The Embeddings World and Artificial General Intelligence
- URL: http://arxiv.org/abs/2209.06569v1
- Date: Wed, 14 Sep 2022 11:56:30 GMT
- Title: The Embeddings World and Artificial General Intelligence
- Authors: Mostafa Haghir Chehreghani
- Abstract summary: We argue that pre-trained embeddings play a key role in building this intelligent world.
We discuss how pre-trained embeddings facilitate achieving several characteristics of human-level intelligence.
- Score: 2.28438857884398
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: From early days, a key and controversial question inside the artificial
intelligence community was whether Artificial General Intelligence (AGI) is
achievable. AGI is the ability of machines and computer programs to achieve
human-level intelligence and do all tasks that a human being can. While there
exist a number of systems in the literature claiming they realize AGI, several
other researchers argue that it is impossible to achieve it. In this paper, we
take a different view to the problem. First, we discuss that in order to
realize AGI, along with building intelligent machines and programs, an
intelligent world should also be constructed which is on the one hand, an
accurate approximation of our world and on the other hand, a significant part
of reasoning of intelligent machines is already embedded in this world. Then we
discuss that AGI is not a product or algorithm, rather it is a continuous
process which will become more and more mature over time (like human
civilization and wisdom). Then, we argue that pre-trained embeddings play a key
role in building this intelligent world and as a result, realizing AGI. We
discuss how pre-trained embeddings facilitate achieving several characteristics
of human-level intelligence, such as embodiment, common sense knowledge,
unconscious knowledge and continuality of learning, by machines.
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