopia. What should we do about that? As Wei Dai asks, "In what direction should we nudge the future, to maximize the chances and impact of a positive intelligence explosion?"
This post serves as a table of contents and an introduction for an ongoing strategic analysis of AI risk and opportunity.
Contents:
- Introduction (this post)
- Humanity's Efforts So Far
- A Timeline of Early Ideas and Arguments
- Questions We Want Answered
- Strategic Analysis Via Probability Tree
- Intelligence Amplification and Friendly AI
- ...
Why discuss AI safety strategy?
The main reason to discuss AI safety strategy is, of course, to draw on a wide spectrum of human expertise and processing power to clarify our understanding of the factors at play and the expected value of particular interventions we could invest in: raising awareness of safety concerns, forming a Friendly AI team, differential technological development, investigating AGI confinement methods, and others.
Discussing AI safety strategy is also a challenging exercise in applied rationality. The relevant issues are complex and uncertain, but we need to take advantage of the fact that rationality is faster than science: we can't "try" a bunch of intelligence explosions and see which one works best. We'll have to predict in advance how the future will develop and what we can do about it.
Core readings
Before engaging with this series, I recommend you read at least the following articles:
- Muehlhauser & Salamon, Intelligence Explosion: Evidence and Import (2013)
- Yudkowsky, AI as a Positive and Negative Factor in Global Risk (2008)
- Chalmers, The Singularity: A Philosophical Analysis (2010)
Example questions
Which strategic questions would we like to answer? Muehlhauser (2011) elaborates on the following questions:
- What methods can we use to predict technological development?
- Which kinds of differential technological development should we encourage, and how?
- Which open problems are safe to discuss, and which are potentially dangerous?
- What can we do to reduce the risk of an AI arms race?
- What can we do to raise the "sanity waterline," and how much will this help?
- What can we do to attract more funding, support, and research to x-risk reduction and to specific sub-problems of successful Singularity navigation?
- Which interventions should we prioritize?
- How should x-risk reducers and AI safety researchers interact with governments and corporations?
- How can optimal philanthropists get the most x-risk reduction for their philanthropic buck?
- How does AI risk compare to other existential risks?
- Which problems do we need to solve, and which ones can we have an AI solve?
- How can we develop microeconomic models of WBEs and self-improving systems?
- How can we be sure a Friendly AI development team will be altruistic?
Salamon & Muehlhauser (2013) list several other questions gathered from the participants of a workshop following Singularity Summit 2011, including:
- How hard is it to create Friendly AI?
- What is the strength of feedback from neuroscience to AI rather than brain emulation?
- Is there a safe way to do uploads, where they don't turn into neuromorphic AI?
- How possible is it to do FAI research on a seastead?
- How much must we spend on security when developing a Friendly AI team?
- What's the best way to recruit talent toward working on AI risks?
- How difficult is stabilizing the world so we can work on Friendly AI slowly?
- How hard will a takeoff be?
- What is the value of strategy vs. object-level progress toward a positive Singularity?
- How feasible is Oracle AI?
- Can we convert environmentalists into people concerned with existential risk?
- Is there no such thing as bad publicity [for AI risk reduction] purposes?
These are the kinds of questions we will be tackling in this series of posts for Less Wrong Discussion, in order to improve our predictions about which direction we can nudge the future to maximize the chances of a positive intelligence explosion.
Let me rephrase: I think the expected gain from pursuing FAI is less that pursuing other methods. Other methods are less likely to work, but more likely to be implementable. I think SIAI disagrees with this accessment.
I assume that by "implementable" you mean that it's an actionable project, that might fail to "work", i.e. deliver the intended result. I don't see how "implementability" is a relevant characteristic. What matters is whether something works, i.e. succeeds. If you think that other methods are less likely to work, how are they of greater expected value? I probably parsed some of your terms incorrectly.