- From: Timothy Holborn <timothy.holborn@gmail.com>
- Date: Sat, 29 Oct 2022 12:06:13 +1000
- To: Paola Di Maio <paoladimaio10@gmail.com>
- Cc: W3C AIKR CG <public-aikr@w3.org>, public-cogai <public-cogai@w3.org>
- Message-ID: <CAM1Sok1LVvDESbMg18LXwN=CB=+q4UP00MxTGe7Wr+da_bO9Sw@mail.gmail.com>
Noted. https://en.wikipedia.org/wiki/Knowledge_representation_and_reasoning In terms of knowledge representation, for humanity, my thoughts have been that it's about the ability for people to represent the evidence of a circumstance in a court of law. If solutions fail to support the ability to be used in these circumstances, to successfully represent knowledge - which can be relied upon in a court of law; a circumstance that should never be wanted, but desirable to support peace. Then, I guess, I'd be confused about the purposeful definion; or the useful purpose of any such tools being produced & it's relationship, by design, to concepts like natural justice. https://en.wikipedia.org/wiki/Natural_justice Let me know if I am actually "off topic" per the intended design outcomes. Regards, Timothy Holborn. On Sat, 29 Oct 2022, 11:55 am Paola Di Maio, <paoladimaio10@gmail.com> wrote: > > Just as a reminder, this list is about sharing knowledge, research and > practice in AI KR, The intersection with KR and CogAI may also be relevant > here (and of interest to me) > > If people want to discuss CogAI not in relation to KR, please use the > CogAI CG list? > What I mean is that: if KR is not of interest/relevance to a post, then > why post here? > > What is KR, its relevance and limitations is a vast topic, written about > in many scholarly books, but also these books are not adequately covering > the topic, In that sense, the topic of KR itself, without further > qualification, is too vast to be discussed without narrowing it down to a > specific problem/question > KR in relation to CogAI has been the subject of study for many of us for > many years, and it is difficult to discuss/comprehend/relate to for those > who do not share the background. I do not think this list can fill the huge > gap left by academia, however there are great books freely available online > that give some introduction . > When it comes to the application of KR to new prototypes, we need to > understand what these prototypes are doing, why and how. Unfortunately NN > fall short of general intelligence and intellegibility for humans. > > Adeel, thank you for sharing the paper 40 years of Cognitive Architectures > I am not sure you were on the list back then, but I distributed the > resource as a working reference for this list and anyone interested in > February 2021, and have used the resource as the basis for my research on > the intersection AI KR/CogAI since > https://lists.w3.org/Archives/Public/public-aikr/2021Feb/0017.html > > Dave: the topics KR, AI, CogAI and consciousness, replicability, > reliability, and all the issues brought up in the many posts in this thread > and other thread are too vast > to be discussed meaningfully in a single thread > > May I encourage the breaking down of topics/issues making sure the > perspective and focus of KR (including its limitations) are not lost in > the long threads > > Thank you > (Chair hat on) > > On Fri, Oct 28, 2022 at 6:23 PM Adeel <aahmad1811@gmail.com> wrote: > >> Hello, >> >> To start with might be useful to explore 'society of mind >> <http://aurellem.org/society-of-mind/index.html>' and 'soar' as point of >> extension. >> >> 40 years of cognitive architecture >> <https://link.springer.com/content/pdf/10.1007/s10462-018-9646-y.pdf> >> >> Recently, Project Debater >> <https://research.ibm.com/interactive/project-debater/> also came into >> the scene. Although, not quite as rigorous in Cog or KR. >> >> Thanks, >> >> Adeel >> >> On Fri, 28 Oct 2022 at 02:05, Paola Di Maio <paoladimaio10@gmail.com> >> wrote: >> >>> Thank you all for contributing to the discussion >>> >>> the topic is too vast - Dave I am not worried if we aree or not agree, >>> the universe is big enough >>> >>> To start with I am concerned whether we are talking about the same thing >>> altogether. The expression human level intelligence is often used to >>> describe tneural networks, but that is quite ridiculous comparison. If the >>> neural network is supposed to mimic human level intelligence, then we >>> should be able to ask; how many fingers do humans have? >>> But this machine is not designed to answer questions, nor to have this >>> level of knowledge about the human anatomy. A neural network is not AI in >>> that sense >>> it fetches some images and mixes them without any understanding of what >>> they are >>> and the process of what images it has used, why and what rationale was >>> followed for the mixing is not even described, its probabilistic. go figure. >>> >>> Hay, I am not trying to diminish the greatness of the creative neural >>> network, it is great work and it is great fun. But a) it si not an artist. >>> it does not create something from scratch b) it is not intelligent really, >>> honestly,. try to have a conversation with a nn >>> >>> This is what KR does: it helps us to understand what things are and how >>> they work >>> It also helps us to understand if something is passed for what it is not >>> *(evaluation) >>> This is is why even neural network require KR, because without it, we >>> don know what it is supposed >>> to do, why and how and whether it does what it is supposed to do >>> >>> they still have a role to play in some computation >>> >>> * DR Knowledge representation in neural networks is not transparent, * >>>> *PDM I d say that either is lacking or is completely random* >>>> >>>> >>>> DR Neural networks definitely capture knowledge as is evidenced by >>>> their capabilities, so I would disagree with you there. >>>> >>> >>> PDM capturing knowledge is not knowledge representation, in AI, >>> capturing knowledge is only one step, the categorization of knowledge is >>> necessary to the reasoning >>> >>> >>> >>> >>> >>> >>>> *We are used to assessing human knowledge via examinations, and I don’t >>>> see why we can’t adapt this to assessing artificial minds * >>>> because assessments is very expensive, with varying degrees of >>>> effectiveness, require skills and a process - may not be feasible when AI >>>> is embedded to test it/evaluate it >>>> >>>> >>>> We will develop the assessment framework as we evolve and depend upon >>>> AI systems. For instance, we would want to test a vision system to see if >>>> it can robustly perceive its target environment in a wide variety of >>>> conditions. We aren’t there yet for the vision systems in self-driving cars! >>>> >>>> Where I think we agree is that a level of transparency of reasoning is >>>> needed for systems that make decisions that we want to rely on. Cognitive >>>> agents should be able to explain themselves in ways that make sense to >>>> their users, for instance, a self-driving car braked suddenly when it >>>> perceived a child to run out from behind a parked car. We are less >>>> interested in the pixel processing involved, and more interested in whether >>>> the perception is robust, i.e. the car can reliably distinguish a real >>>> child from a piece of newspaper blowing across the road where the newspaper >>>> is showing a picture of a child. >>>> >>>> It would be a huge mistake to deploy AI when the assessment framework >>>> isn’t sufficiently mature. >>>> >>>> Best regards, >>>> >>>> Dave Raggett <dsr@w3.org> >>>> >>>> >>>> >>>>
Received on Saturday, 29 October 2022 02:06:37 UTC