Experience-based AI (EXPAI)
As it becomes ever clearer how machines with a human level of intelligence can be built — and indeed that they will be built — there is a pressing need to discover ways to ensure that such machines will robustly remain benevolent, especially as their intellectual and practical capabilities come to surpass ours. Through self-modification, highly intelligent machines may be capable of breaking important constraints imposed initially by their human designers. The currently prevailing technique for studying the conditions for preventing this danger is based on forming mathematical proofs about the behavior of machines under various constraints. However, this technique suffers from inherent paradoxes and requires unrealistic assumptions about our world, thus not proving much at all.
Recently a class of machines that we call experience-based artificial intelligence (EXPAI) has emerged, enabling us to approach the challenge of ensuring robust benevolence from a promising new angle. This approach is based on studying how a machine’s intellectual growth can be molded over time, as the machine accumulates real-world experience, and putting the machine under pressure to test how it handles the struggle to adhere to imposed constraints.
The Swiss AI lab IDSIA will deliver a widely applicable EXPAI growth control methodology.
Whenever one wants to verify that a recursively self-improving system will robustly remain benevolent, the prevailing tendency is to look towards formal proof techniques, which however have several issues: (1) Proofs rely on idealized assumptions that inaccurately and incompletely describe the real world and the constraints we mean to impose. (2) Proof-based self-modifying systems run into logical obstacles due to Lob’s theorem, causing them to progressively lose trust in future selves or offspring. (3) Finding nontrivial candidates for provably beneficial self-modifications requires either tremendous foresight or intractable search.
Recently a class of AGI-aspiring systems that we call experience-based AI (EXPAI) has emerged, which fix/circumvent/trivialize these issue. They are self-improving systems that make tentative, additive, reversible, very fine-grained modifications, without prior self-reasoning; instead, self-modifications are tested over time against experiential evidences and slowly phased in when vindicated or dismissed when falsified. We expect EXPAI to have high impact due to its practicality and tractability. Therefore we must now study how EXPAI implementations can be molded and tested during their early growth period to ensure their robust adherence to benevolence constraints.
In this project, the Swiss AI lab IDSIA will deliver an EXPAI growth control methodology that shall be widely applicable.