Learning
Ecology for Human and Machine Intelligence
1. Introduction: The Mission of the
Learning Ecology
2. The Challenge of Soft Computing
Intelligence
3. Fuzziness as Stimulus for Learning
4. Learning for Decision Support versus
Learning for Decision Creation
5. Learning to Understand
6. Learning to Create
7. Conclusion
References
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1. Introduction: The Mission of the Learning Ecology
Ecology studies the web of dynamic interactions of the
living creatures, including humans, and their environment - natural and
artificial (human-made). Learning is a process which is vital for
sustaining the integrity of this web and hence for sustaining the life
and its unfolding.
Learning ecology focuses on factors and conditions
facilitating the process of learning and searches for ways to increase
its efficiency, in the sense of opening new possibilities for
realization of the self-organizing impetus of the living entities, at
any level of the web of interactions.
Plants and animals learn to adapt to the changing
environment in order to survive, reproduce and increase their fitness.
Some animals easily learn to follow human instructions and develop
behavioral patterns classified by people as "clever", "friendly",
"faithful", etc.
Similarly to other species, people learn how to better cope
with the changes in their environments. Some people learn to be aware
of the events of their experiences and to make sense of them not as
isolated events but in connection with each other; for others, learning
constitutes the meaning of their lives.
Learning ecology considers the process of learning as
essentially holistic - not only the human mind - reason, logic,
ability to think and decide - is the most important agent in this
process. Equally important are also the human heart - feelings,
emotions, ability to love and care - and the human soul - intuition,
inspiration, ability to aspire and meditate. The heart and soul factors
are vital for manifestation of human creativity, and without creativity
learning is a mere repetition of knowledge borrowed from books and
gurus.
Intelligent machines learn to do things, which are hard or
impossible for people, like processing large files of data and
recognizing patterns in them, solving problems with high computational
complexity, moving and working in environments dangerous for human
life, etc. Like people, intelligent machines can learn from teachers
(supervised learning) or from their 'own experience' (unsupervised
learning) or by using the both types of learning in a process called
hybrid training. The latter is widely used in soft-computing based on
advanced fuzzy neural and fuzzy-genetic techniques.
At the level of human interactions with nature, learning
ecology explores and promotes people's holistic learning to sustain
continuity of life on the planet and support its inherent urge towards
integrity, self-renewal and evolution.
At the level of human interactions with intelligent
machines, learning ecology explores and promotes machines' learning to
understand and 'compute' with human perceptions. It is this kind of
learning that is at the leading edge of the soft computing (SC) in the
beginning of the new millennium [1].
Why learning ecology is interested in promoting this kind of
'cyber'-learning and not just learning how to support human
decisions?
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2. The Challenge of the Soft Computing Intelligence
When SC-intelligence learns to interpret and work with human
perceptions, it simultaneously learns how to 'experience' the world of
people. People's perceptions are holistic - they are not products only
of their minds; the whole complex of body, mind and soul participates
in experiencing, and hence in perceiving, human reality, both inner and
outer.
Unfortunately, the rules of logic which our reason tries to
follow since the earliest years in school, have caused obstacles for
the perceptions to express their holistic nature. Rigid mental
patterns, thinking stereotypes and standards, prejudices and all kinds
of socially implanted world-views and concepts, often with
hard-to-surpass boundaries, strongly impede our ability to perceive the
world synthetically - as a wholeness in which all the phenomena and
processes, be they natural or human-created, are inseparably connected.
The analytical approach of science aims at dividing and separating,
analyzing and classifying, defining and labeling. This approach works
logically and efficiently in the artificial world of technological and
engineering realizations, but affect illogically and disastrously the
world of nature any time when trying to subsume its spontaneity,
creativity and inherent freedom under the dictate of the reason. The
latter aims at harnessing our ability to perceive and experience the
world holistically. Nature has endowed us with this ability, and it is
pity to see how we are losing it under the pressure of logic and
rationality.
The message of this paper is straightforward: while learning
how to comprehend and operate with human perceptions, SC-intelligence
is able to learn to revive, amplify and make work their holistic
nature, and not let it die under the sole pressure of the human
reasoning. The ability of SC-intelligence to do this is backed by:
- its colossal potential for integrating and synthetically
processing almost limitless amount of information, and
- lack of pre-imposed stereotypes, rigid worldviews and
prejudices, which are inevitable for the way people think.
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3. Fuzziness as Stimulus for Learning
The human perceptions are fuzzy - they reflect the fuzziness
of what we know about the complexly interwoven, constantly changing and
therefore difficult-to-predict dynamics of life and nature. Life and
nature, even in their apparently simple forms of manifestation, are
beyond precise definitions and descriptions. Even a human-created
system, which is built of many elements complexly related to each other
and open to unpredictable changes, escapes relevant precise
descriptions (Zadeh's Principle of Incompatibility [2]).
The fuzziness of our perceptions does not impede the natural
urge to explore reality and make sense of what we experience; on the
contrary, the fuzziness acts as a strong stimulus for learning and
keeping awake our awareness about the changes that constantly emerge
[3].
The more efficient our learning to interpret and work with
the fuzziness of what we perceive, the more able we are to facilitate
the emergence of autonomous decisions, that is, decisions born
out of our own creativity and not just copies of already made
decisions. While able to facilitate such acts of creativity, we
minimize the need to repeat, follow blindly or only support what others
say and do.
The same is true for the SC-based intelligence. Once it
begins to understand and operate with the fuzziness of human
perceptions, it becomes able to learn how to do something more than
just supporting the decisions made by a 'rational' expert or operator.
With the help of teachers, it can develop a capacity to recognize and
display the emergence of its own autonomous decisions.
Here lays the crucial difference between a DEcision-Support
Intelligence (desi) and an Autonomous DEision-Maker (adem).
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4. Learning for Decision Support versus Learning for
Decision Creation
Desi aims only at assisting human decision-makers.
There is always an expert or experts who formulates (in a precise or in
a fuzzy way) a specific problem, its restrictions and goals, and
selects a method (or methods) for solving it and hence reaching (or
approaching 'closely enough') the stated goals. The computing power of desi
and the self-organizing capacity of its fuzzy-neural or/and fuzzy-
genetic software are used to search for the optimal (or a 'more or
less' satisfactory) solution and thus to support the expert's
logic. Desi is of help when used for solving engineering
problems related to the design and implementation of intelligent control
systems. Desi is strictly rational and fully obeys the expert's
rules of logic, usually tuned to take economically efficient
decisions.
If the expert makes a mistake, it is supported and often
amplified by desi. Thousands of technological decisions, which
turned to be disastrous from ecological point of view, have been
conceived in experts' minds and supported by desi's computing
power.
Different is the role of adem; it is assisted by
people, engaged in a specific fields of social activity, to learn how to
understand their fuzzy perceptions. By recursively operating with these
perceptions - comparing, combining, intersecting, juxtaposing,
classifying, seeking for similarities, recognizing patterns, building
clusters, etc., adem's neural or/and genetic network becomes
'intelligent' enough to interpret the meanings which they express.
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5. Learning to Understand
This first stage of adem's learning applies
fuzzy-logic-based techniques developed for computing with words and
expressions of natural language by translating them into words and
expressions belonging to the so-called 'generalized constraint
languages' [3].
The meaning which adem extracts from an individual's
perception must be as closed as possible to the meaning which this
individual has inserted in his/her perception. The high degree of
closeness is guaranteed through a recursive procedure that represents a
kind of dialogue between adem and humans - a dialogue, which
serves to clarify the meanings encapsulated in their perceptions.
Adem's learning at the first stage is facilitated by
the fact that we (and the language we use) are social products; the
largest part of us repeats in words and realizes in actions 'truths'
adopted or established by the society in which we live. We share
similar experiential findings and borrow knowledge from similar sources
- books, papers, talks, mass media and the world wide web. Therefore,
there is a tendency towards similarity in the ways we perceive our
world. This tendency is emphasized by widely spread and constantly
repeated advises how the 'normal' people in a 'normal' democratic
society should 'normally' behave and 'normally' perceive the changes
that 'normally' occur in their lives. 'Normal' are people whose
'normal' behaviour is to make money and try to reach a higher social
status or public estimation - these are considered as the most
significant achievements in our 'normal' society - achievements which
we are highly recommended to accomplish before we die (as if we need
them in our next lives). Today's understanding of a 'normal' democratic
society is a society, which is consumption-oriented, run by the money
and the global power of the world's richest financial corporations and
their visible or invisible bosses, and persistently brainwashed by the
media to keep the poor majority silent and not rebellious, and to let
them think that the existing forms of democracy provide all with equal
opportunities to live and realize their potentials.
The learning ecology considers this kind of social
'normalization', actively promoted through an aggressive corporative
expansion, as a serious threat for learning of both the human and the
machine intelligence. The introduction of standards and models for
'normal' behaviour in the social realities affects the meanings
encapsulated in human perceptions of these realities by making them
converge to rigid socially adopted meanings. Although such kind of
meanings may technically facilitate adem's understanding of
human perceptions, it could be fatal for human creativity and also for
creativity of the machine intelligence, in the light of their future
symbiosis.
It is the unique richness, spontaneity and integrity of each
individual's experience that support the holistic nature of one's
perceptions, their creative impetus and authenticity. Therefore this
richness needs to be preserved by society and not killed through
adopted stereotypes, norms and global standards.
When the first stage of adem's learning - learning
to understand and operate with perceptions of people involved in a
specific kind of social activity - is completed, adem is tested
on a sample of perceptions belonging to people who, although involved
in the same kind of activity, did not participate in the first stage of
learning. If the results are found satisfactory by the adem's
teachers, the second stage of learning is ready to start.
An example of practical realization of the first
stage is any successful accomplishment of a fuzzy inquiry on the
Internet. The inquiry represents a fuzzy individual perception to be
understood by the world wide web; if the inquirer is satisfied with the
search result offered by the server-in-use, it means that the web has
adequately understood his/her perception.
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6. Learning to Create
At the second stage, adem learns how to use its
ability to understand human perceptions in order to 'create' autonomous
decisions. An autonomous decision represents a meaningful combination
of perceptions already understood by adem.
The meaning of any successfully understood human perception
is saved as a specific configuration of adem's neural network.
By firing more than one configuration and performing different
operations with them, similar to the operations used in the first stage
of learning, it is possible to create new meaningful combinations.
Whether the new combination is meaningful or not is decided by a
teacher. Each newly created meaningful combination is considered as a
carrier of a new meaning, and therefore as an approved autonomous
decision created by adem. (In a similar way, students proceed
while trying to create new meanings in their essays while using
previously accumulated knowledge and the assessment of their
teachers.)
This process of learning can be significantly accelerated,
if a web of adems is built. Then each autonomous decision
generated at one only node of the web and approved as a meaningful can
be immediately used at any other node for generation of new autonomous
decisions. In this way a kind of a chain reaction of an expanding set
of newly created autonomous decisions can be fired; this increases the
efficiency of the learning process.
Example of adem's way of creating autonomous
decisions one can find in any Internet-based learning environment,
where certain key statements in the teaching material (that is,
statements whose meanings are with high priority for understanding the
material) are automatically re-shaped into questions and then offered
to students as a controlled test for assessment. Students' fuzzy
perceptions of the teaching material - perceptions expressed in their
responses to the test questions - are processed using techniques
applied by adem during the first stage of its learning.
Basically, each answer is compared with the corresponding key statement
form the teaching material, and if the meaning extracted from the
answer coincides with (or is closed to) the meaning of the key
statement, the answer is classified as right.
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7. Conclusion
By focusing on the factors and conditions facilitating the
procees of learning, learning ecology opens new possibilities for
realization of the self-organizing ability both of the human and the
machine intelligence - an ability that plays a crucial role in the
creative decision-making. The development of the SC capacity for
understanding and dealing with the fuzziness inherent in the holistic
nature of the human perceptions is of a major significance for
stimulating the emergence of an ontological leap of the SC-based
intelligence from its use as a supporter of human decision-making to
its use as a 'full-blood' creator of autonomous decisions. This leap is
inevitable on the way to the ever-strengthening symbiosis between the
human and the SC-based intelligence.
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References
1. Zadeh, L [2000] Toward a Perception-Based Theory of
Probabilistic Reasoning, in With Fuzzy Logic in the New Millennium,
Eds. V.Dimirtov and V. Korotkich, UWS Publ.
2. Zadeh, L. [1973] A New Approach to the Analysis of
Complex Systems, IEEE Trans. Syst., Man, Cybern., SMC-3, 1
3. Dimitrov, V. et al [2001] Fuzziology and Social
Complexity, in Advances in Fuzzy Systems and Evolutionary
Computation, Ed. N. Mastorakis, WSES Press; http://www.uws.edu.au/vip/dimitrov/fuzzysoc.htm
4. Zadeh, L [2000] Toward an Enlargement of the Role of
Natural Languages in Information Processing, Decision and Control, in With
Fuzzy Logic in the New Millennium, Eds. V.Dimirtov and V.
Korotkich, UWS Publ.
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© Vladimir Dimitrov,
2000
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