Semantic Scholar Open Access 2023 90 sitasi

Learning Linear Causal Representations from Interventions under General Nonlinear Mixing

Simon Buchholz Goutham Rajendran Elan Rosenfeld Bryon Aragam B. Scholkopf +1 lainnya

Abstrak

We study the problem of learning causal representations from unknown, latent interventions in a general setting, where the latent distribution is Gaussian but the mixing function is completely general. We prove strong identifiability results given unknown single-node interventions, i.e., without having access to the intervention targets. This generalizes prior works which have focused on weaker classes, such as linear maps or paired counterfactual data. This is also the first instance of causal identifiability from non-paired interventions for deep neural network embeddings. Our proof relies on carefully uncovering the high-dimensional geometric structure present in the data distribution after a non-linear density transformation, which we capture by analyzing quadratic forms of precision matrices of the latent distributions. Finally, we propose a contrastive algorithm to identify the latent variables in practice and evaluate its performance on various tasks.

Penulis (6)

S

Simon Buchholz

G

Goutham Rajendran

E

Elan Rosenfeld

B

Bryon Aragam

B

B. Scholkopf

P

Pradeep Ravikumar

Format Sitasi

Buchholz, S., Rajendran, G., Rosenfeld, E., Aragam, B., Scholkopf, B., Ravikumar, P. (2023). Learning Linear Causal Representations from Interventions under General Nonlinear Mixing. https://doi.org/10.48550/arXiv.2306.02235

Akses Cepat

Lihat di Sumber doi.org/10.48550/arXiv.2306.02235
Informasi Jurnal
Tahun Terbit
2023
Bahasa
en
Total Sitasi
90×
Sumber Database
Semantic Scholar
DOI
10.48550/arXiv.2306.02235
Akses
Open Access ✓