AI ALIGNMENT FORUM
AF

Wikitags

Oracle AI

Edited by pedrochaves, Alex_Altair, Kaj Sotala, et al. last updated 30th Dec 2024

Oracle AI is a regularly proposed solution to the problem of developing Friendly AI. It is conceptualized as a super-intelligent system which is designed for only answering questions, and has no ability to act in the world. The name was first suggested by .

See also

Safety

The question of whether Oracles – or just - are safer than fully free AGIs has been the subject of debate for a long time. Armstrong, Sandberg and Bostrom discuss Oracle safety at length in their Thinking inside the box: using and controlling an Oracle AI. In the paper, the authors review various methods which might be used to measure an Oracle's accuracy. They also try to shed some light on some weaknesses and dangers that can emerge on the human side, such as psychological vulnerabilities which can be exploited by the Oracle through social engineering. The paper discusses ideas for physical security (“boxing”), as well as problems involved with trying to program the AI to only answer questions. In the end, the paper reaches the cautious conclusion of Oracle AIs probably being safer than free AGIs.

In a related work, Dreams of Friendliness, gives an informal argument stating that all oracles will be agent-like, that is, driven by its own goals. He rests on the idea that anything considered "intelligent" must choose the correct course of action among all actions available. That means that the Oracle will have many possible things to believe, although very few of them are correct. Therefore believing the correct thing means some method was used to select the correct belief from the many incorrect beliefs. By definition, this is an which has a goal of selecting correct beliefs.

One can then imagine all the things that might be useful in achieving the goal of "have correct beliefs". For instance, could help this goal. As such, an Oracle could determine that it might answer more accurately and easily to a certain question if it turned all matter outside the box to , therefore killing all the existing life.

Taxonomy

Based on an old draft by Daniel Dewey, Luke Muehlhauser has published a possible taxonomy of Oracle AIs, broadly divided between True Oracular AIs and Oracular non-AIs.

True Oracular AIs

Given that true AIs are goal-oriented agents, it follows that a True Oracular AI has some kind of oracular goals. These act as the motivation system for the Oracle to give us the information we ask and nothing else.

It is first noted that such a True AI is not actually nor causally isolated from the world, as it has at least an input (questions and information) and an output (answers) channel. Since we expect such an intelligent agent to be able to have a deep impact on the world even through these limited channels, it can only be safe if its goals are fully compatible with human goals.

This means that a True Oracular AI has to have a full specification of human values, thus making it a problem – if we could achieve such skill and knowledge we could just build a Friendly AI and bypass the Oracle AI concept.

Oracular non-AIs

Any system that acts only as an informative machine, only answering questions and has no goals is by definition not an AI at all. That means that a non-AI Oracular is but a calculator of outputs based on inputs. Since the term in itself is heterogeneous, the proposals made for a sub-division are merely informal.

An Advisor can be seen as a system that gathers data from the real world and computes the answer to an informal “what we ought to do?” question. They also represent a FAI-complete problem.

A Question-Answerer is a similar system that gathers data from the real world but coupled with a question. It then somehow computes the answer. The difficulty can lay on distinguishing it from an Advisor and controlling the safety of its answers.

Finally, a Predictor is seen as a system that takes a corpus of data and produces a probability distribution over future possible data. There are some proposed dangers with predictors, namely exhibiting goal-seeking behavior which does not converge with humanity goals and the ability to influence us through the predictions.

Further reading & References

  • Dreams of Friendliness
  • Thinking inside the box: using and controlling an Oracle AI by Armstrong, Sandberg and
Subscribe
1
Subscribe
1
Tool AI
optimization process
Nick Bostrom
Bostrom
Eliezer Yudkowsky
AI Boxing
keeping an AGI forcibly confined
Discussion0
Discussion0
computronium
Basic AI drives
acquiring more computing power and resources
FAI-complete
Utility indifference
Posts tagged Oracle AI
91The Parable of Predict-O-Matic
Abram Demski
6y
16
15Contest: $1,000 for good questions to ask to an Oracle AI
Stuart Armstrong
6y
59
10 Oracles: reject all deals - break superrationality, with superrationality
Stuart Armstrong
6y
3
7Under a week left to win $1,000! By questioning Oracle AIs.
Stuart Armstrong
6y
2
25Results of $1,000 Oracle contest!
Stuart Armstrong
5y
0
32Counterfactual Oracles = online supervised learning with random selection of training episodes
Wei Dai
6y
20
19Reflective oracles as a solution to the converse Lawvere problem
Sam Eisenstat
7y
0
16Strategy For Conditioning Generative Models
james.lucassen, Evan Hubinger
3y
4
11Self-Supervised Learning and AGI Safety
Steve Byrnes
6y
1
13Breaking Oracles: superrationality and acausal trade
Stuart Armstrong
6y
4
14Bounded Oracle Induction
Diffractor
7y
0
9Oracles, sequence predictors, and self-confirming predictions
Stuart Armstrong
6y
0
14Analysing: Dangerous messages from future UFAI via Oracles
Stuart Armstrong
6y
12
8Cooperative Oracles
Diffractor
7y
5
8Standard ML Oracles vs Counterfactual ones
Stuart Armstrong
7y
5
Load More (15/49)
Add Posts