Part 5

Gradual methods seem to be called for.  However, by utilizing structural
verification and integration, the gradual method can be augmented by
structural advancements where key pieces of knowledge seem to be able to
better explain a variety of related fragments of knowledge.  Of course even
these methods are not absolute so there will always be the problem of
inaccurate knowledge being mixed in with the good.  One of the key problems
with contemporary AGI is that ineffective knowledge (in some form) will
interfere with the effort to build even the foundations for an AGI program.
Since I do not believe that there is any method that will work often enough
to allow for a solid foundation to be easily formed, a way to work with and
around inaccurate and inadequate knowledge has to be found.  Structural
integration can sometimes enhance a cohesive bunch of inaccurate fragments
of knowledge.  But I believe that there are a few things that can be done
to deal with this problem.  First of all, the method of (partial)
verification through structural knowledge should usually work better with
effective fragments of knowledge then it would with inaccurate
fragments.  Secondly,
a few kinds of flaws can often be found in inaccurate theories.  One is
that they are often 'circular' or what I call 'loopy'.  Although good
paradigms (mini-paradigms) are often strongly interdependent, nonsensical
paradigms do not fit well into systems external to the central features of
the paradigm.  This fitting can be done through the cross-categorization
networks across transcendent boundaries and it is an important part of
understanding how good theories work.  The idea of the transcendent
boundary is a solvent for the fact that we don't really form our
understanding of the world based on perfect logic.  So by being able to
examine cross-categorical relations we should be able to deal with small
logical systems that can be related to other small systems even though they
may not be perfectly integrated.  I think most interested people should be
able to get some idea of what I am saying about this problem and they
should be able to find examples of methods to find flaws in simple systems
of theories from real life.  But there is another problem that my theory of
the transcendent boundary system would tend to create.  It would be pretty
easy to build small systems that overlay an 'insightful' bounded system and
these could even be integrated with other transcendent systems that were
built to overlay other insightful bounded systems.  So a well developed
fantasy system could be created on top of related insightful systems using
the methods that I have in mind.  This problem does have a solution.  These
systems which overlay the insightful systems can be carefully examined to
see if a viable method to tie these into some IO observations that are
directly related to the insightful systems could be created.  If a
transcendent system is truly insightful, it should typically be useful in
explaining and predicting some basic observations.  Of course systems like
this are not perfect and during the initial stages of learning the program
might create some elaborate systems of nonsense.  And an exhaustive search
for inaccurate theories can interfere with learning since inaccuracies that
do not play key roles for paradigms can act to support the weight of the
paradigm while the 'student' is first learning.  For instance, the good
student will be aware that the fact that he does not fully understand the
supporting structures (and transcendent relations) of a paradigm does not
mean that he can use his ignorance to knock the theory down.  Similarly,
the fantasy that a system (like an axiomatic system) is sufficient to
support an application of the system would not ruin that student's work
with system unless he tried to apply it to a field where the naive
application was not effective (like trying to use traditional logic to
produce AGI).




On Sun, Apr 14, 2013 at 11:14 PM, Jim Bromer <[email protected]> wrote:

> Part 4
>
> Artificial imagination is also necessary for AGI.  Imagination can take
> place simply by creating associations between concepts but obviously the
> best forms of imagination are going to be based on rational meaningfulness.
> An association between concepts or (concept objects) which cannot be
> interpreted as meaningful is not usually very useful. So it seems that if
> the relationship is both imaginative and potentially meaningful it would be
> advantageous.  An association formed by a categorical substitution is
> more likely to be meaningful so I consider this a rational form of
> imagination.  However, you can find many examples where a categorical
> substitution does not produce a meaningful association, so perhaps my claim
> that it is a rational process is dependent on the likelihood that the
> process will turn up a greater proportion of meaningful relations than
> purely random associations.  Some imaginative relations may exist just as
> entertainment, but I believe that the application of the imagination is one
> of the more important steps toward understanding.  In fact, I believe
> that all understanding is essentially a form of imaginative projection,
> where you project previously formed ideas onto an ongoing situation which
> is recognized or thought to share some characteristics with the projected
> ideas.  So from this point of view, the reliance of previously learned
> knowledge is really an application of the imagination.  Perhaps it is a
> special form of imagination but the imagination none the less.  Anyway,
> once an imaginative association or relation is created it has to be tested.
> I feel that relations of understanding cannot be appreciated out of context.
> The basic rule of thumb is that it takes knowledge of many things to
> understand one thing.  This creates a problem when trying to test or
> validate an insight which was partially produced by the imagination or
> which had to be fitted using imaginative projection.  The only way an AGI
> program is going to be able to validate a new idea is by seeing how well it
> fits and how well it works in a variety of related contexts.  This is
> what I call a structural integration.  It not only represents a single
> concept but it also carries a lot of other information with it that can
> seemingly explain a lot of other small facts as well.  A new idea seems
> to make sense if it fits in with a number of insights that were previously
> acquired.
>
>
>
>
> On Sun, Apr 14, 2013 at 3:30 PM, Jim Bromer <[email protected]> wrote:
>
>> Part 3
>>
>> The program will make extensive use of generalizations and
>> cross-generalization. The program will need to be able to discover
>> abstractions.  These abstractions typically may be used to develop
>> generalizations. A generalization may be formed from a group in which all
>> the members share some common characteristics. However, generalizations may
>> also be formed by various arbitrary processes. And, if the program works,
>> generalizations may be formed in response to some educational instruction.
>> The most typical example of cross-generalization may be the consideration
>> of similarities across individual systems of taxonomies or classes or
>> subclasses.  In this broad definition of generalization, the collections
>> do not have to be grouped by any common characteristic and the same can go
>> for cross-categorizations.  Although this might be a misuse of the term
>> generalization, the generalizations that my program will create may not be
>> trees because they can potentially branch off in different directions.  
>> Indexes
>> into data for internal searches may be formed in a similar way but I will
>> have to think about whether the variety of branching makes sense as I am
>> developing the program.  I believe that because of the variety of forms
>> of generalization or categorization that the program will use it is
>> necessary for the program to keep track of the different kinds of
>> categorization and generalization that it develops.  And it will put
>> transcendent boundaries around portions of the generalizations that it
>> develops as it uses them in particular ways. These boundaries are
>> transcendent in that overlapping relations may be considered across them
>> (as in cross-generalization or cross-categorization). Perhaps the terms
>> relations and categorization are more abstract than the terms of
>> generalization.  So the program will be able to develop abstractions of
>> relations and then build categorizations from these relations.  The
>> categories that I have in mind may be somewhat free-wheeling.  
>> Cross-categorization
>> will be important because they will help the program find and consider
>> similarities across the categorical structures. These categorical
>> structures may need to be bounded, but since bounded categories may still
>> be related across a relatively dominant categorical relation that means
>> that they can be transcended by other associative relations.
>>
>>
>>
>>
>>
>>
>> On Sat, Apr 13, 2013 at 7:34 AM, Jim Bromer <[email protected]> wrote:
>>
>>> Part 2
>>>
>>> I believe that it takes a great deal of knowledge to 'understand' one
>>> thing.  A statement has to be integrated into a greater collection of
>>> knowledge in order for the relations of understanding to be formed.  And
>>> the knowledge of a single statement has to be integrated into a greater
>>> field of knowledge concerning the central features of the subject for the
>>> intelligent entity to truly understand the statement.  While conceptual
>>> integration, by some name, has always been a primary subject in AI/AGI, I
>>> think it was relegated to a subservient position by those who originally
>>> stressed the formal methods of logic, linguistics, psychology, numerics,
>>> probability, and neural networks.  Thinking that the details of how
>>> ideas work in actual thinking was either part of some
>>> predawn-of-science-philosophy or the turn-of-the-crank production of the
>>> successful application of formal methods, a focus on the details of how
>>> ideas work in actual problems was seen as naïve.  This problem, where
>>> the smartest thinkers would spend lives pursuing the abstract problems
>>> without wasting their time carefully examining many real world cases occurs
>>> often in science.  It is amplified by ignorance.  If no one knows how
>>> to create a practical application then the experts in the field may become
>>> overly pre-occupied with the proposed formal methods that had been
>>> presented to them.  Formal methods are important - but they are each
>>> only one kind of thing.  It takes a great deal of knowledge about many
>>> different things to 'understand' one kind of thing.  A reasonable rule
>>> of thumb is that formal methods have to be tried and shaped based on
>>> exhaustive applications of the methods to real world problems.
>>>
>>> In order to integrate new knowledge the new idea that is being
>>> introduced usually has to be verified using many steps to show that it
>>> holds.  Since there is no absolute insight into truth for this kind of
>>> thing, knowledge has to be integrated in a more thorough trial and error
>>> manner.  The program has to create new theories about statements or
>>> reactions it is considering.  This would extend to interpretations of
>>> observations for systems where other kinds of sensory systems were used.
>>> A single experiment does not 'prove' a new theory in science.  A large
>>> number of experiments are required and most of those experiments have to
>>> demonstrate that the application of the theory can lead to better
>>> understanding of other related effects.  It takes a knowledge of a
>>> great many things to verify a statement about one thing.  In order for
>>> the knowledge represented by a statement to be verified and comprehended it
>>> has to be related to, and integrated with, a great many other statements
>>> concerning the primary subject matter.  It is necessary to see how the
>>> primary subject matter may be used in many different kinds of thoughts to
>>> be able to understand it.
>>>
>>>
>>> On Sat, Apr 13, 2013 at 6:39 AM, Jim Bromer <[email protected]> wrote:
>>>
>>>> Part 1
>>>>
>>>> I feel that complexity is a major problem facing contemporary AGI.  It
>>>> is true, that for most human reasoning we do not need to figure out
>>>> complicated problems precisely in order to take the first steps toward
>>>> competency but so far AGI has not been able to get very far beyond the
>>>> narrow-AI barrier.
>>>>
>>>> I am going to start with a text-based AGI program.  I agree that more
>>>> kinds of IO modalities would make an effective AGI program better.  
>>>> However,
>>>> I am not aware of any evidence that sensory-based AGI or multi-modal
>>>> sensory based AGI or robotic based AGI has been able to achieve something
>>>> greater than other efforts. The core of AGI is not going to be found in the
>>>> peripherals.  And it is clear that starting with complicated IO
>>>> accessories would make AGI programming more difficult.  It seems
>>>> obvious that IO is necessary for AI/AGI and this abstraction is a probably
>>>> more appropriate basis for the requirements of AGI.
>>>>
>>>> My AGI program is going to be based on discreet references. I feel that
>>>> the argument that only neural networks are able to learn or are able to
>>>> incorporate different kinds of data objects into an associative field is
>>>> not accurate. I do, however, feel that more attention needs to be paid to
>>>> concept integration.  And I think that many of us recognize that a
>>>> good AGI model is going to create an internal reference model that is a
>>>> kind of network.  The discreet reference model more easily allows the
>>>> program to retain the components of an agglomeration in a way in which the
>>>> traditional neural network does not.  This means that it is more
>>>> likely that the parts of an associative agglomeration can be detected.
>>>> On the other hand, since the program will develop its own internal data
>>>> objects, these might be formed in such a way so that the original parts
>>>> might be difficult to detect. With a more conscious effort to better
>>>> understand concept integration I think that the discreet conceptual network
>>>> model will prove itself fairly easily.
>>>>
>>>> I am going to use weighted reasoning and probability but only to a
>>>> limited extent.
>>>>
>>>
>>>
>>
>



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AGI
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