Preetum Nakkiran
@preetumnakkiran.bsky.social
ML Research @ Apple.
Understanding deep learning (generalization, calibration, diffusion, etc).
preetum.nakkiran.org
Understanding deep learning (generalization, calibration, diffusion, etc).
preetum.nakkiran.org
Our main results study when projective composition is achieved by linearly combining scores.
We prove it suffices for particular independence properties to hold in pixel-space. Importantly, some results extend to independence in feature-space... but new complexities also arise (see the paper!) 5/5
We prove it suffices for particular independence properties to hold in pixel-space. Importantly, some results extend to independence in feature-space... but new complexities also arise (see the paper!) 5/5
February 11, 2025 at 5:59 AM
Our main results study when projective composition is achieved by linearly combining scores.
We prove it suffices for particular independence properties to hold in pixel-space. Importantly, some results extend to independence in feature-space... but new complexities also arise (see the paper!) 5/5
We prove it suffices for particular independence properties to hold in pixel-space. Importantly, some results extend to independence in feature-space... but new complexities also arise (see the paper!) 5/5
We formalize this idea with a definition called Projective Composition — based on projection functions that extract the “key features” for each distribution to be composed. 4/
February 11, 2025 at 5:59 AM
We formalize this idea with a definition called Projective Composition — based on projection functions that extract the “key features” for each distribution to be composed. 4/
What does it mean for composition to "work" in these diverse settings? We need to specify which aspects of each distribution we care about— i.e. the “key features” that characterize a hat, dog, horse, or object-at-a-location. The "correct" composition should have all the features at once. 3/
February 11, 2025 at 5:59 AM
What does it mean for composition to "work" in these diverse settings? We need to specify which aspects of each distribution we care about— i.e. the “key features” that characterize a hat, dog, horse, or object-at-a-location. The "correct" composition should have all the features at once. 3/
Part of challenge is, we may want compositions to be OOD w.r.t. the distributions being composed. For example in this CLEVR experiment, we trained diffusion models on images of a *single* object conditioned on location, and composed them to generate images of *multiple* objects. 2/
February 11, 2025 at 5:59 AM
Part of challenge is, we may want compositions to be OOD w.r.t. the distributions being composed. For example in this CLEVR experiment, we trained diffusion models on images of a *single* object conditioned on location, and composed them to generate images of *multiple* objects. 2/
Credit to: x.com/sjforman/sta...
x.com
x.com
February 9, 2025 at 4:54 AM
Credit to: x.com/sjforman/sta...
Happy for you Peli!!
January 18, 2025 at 11:32 PM
Happy for you Peli!!
for example I never trust an experiment in a paper unless (a) I know the authors well or (b) I’ve reproduced the results myself
January 11, 2025 at 10:43 PM
for example I never trust an experiment in a paper unless (a) I know the authors well or (b) I’ve reproduced the results myself
imo most academics are skeptical of papers? It’s well-known that many accepted papers are overclaimed or just wrong— there’s only a few papers people really pay attention to despite the volume
January 11, 2025 at 10:42 PM
imo most academics are skeptical of papers? It’s well-known that many accepted papers are overclaimed or just wrong— there’s only a few papers people really pay attention to despite the volume
This optimal denoiser has a closed-form for finite train sets, and notably does not reproduce its train set; it can sort of "compose consistent patches." Good exercise for reader: work out the details to explain Figure 3.
January 1, 2025 at 2:46 AM
This optimal denoiser has a closed-form for finite train sets, and notably does not reproduce its train set; it can sort of "compose consistent patches." Good exercise for reader: work out the details to explain Figure 3.
Neat, I’ll take a closer look! (I think I saw an earlier talk you gave on this as well)
December 31, 2024 at 8:15 PM
Neat, I’ll take a closer look! (I think I saw an earlier talk you gave on this as well)