Kind: captions Language: en [Music] anytime use noodle networks anytime you learn from data form representation from day in an automated way it's not very explainable as to or it's not introspective to us humans in terms of how this neural network sees the world where why does it succeed so brilliantly on so many in so many cases and fail so miserably in surprising ways and small so what do you think is this is the future there can simply more data better data more organized data solve that problem or is there elements of symbolic systems they need to be brought in which are a little bit more explainable yeah so I prefer to talk about trust and validation and verification rather than just about explain ability and then I think explanations are one tool that you use towards those goals and I think it is an important issue that we don't want to use these systems unless we trust them and we want to understand where they work and where they don't work and in an explanation can be part of that right so I apply for loan and I get denied I want some explanation of why and you have in Europe we have the GD P R that says you're required to be able to get that but on the other hand the explanation alone is not enough right so you know we were used to dealing with people's and with organizations and corporations and so on and they can give you an explanation and you have no guarantee that that explanation relates to reality right right so the bank can tell me well you didn't get the loan because you didn't have enough collateral and that may be true or it may be true that they just didn't like my religion or or something else I can't tell from the explanation and that's that's true whether the decision was made by a computer or by a person so I want more I do want to have the explanations and I want to be able to have a conversation to go back and forth and said well you gave this explanation but what about this and what would have happened if this had happened and what would I need to change that so I think a conversation is a better way to think about it than just an explanation as a single output and I think we need testing of various kinds right so in order to know was the decision really based on my collateral or was it based on my religion or skin color or whatever I can't tell if I'm only looking at my case but if I look across all the cases then I can detect the pattern that's right so you want to have that kind of capability you want to have these adversarial testing right so we thought we're doing pretty good at object recognition in images we said look we're hats or pretty close to human level performance on an image net and so on and then you start seeing these adversarial images and you say wait a minute that part is nothing like human performance you can mess with it really easily you can mess with it really easily right and yeah you could do that to humans too right so in a different way perhaps right humans don't know what color the dress was right and so they're vulnerable to certain attacks that are different than the attacks on the machines but the you know the taxol machines are so striking they really change the way you think about what we've done right and the way I think about it is I think part of the problem is we're seduced by our low dimensional metaphors right yeah so you know you don't like that phrase you look in in a text book and you say okay now we've mapped out the space and you know a cat is here and dog is here and maybe there's a tiny little spot in the middle where you can't tell the difference but mostly we've got it all covered and if you believe that metaphor then you say well we're nearly there and you know there's only gonna be a couple of adversarial images but I think that's the wrong metaphor and what you should really say is it's not a 2d flat space that we've got mostly covered it's a million mentioned space and cat is this string that goes out in this crazy bath and if you step a little bit off the path in any direction you're in nowheres land and you don't know what's gonna happen and so I think that's where we are and now we've got to deal with that so it wasn't so much an explanation but it was an understanding of what the models are and what they're doing and now we can start exploring how do you fix that yeah validating that robustness of the system so onbut take you back to the this this word trust do you think we're a little too hard on our robots in terms of the standards we apply so you know of there's a dance there's a there's a there's a dance and nonverbal and verbal communication between humans you know if we apply the same kind of standard in terms of humans you know we trust each other pretty quickly I you know you and I haven't met before and there's some degree of trust yeah right that nothing's gonna go crazy wrong and yet to AI when we look at AI systems or we seem to approach the skepticism always always you know it's like they have to prove through a lot of hard work that they're even worthy of even inkling of our trust they would do what do you what do you think about that how do we break that barrier close that gap I think that's right I think that's a big issue just listening my friend Marc Moffitt is a naturalist and he says the most amazing thing about humans is that you can walk into a coffee shop or a busy street in a city and there's lots of people around you that you've never met before and you don't kill each other yeah he says chimpanzees cannot do that yeah right right if if you pansies in a situation where here's some that are from my tribe things happen fresh in your coffee shop this delicious food around you know yeah yeah but but we humans have figured that out yeah right and you know for the most part for the most part we still go to war we still do terrible things but for the most part we've learned to trust each other and live together so that's gonna be important for our AI systems as well and I also I think in a lot of the emphasis is on AI but in many cases yeah as part of the technology but isn't really the main thing so a lot of what we've seen is more due to communications technology than AI ta AI technology yeah you want to make these good decisions but the reason we're able to have any kind of system at all is we've got the communications so that we're collecting the data and so that we can reach lots of people around the world I think that's a bigger change that we're dealing with you