Consulting Using Semantic AI
English As The Language Of AI
As a natural
language, English has both breadth and depth. You can talk about the psychology
of humans, the aurora, the latest on quantum entanglement, what time the bus
comes. It is a very powerful all-purpose language.
It does have
drawbacks – the use of a word for many different meanings. A word can mean a
noun or a verb (thousands of them), or an adverb or a preposition (the car
turned on a dime, he turned on the light).
In comparison:
LLM
(Large Language Model)
This
approach knows nothing about what words mean. You can set up a prompt, and it will
return a piece of text from the internet or other pre-processed source by
matching word patterns. LLMs do not create objects to represent the words in
the text, give them attributes, and then manipulate them, or reason about
them. It has a very narrow area of application – it is not suitable for
autonomous cars or simulation, such as having a working model of a piece of
complex text. LLMs are effectively an amusing toy.
NeuroSymbolics
This is an
AI language, intended to handle problems that can be separated into memory (
Artificial Neural Networks or ANNs) and reasoning (Symbolic Logic). Declaring
ahead of time the form of problem you can handle is not a useful method for AI,
as problems requiring intelligence to solve are rarely of one kind, or static.
Here is a
small part of the Road User Handbook.
Children
Children have not developed the skills to
understand and react to danger. They’re still learning where to cross safely,
and they can find it hard to judge the speed and distance of vehicles.
This means they can act unpredictably
around traffic. Take extra care near:
•
children playing,
walking or riding bikes near the edge of the road
•
schools, particularly
when children are arriving or leaving
•
school buses or school
bus zones where children may be getting on or off the bus.
Note the presence of the
word “unpredictably”. Words such as this rule out any possibility of LLMs or
NeuroSymbolics or ANNs being of any use – a whole new control structure has to
be created to predict the unpredictable – English allows this (more exactly, a
competent speaker of English does this – creating a hypothetical world and then
ditching it as circumstances change).
English is broad and deep
– new technology or new insights into the human mind are often first written up
in English.
It also does other things:
Figurative Speech – a clump of words will acquire a
more general meaning – “a walk in the park” means something that is easy to do
(there are about 10,000 of them, an essential source for making text easier to
understand).
Long Range Reference
Internal Reference:designated service covered by item 54 of table 1 in section 6
External
Reference:
under subsection 766E(1) of the Corporations Act 2001
The external references
can be active – that is, they mesh with the activity in the working model of
the document being analysed. Effectively, the library becomes an active
structure (within limits – we are not promising the Library of Congress).
Going back to NeuroSymbolics (NS), how would it compare? It would be a nightmare to translate English into NS, particularly for hundreds or thousands of pages, and one could guarantee it would be very wrong in many different ways.
Why Isn’t AI Available Using English?
You took 20
years to learn English, and you have a brain. Computers don’t have a brain
comparable in any way to yours. LLM was an attempt to improve Search Engine
searching. It does that, but has no idea what the words mean, and words in
English can have many meanings – take “bar” as an example. An iron bar, a wine
bar, “the Bar” referring to lawyers collectively, a high-jump bar, as in “he
raised the bar for semiconductor track width” (nothing to do with high jumps),
so you have multiple meanings colliding with figurative speech.
It is not a reducible problem – imagine if you
needed a dozen experts – one for nouns, one for verbs, one for conjunctions,
etc. The first problem – is this word acting as a preposition or adverb – the
car turned on a dime, he turned on the light. It is a problem that needs one
mind to make all the pieces work together, which means it takes a long time
(twenty years – we started in 2000, after enough memory became available in the
1990s). Once solved, the result can be copied millions of times, and updated as
the language grows and changes. People are very good with text as long as it is
not too complex, but fall away rapidly as the complexity increases.
A good example was the F-35. The aircraft would come off the production line, and then be pulled apart to make changes, and those changes meant it had to be pulled apart again, to make other changes, which meant … hundreds of billions of dollars were wasted because people could not understand what complex text was telling them. Interestingly, with computers coming out their ears, they did no better than the B-52, which was also constantly being pulled apart to make changes (they at least had the excuse that computers were in their infancy then, and they were changing to jets).
A simple
example- “a country road”.
“country” can mean:
Noun: the territory of a nation
A rural area
Indigenous lands
The population of a country (“the country was up in arms”)
Back country
Adjective: from or in the countryside
“Road” can
mean:
A specific road
Roads in general (“back on the road again”)
A railway
A chosen path – the road to success
A sheltered area for ships
The result:
Your
Unconscious Mind does this with a high degree of reliability. The Semantic AI
machine has to show the same high reliability.
A more
complex case – the many meanings of the noun “bar”.
In a complex document, which particular meaning is selected will be cause for argument - a user can see which meaning is being used, so there is no basis for ambiguity.
Why Should We Get Involved?
At the
moment, Consulting has been a “cut and paste, get paid, move on to the next
assignment” role. Using English as the AI language will change that irrevocably.
The consulting document becomes an AI program written in English which the
client can run. Mistakes and inconsistencies will show up very quickly, meaning
that consulting will need to be of a much higher quality across the sector.
We would
recommend a short course in Complex Systems Engineering to bring consultants up
to speed. This field is much closer to future AI than “I love programming deep
neural nets” (try doing one where the behaviour is unpredictable – this gives
an insight into just how shallow current AI is).



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