“I call this the emotional alignment design policy. So the idea is that corporations, if they create sentient machines, should create them so that it's obvious to users that they're sentient. And so they evoke appropriate emotional reactions to sentient users. So you don't create a sentient machine and then put it in a bland box that no one will have emotional reactions to. And conversely, don't create a non sentient machine that people will attach to so much and think it's sentient that they'd be willing to make excessive sacrifices for this thing that isn't really sentient.”
- Eric Schwitzgebel
Why should AI systems be designed so as to not confuse users about their moral status? What would make an AI system sentience or moral standing clear? Are there downsides to treating an AI as not sentient even if it’s not sentient? What happens when some theories of consciousness disagree about AI consciousness? Have the developments in large language models in the last few years come faster or slower than Eric expected? Where does Eric think we will see sentience first in AI if we do?
Eric Schwitzgebel is professor of philosophy at University of California, Berkeley, specializing in philosophy of mind and moral psychology. His books include Describing Inner Experience? Proponent Meets Skeptic (with Russell T. Hurlburt), Perplexities of Consciousness, A Theory of Jerks and Other Philosophical Misadventures, and most recently The Weirdness of the World. He blogs at The Splintered Mind.
Topics discussed in the episode:
- Introduction (0:00)
- AI systems must not confuse users about their sentience or moral status introduction (3:14)
- Not confusing experts (5:30)
- Not confusing general users (9:12)
- What would make an AI system sentience or moral standing clear? (13:21)
- Are there downsides to treating an AI as not sentient even if it’s not sentient? (16:33)
- How would we implement this solution at a policy level? (25:19)
- What happens when some theories of consciousness disagree about AI consciousness? (28:24)
- How does this approach to uncertainty in AI consciousness relate to Jeff Sebo’s approach? (34:15)
- Consciousness and artificial intelligence insights from the science of consciousness introduction (36:38)
- How does the indicator properties approach account for factors relating to consciousness that we might be missing? (39:37)
- What was the process for determining what indicator properties to include? (42:58)
- Advantages of the indicator properties approach (44:49)
- Have the developments in large language models in the last few years come faster or slower than Eric expected? (46:25)
- Where does Eric think we will see sentience first in AI if we do? (50:17)
- Are things like grounding or embodiment essential for understanding and consciousness? (53:35)
Resources discussed in the episode are available at https://www.sentienceinstitute.org/podcast
Support the show
信息
- 节目
- 发布时间2024年2月15日 UTC 02:00
- 长度58 分钟
- 单集23
- 分级儿童适宜