| I’ve been ruminating on the postulation of a universal signature for every entity across sensory complexes (per sense organ reality, vision, touch, mind) which translates to the problem of entities represented in binary needing to be related across modalities as in “butterfly” vs a picture of a butterfly vs the audio of butterfly vs the thought pointing to one of those or other. I was wondering if there was a universal signal that can be used as the identity and then based on that signal one could measure the distance to any other signal based on the principle relation of not(other). That is to say the identity would be precisely not all else for any X. Said another way, every thing is because it is exactly not everything else. So thinking as first principles as possible I wondered if it were possible to represent everything as some frequency? A Fourier transform analog for every “time slice” of a thing? This is where it gets slightly slippery. So the idea was trying to build relationship and identity and labeling from a simple rule set of things arising out of relation of not being other things. In my mind I saw nodes on a graph forming in higher dimensions as half way points for any comparison. Comparisons create new nodes and implicitly have a distance metric to all other things. It made sense in my mind that there was an algorithmic annealing to new nodes in a “low density higher energetic state” allowing them to move faster in this universal emergent ontology/spatial space; eventually getting more dense and slower as it gets cold. So the system implicitly also has a snapshot of events or interactions based on that where every comparison has a “tick” that encodes a particular density relation for some set of nodes it’s in association with. The idea that cemented it all together was to treat each node like an address:chord. Similar to chording keys like a-b-c in some ux programs, but also exactly like chords in music too. The idea being that when multiple “things” are dialed in at same time it becomes its own emergent label by proximity and association of those things being triggered to new information coming in classified as a distance to not(signal). I didn’t really realize how close this idea was to what encoders/decoders seem to be doing although I do know I’m trying to think myself towards a universal solution that doesn’t require special encoders for every media type. Hence the Fourier transform path. Know anything like this or am I spitting idiocy? |
Which is more or less word2vec as far as I understand but then trying to extrapolate that as a universal principle to all things that can be represented by using a “common signature : hash based off a signal like a complex waveform” and then doing a difference on signal composition and its shape/bandwidth to compare its properties to other things and when they reference similar objects even in different modalities they’d be associated by being triggered together.
So “dog” vs image of dog would both translate to a primordial signal : identity representation and in the domain of frequency do the comparison and project a coordinate in the spatial sense and eventually those two nodes would more likely be triggered at the same time due to the likelihood of “dog” being next to image of dog when parsing information across future events.
Whew. Maybe I’m just talking to myself. At least it’s out there if it makes sense to anyone else.