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Artificial Intelligence
Xer0Dynamite edited this page Feb 22, 2020
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The key to making AI is to understand the fundamental dynamics information input and it's assemblage into higher orders of form. The AI theorist has to answer four fundamental questions.
Information Theory is key to understanding AI, as it deals with the quantification of knowledge. Information is it`s base. This is a major understanding for AI. Without this understanding, you are left with semantics and meaning and you can never get anywhere.
To AI researcher must ask and answer the following four questions:
- A datum enters the arena of your neural net. What event creates a new neuron?
- What event links neurons together or modifies this connection?
- What event groups neurons together to form a superneuron?
- What event initiates output?
- What initiates an insight?
This builds the network. Then, to add another element:
- Neurons hold the light of consciousness. How do these action potentials get encoded in the neural data structures?
- Light propagates around as a flow in the network, splitting and reforming in a complex dynamic as it runs around the graph. What event trips neurons into "firing"?
- A neuron gets overloaded. What event trips motor output?
See also:
eye hexagonal triplets --> clump into larger regions (fovea). Peripheral areas apparently are grouped separately.
- insight or Jump neurons: something akin to digestive matches, which releases energy. In a graph, a path from start to destination is found and a jump occurs. Once jumped the energy in the "neuron" is pushed into the containing neural graph until expended, generating initiated thought. (This energy is just distributed equally? to all member neuron's action potential.) Insights might require a larger, separate knoweldge base (purchased by the user), of super-curated knowledge in order to generate them.
- regarding the action potential variable: use the alignment tensor model from D&D: the prior neuron's level (action above 1.0) becomes the intensity of the next neurons. This is essentially the same dynamic of an "expectation match", except that it comes from below. In the expectaiton match, the extra potential becomes an inTENSity multiplier (tensor).
- There are two systems: the knowledge database, and the neural net. These two form the yin and the yang of the system. When expectation matches occur, a mini understanding has occurred. When these understandings reach linquistic levels, they can be (are?) stored in the knowledge base.