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apstroll

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apstroll
·el año pasado·discuss
Extremely doubtful that it boils down to quadratic scaling of attention. That whole issue is a leftover from the days of small bert models with very few parameters.

For large models, compute is very rarely dominated by attention. Take, for example, this FLOPs calculation from https://www.adamcasson.com/posts/transformer-flops

Compute per token = 2(P + L × W × D)

P: total parameters L: Number of Layers W: context size D: Embedding dimension

For Llama 8b, the window size starts dominating compute cost per token only at 61k tokens.
apstroll
·el año pasado·discuss
Under a crossentropy loss the output activations do absolutely represent a probability distribution, since that is what we're modeling.
apstroll
·hace 2 años·discuss
The output distribution is deterministic, the output token is sampled from the output distribution, and is therefore not deterministic. Temperature modulates the output distribution, but sitting it to 0 (i.e. argmax sampling) is not the norm.
apstroll
·hace 2 años·discuss
This paper is doing exactly that though, handwaving with a couple of floats. The paper is just a collection of observations about what their implementation of shapley value analysis gives for a few variations of a prompt.
apstroll
·hace 2 años·discuss
Cosine Similarity is very much about similarity, but it's quite fickle and indirect.

Given a function f(l, r) that measures, say, the logprobability of observing both l and r, and that the function takes the form f(l, r) = <L(l), R(r)>, i.e. the dot product between embeddings of l and r, then cosine similarity of x and y, i.e. normalized dot product of L(x) and L(y) is very closely related to the correlation of f(x, Z) and f(y, Z) when we let Z vary.