The thought of machine-based intelligence to learn and decide upon
given input, seems almost supernatural.
Artificial intelligence has been a vision and dream of thousands if not
millions of people throughout the years.
There are numerous counts of artificial intelligence (AI) being
researched, studied, and implemented over the course of generations. Even though, the start of artificial
intelligence was purely imaginary in theater, films, and movies, it gave
artificial intelligence a bad impression from the horrible stories portrayed.
Although, the possibilities of utilizing artificial intelligence
within robotics is a viable option and it is even being tested in science
research labs across the world today.
There are even far more opportunities available when utilizing
artificial intelligence separate of robotics, such as the well-known SIRI, newly
created self-driving cars, and visual recognition. As mentioned by Joachim Buhmann (2008) in a
book section titled “Visual Recognition: How can we learn complex models?”,
within the book Security Informatics and Terrorism: Patrolling the Web: Social
and Technical Problems of Detecting and Controlling Terrorists’ Use of the
World Wide Web:
Therefore, learning of
these image categories should not be hand tailored by humans, but the statistics
should speak for themselves and the algorithm should find a representation
which actually warrants the label given to that image. (p. 166)
In the given study by Buhmann, there are three structural
properties utilized for an artificial intelligence model to make various
informed observations and decisions about the given input. The first of the three is called decoupling,
which is the process of breaking down the image into smaller portions. The second is modularity, which is a method
of separating and organizing the group of objects, such as pixels. Third and final structural property is
hierarchies, as the hierarchical dependencies can efficiently be utilized to
enable an efficient search procedure.
For the given artificial intelligence study, the system is able to
generate reasoning and learning with compositionality. This compositionality can be viewed as a type
of strategy, that allows inferring pieces which are exceedingly associated with
the entity’s uniqueness and to translate the appearance variables by the
relations amongst the pieces. As
described by Buhmann (2008):
Composition systems use
a small number of generic parts as their key design concept. These parts are
pieces in your data, which occur sufficiently often to code them as separate
entities. More complex representations are then assembled by combining these
parts to new generic features. This assembly is called a composition. (p. 170)
Thus, the generation procedure of reasoning and learning is a
combination of comparing variables and the process of elimination.
Whether the results of the analysis toward the theory for
reasoning was Boolean, Bayesian or both, concludes according to the study. Considering, the basis of the artificial
intelligence model consists of the Bayesian network, that couples the
compositions, shape, and image categorization.
Thus, this development allows the system to filter out the relevant compositions
that are available within the larger set of candidates. The most logical next step is filtering out
all relevant combinations of combinations and to utilize them for the
decision-making process. Training these
composition systems is a quite delicate process considering, it is required to
have sufficient regularization at each level of learning.
According to the research findings available, there are numerous
computations that would not be appropriate for the artificial intelligence
system within the reading. Considering,
the artificial intelligence system described within the case study utilizes
observations and decision-making on images inputted, then any type of
computation that does not provide an image would be inappropriate. As an example, requesting the artificial
intelligence system to decide whether a business should invest in one specific
business proposition or if it should decide on another. As Trapp discusses, “Indeed, the potential of
AI to unlock the secrets in the ever-increasing amounts of data being collected
is helping to transform a particular and important part of the prediction
business - forecasting and planning.” (Trapp, 2018). Therefore, this specific artificial
intelligence system would not be helpful in a forecasting situation. Although, the artificial intelligence system
described is able to recognize patterns, which allows for backpropagation.
Reasoning backpropagation is an essential component within artificial
intelligence systems as it allows the system to quickly calculate the variables
to make a decision within a timely manner.
Just as the name implies, a backward pass for an error to each and every
internal node within the neural network.
This allows the system to utilize calculated weight gradients for that
specific node. Thus, backpropagation
networks are essential to deal with the various types of available data.
An artificial intelligence system may seem to be a scary thought
and almost completely imaginary, but they are already in existence and seem
less frightening first hand. Each system
is taught how to handle specific observations and decisions, but the likelihood
of one handling it all is still a bit out of reach. Implementing artificial intelligence in an
organization is not as farfetched of an idea as it used to be. The benefits of the implementation within an
organization are far greater than the risks.
References
Buhmann, J. M. (2008). Visual Recognition: How can we learn
complez models? In B. K. Shapira, Security Informatics and Terrorism:
Patrolling the Web: Social and Technical Problems of Detecting and Controlling
Terrosits' Use of the World Wide Web (pp. 166-). Zurich: IOS Press.
Trapp, R. (2018, June 14). How AI Can Help Leaders Make
Better Decisions. Retrieved from Forbes:
https://www.forbes.com/sites/rogertrapp/2018/06/14/how-ai-can-help-leaders-make-better-decisions/#76b260e35e2f