On the Theory of Conditional Feature Alignment for Unsupervised Domain-Adaptive Counting
- URL: http://arxiv.org/abs/2506.17137v2
- Date: Fri, 31 Oct 2025 02:34:29 GMT
- Title: On the Theory of Conditional Feature Alignment for Unsupervised Domain-Adaptive Counting
- Authors: Zhuonan Liang, Dongnan Liu, Jianan Fan, Yaxuan Song, Qiang Qu, Runnan Chen, Yu Yao, Peng Fu, Weidong Cai,
- Abstract summary: Object counting models suffer when deployed across domains with differing density variety.<n>We propose a theoretical framework of conditional feature alignment and provide a straightforward implementation.
- Score: 27.44207520673983
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Object counting models suffer when deployed across domains with differing density variety, since density shifts are inherently task-relevant and violate standard domain adaptation assumptions. To address this, we propose a theoretical framework of conditional feature alignment and provide a straightforward implementation. By theoretical analysis, our framework is feasible to achieve superior cross-domain generalization for counting. In the presented network, the features related to density are explicitly preserved across domains. Theoretically, we formalize the notion of conditional divergence by partitioning each domain into subsets and measuring divergences per condition. We then derive a joint error bound showing that, under discrete label spaces treated as condition sets, aligning distributions conditionally leads to tighter bounds on the combined source-target decision error than unconditional alignment. Empirically, we demonstrate the effectiveness of our approach through extensive experiments on multiple counting datasets with varying density distributions. The results show that our method outperforms existing unsupervised domain adaptation methods, empirically validating the theoretical insights on conditional feature alignment.
Related papers
- Rectifying Conformity Scores for Better Conditional Coverage [75.73184036344908]
We present a new method for generating confidence sets within the split conformal prediction framework.<n>Our method performs a trainable transformation of any given conformity score to improve conditional coverage while ensuring exact marginal coverage.
arXiv Detail & Related papers (2025-02-22T19:54:14Z) - Guidance Not Obstruction: A Conjugate Consistent Enhanced Strategy for Domain Generalization [50.04665252665413]
We argue that acquiring discriminative generalization between classes within domains is crucial.<n>In contrast to seeking distribution alignment, we endeavor to safeguard domain-related between-class discrimination.<n>We employ a novel distribution-level Universum strategy to generate supplementary diverse domain-related class-conditional distributions.
arXiv Detail & Related papers (2024-12-13T12:25:16Z) - COD: Learning Conditional Invariant Representation for Domain Adaptation Regression [20.676363400841495]
Domain Adaptation Regression is developed to generalize label knowledge from a source domain to an unlabeled target domain.
Existing conditional distribution alignment theory and methods with discrete prior are no longer applicable.
To minimize the discrepancy, a COD-based conditional invariant representation learning model is proposed.
arXiv Detail & Related papers (2024-08-13T05:08:13Z) - Optimal Aggregation of Prediction Intervals under Unsupervised Domain Shift [9.387706860375461]
A distribution shift occurs when the underlying data-generating process changes, leading to a deviation in the model's performance.
The prediction interval serves as a crucial tool for characterizing uncertainties induced by their underlying distribution.
We propose methodologies for aggregating prediction intervals to obtain one with minimal width and adequate coverage on the target domain.
arXiv Detail & Related papers (2024-05-16T17:55:42Z) - Distributed Markov Chain Monte Carlo Sampling based on the Alternating
Direction Method of Multipliers [143.6249073384419]
In this paper, we propose a distributed sampling scheme based on the alternating direction method of multipliers.
We provide both theoretical guarantees of our algorithm's convergence and experimental evidence of its superiority to the state-of-the-art.
In simulation, we deploy our algorithm on linear and logistic regression tasks and illustrate its fast convergence compared to existing gradient-based methods.
arXiv Detail & Related papers (2024-01-29T02:08:40Z) - Adapting to Latent Subgroup Shifts via Concepts and Proxies [82.01141290360562]
We show that the optimal target predictor can be non-parametrically identified with the help of concept and proxy variables available only in the source domain.
For continuous observations, we propose a latent variable model specific to the data generation process at hand.
arXiv Detail & Related papers (2022-12-21T18:30:22Z) - Theoretical Guarantees for Domain Adaptation with Hierarchical Optimal
Transport [0.0]
Domain adaptation arises as an important problem in statistical learning theory.
Recent advances show that the success of domain adaptation algorithms heavily relies on their ability to minimize the divergence between the probability distributions of the source and target domains.
We propose a new theoretical framework for domain adaptation through hierarchical optimal transport.
arXiv Detail & Related papers (2022-10-24T15:34:09Z) - Generalizing to Unseen Domains with Wasserstein Distributional Robustness under Limited Source Knowledge [22.285156929279207]
Domain generalization aims at learning a universal model that performs well on unseen target domains.
We propose a novel domain generalization framework called Wasserstein Distributionally Robust Domain Generalization (WDRDG)
arXiv Detail & Related papers (2022-07-11T14:46:50Z) - Maximizing Conditional Independence for Unsupervised Domain Adaptation [9.533515002375545]
We study how to transfer a learner from a labeled source domain to an unlabeled target domain with different distributions.
In addition to unsupervised domain adaptation, we extend our method to the multi-source scenario in a natural and elegant way.
arXiv Detail & Related papers (2022-03-07T08:59:21Z) - Mapping conditional distributions for domain adaptation under
generalized target shift [0.0]
We consider the problem of unsupervised domain adaptation (UDA) between a source and a target domain under conditional and label shift a.k.a Generalized Target Shift (GeTarS)
Recent approaches learn domain-invariant representations, yet they have practical limitations and rely on strong assumptions that may not hold in practice.
In this paper, we explore a novel and general approach to align pretrained representations, which circumvents existing drawbacks.
arXiv Detail & Related papers (2021-10-26T14:25:07Z) - Variational Disentanglement for Domain Generalization [68.85458536180437]
We propose to tackle the problem of domain generalization by delivering an effective framework named Variational Disentanglement Network (VDN)
VDN is capable of disentangling the domain-specific features and task-specific features, where the task-specific features are expected to be better generalized to unseen but related test data.
arXiv Detail & Related papers (2021-09-13T09:55:32Z) - A Bit More Bayesian: Domain-Invariant Learning with Uncertainty [111.22588110362705]
Domain generalization is challenging due to the domain shift and the uncertainty caused by the inaccessibility of target domain data.
In this paper, we address both challenges with a probabilistic framework based on variational Bayesian inference.
We derive domain-invariant representations and classifiers, which are jointly established in a two-layer Bayesian neural network.
arXiv Detail & Related papers (2021-05-09T21:33:27Z) - GroupifyVAE: from Group-based Definition to VAE-based Unsupervised
Representation Disentanglement [91.9003001845855]
VAE-based unsupervised disentanglement can not be achieved without introducing other inductive bias.
We address VAE-based unsupervised disentanglement by leveraging the constraints derived from the Group Theory based definition as the non-probabilistic inductive bias.
We train 1800 models covering the most prominent VAE-based models on five datasets to verify the effectiveness of our method.
arXiv Detail & Related papers (2021-02-20T09:49:51Z) - Learning Invariant Representations and Risks for Semi-supervised Domain
Adaptation [109.73983088432364]
We propose the first method that aims to simultaneously learn invariant representations and risks under the setting of semi-supervised domain adaptation (Semi-DA)
We introduce the LIRR algorithm for jointly textbfLearning textbfInvariant textbfRepresentations and textbfRisks.
arXiv Detail & Related papers (2020-10-09T15:42:35Z) - Bi-Directional Generation for Unsupervised Domain Adaptation [61.73001005378002]
Unsupervised domain adaptation facilitates the unlabeled target domain relying on well-established source domain information.
Conventional methods forcefully reducing the domain discrepancy in the latent space will result in the destruction of intrinsic data structure.
We propose a Bi-Directional Generation domain adaptation model with consistent classifiers interpolating two intermediate domains to bridge source and target domains.
arXiv Detail & Related papers (2020-02-12T09:45:39Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.