I like being convinced that my preferential allocation of time is non-optimal. That way I can allocate my time to something more constructive. I vastly prefer more rational courses of action to less rational courses of action.
I of course advocate understanding failure scenarios, but the bronze age wasn't really the time to be contemplating grey goo countermeasures. Even if they'd want to at that time, they would have had nowhere near the competence to be doing anything other than writing science fiction. Which is what I see such a wiki at this point in time as being.
As an aspiring AI coder, suppose I were to ask, for any given article on the wiki, for any given failure scenario, to see some example code that would produce such a failure, so that, while coding my own AI, I am able to more coherently avoid that particular failure. As it is my understanding that nothing of the sort is even close to being able to be produced (to not even touch upon the security concerns), I do not see how such a wiki would be useful at this point in (lack of?) development.
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Series: How to Purchase AI Risk Reduction
One large project proposal currently undergoing cost-benefit analysis at the Singularity Institute is a scholarly AI risk wiki. Below I will summarize the project proposal, because:
The Idea
Think Scholarpedia:
But the scholarly AI risk wiki would differ from Scholarpedia in these respects:
Example articles: Eliezer Yudkowsky, Nick Bostrom, Ben Goertzel, Carl Shulman, Artificial General Intelligence, Decision Theory, Bayesian Decision Theory, Evidential Decision Theory, Causal Decision Theory, Timeless Decision Theory, Counterfactual Mugging, Existential Risk, Expected Utility, Expected Value, Utility, Friendly AI, Intelligence Explosion, AGI Sputnik Moment, Optimization Process, Optimization Power, Metaethics, Tool AI, Oracle AI, Unfriendly AI, Complexity of Value, Fragility of Value, Church-Turing Thesis, Nanny AI, Whole Brain Emulation, AIXI, Orthogonality Thesis, Instrumental Convergence Thesis, Biological Cognitive Enhancement, Nanotechnology, Recursive Self-Improvement, Intelligence, AI Takeoff, AI Boxing, Coherent Extrapolated Volition, Coherent Aggregated Volition, Reflective Decision Theory, Value Learning, Logical Uncertainty, Technological Development, Technological Forecasting, Emulation Argument for Human-Level AI, Evolutionary Argument for Human-Level AI, Extensibility Argument for Greater-Than-Human Intelligence, Anvil Problem, Optimality Notions, Universal Intelligence, Differential Intellectual Progress, Brain-Computer Interfaces, Malthusian Scenarios, Seed AI, Singleton, Superintelligence, Pascal's Mugging, Moore's Law, Superorganism, Infinities in Ethics, Economic Consequences of AI and Whole Brain Emulation, Creating Friendly AI, Cognitive Bias, Great Filter, Observation Selection Effects, Astronomical Waste, AI Arms Races, Normative and Moral Uncertainty, The Simulation Hypothesis, The Simulation Argument, Information Hazards, Optimal Philanthropy, Neuromorphic AI, Hazards from Large-Scale Computation, AGI Skepticism, Machine Ethics, Event Horizon Thesis, Acceleration Thesis, Singularitarianism, Subgoal Stomp, Wireheading, Ontological Crisis, Moral Divergence, Utility Indifference, Personhood Predicates, Consequentialism, Technological Revolutions, Prediction Markets, Global Catastrophic Risks, Paperclip Maximizer, Coherent Blended Volition, Fun Theory, Game Theory, The Singularity, History of AI Risk Thought, Utility Extraction, Reinforcement Learning, Machine Learning, Probability Theory, Prior Probability, Preferences, Regulation and AI Risk, Godel Machine, Lifespan Dilemma, AI Advantages, Algorithmic Complexity, Human-AGI Integration and Trade, AGI Chaining, Value Extrapolation, 5 and 10 Problem.
Most of these articles would contain previously unpublished research (not published even in blog posts or comments), because most of the AI risk research that has been done has never been written up in any form but sits in the brains and Google docs of people like Yudkowsky, Bostrom, Shulman, and Armstrong.
Benefits
More than a year ago, I argued that SI would benefit from publishing short, clear, scholarly articles on AI risk. More recently, Nick Beckstead expressed the point this way:
Chris Hallquist added:
Of course, SI has long known it could benefit from clearer presentations of its views, but the cost was too high to implement it. Scholarly authors of Nick Bostrom's skill and productivity are extremely rare, and almost none of them care about AI risk. But now, let's be clear about what a scholarly AI risk wiki could accomplish:
There are some benefits to the wiki structure in particular:
Costs
This would be a large project, and has significant costs. I'm still estimating the costs, but here are some ballpark numbers for a scholarly AI risk wiki containing all the example articles above: