Solving polynomials using human-level artificial
intelligence
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Calculators use the
binary system and boolean operations in order to do
math equations. Humans do math equations in a
completely different manner. We write an equation
down on paper and we follow the linear steps to solve
the equation.
In this video, I
demonstrate how a robot with human level artificial
intelligence is able to accomplish a math assignment.
The instructions includes doing three different
polynomial problems. This video is silent because I
want the viewers to focus on the thought processes of
the robot while solving polynomial problems. the
robot's conscious is the voice in his head that
guides him to do math equations. This video
demonstrates what kind of data is being fed into the
robot's mind while doing polynomial problems.
The robot has learned
how to solve polynomials from math teachers in
school. Algebra problems, which includes polynomials
are taught to freshmen students in high school. In
order to solve a polynomial, the robot has to know
every math subject matter in elementary school. These
skills include, addition, subtraction,
mulitiplication, order of operations, multiplying
negative and positive numbers, variable
representation, etc. This video shows that the robot
is able to solve problems at a 14 year old level.
The robot is able to
solve "any" polynomial problem because he has a
universal pathway in memory. This universal pathway
was created from averaging all lessons about
polynomials. Similar examples are averaged out and
the universal pathway contains instructions,
patterns, other knowledge, linear steps, guidance,
conflict resolution and so forth. Thus, regardless of
what kind of polynomial or how complicated the
problem is, the robot will be able to solve that
problem.
In the video, the
robot uses strategies to solve equations. These
strategies are patterns contained in the robot's
pathways that will allow the robot to: focus on
terms, focus on numbers, identify specific equations
in a polynomial, manipulate numbers, compare terms,
write numbers on paper, etc. Also, solving a
polynomial, especially a very long polynomial,
requires doing recursive tasks. In the video, I show
how the robot solves equations recursively until the
final answer is discovered.