ICLR2025已经结束了讨论阶段,进入了meta-review阶段,分数应该不会有太大的变化了,本文总结了其中时间序列(Time Series)高分的论文。如有疏漏,欢迎大家补充。
挑选原则:均分要大于等于6(≥6,即使有3,但是有8或者更高的分拉回来也算)
时间序列Topic:预测,插补,分类,生成,因果分析,异常检测,LLM以及基础模型等内容。总计32篇
点击文末阅读原文跳转笔者知乎链接(跳转论文链接更方便)。
TimeMixer++: A General Time Series Pattern Machine for Universal Predictive Analysis Root Cause Analysis of Anomalies in Multivariate Time Series through Granger Causal Discovery Amortized Control of Continuous State Space Feynman-Kac Model for Irregular Time Series Time-MoE: Billion-Scale Time Series Foundation Models with Mixture of Experts Label Correlation Biases Direct Time Series Forecast Fast and Slow Streams for Online Time Series Forecasting Without Information Leakage Shifting the Paradigm: A Diffeomorphism Between Time Series Data Manifolds for Achieving Shift-Invariancy in Deep Learning Optimal Transport for Time Series Imputation Constrained Posterior Sampling: Time Series Generation with Hard Constraints A Simple Baseline for Multivariate Time Series Forecasting Shedding Light on Time Series Classification using Interpretability Gated Networks Multi-Resolution Decomposable Diffusion Model for Non-Stationary Time Series Anomaly Detection CATCH: Channel-Aware Multivariate Time Series Anomaly Detection via Frequency Patching CoMRes: Semi-Supervised Time Series Forecasting Utilizing Consensus Promotion of Multi-Resolution Towards Neural Scaling Laws for Time Series Foundation Models Quantifying Past Error Matters: Conformal Inference for Time Series TVNet: A Novel Time Series Analysis Method Based on Dynamic Convolution and 3D-Variation In-context Time Series Predictor Compositional simulation-based inference for time series Towards a General Time Series Anomaly Detector with Adaptive Bottlenecks and Dual Adversarial Decoders TimeKAN: KAN-based Frequency Decomposition Learning Architecture for Long-term Time Series Forecasting Investigating Pattern Neurons in Urban Time Series Forecasting Locally Connected Echo State Networks for Time Series Forecasting Diffusion-based Decoupled Deterministic and Uncertain Framework for Probabilistic Multivariate Time Series Forecasting TS-LIF: A Temporal Segment Spiking Neuron Network for Time Series Forecasting Exploring Representations and Interventions in Time Series Foundation Models FLDmamba: Integrating Fourier and Laplace Transform Decomposition with Mamba for Enhanced Time Series Prediction KooNPro: A Variance-Aware Koopman Probabilistic Model Enhanced by Neural Processes for Time Series Forecasting Context-Alignment: Activating and Enhancing LLMs Capabilities in Time Series TwinsFormer: Revisiting Inherent Dependencies via Two Interactive Components for Time Series Forecasting DyCAST: Learning Dynamic Causal Structure from Time Series Drift2Matrix: Kernel-Induced Self Representation for Concept Drift Adaptation in Co-evolving Time Series
1 TimeMixer++: A General Time Series Pattern Machine for Universal Predictive Analysis
链接:https://openreview.net/forum?id=1CLzLXSFNn
分数:6810
关键词:多任务(预测,分类,插补,异常检测),基础模型
keywords:time series, pattern machine, predictive analysis
TL; DR:TimeMixer++ is a time series pattern machine that employs multi-scale and multi-resolution pattern extraction to deliver SOTA performance across 8 diverse analytical tasks, including forecasting, classification, anomaly detection, and imputation.
2 Root Cause Analysis of Anomalies in Multivariate Time Series through Granger Causal Discovery
链接:https://openreview.net/forum?id=k38Th3x4d9
分数:88888
关键词:因果发现
keywords:root cause analysis, Granger causality, multivariate time series
3 Amortized Control of Continuous State Space Feynman-Kac Model for Irregular Time Series
链接:https://openreview.net/forum?id=8zJRon6k5v
分数:8888
关键词:变分推断,不规则时间序列,状态空间模型
keywords:stochastic optimal control, variational inference, state space model, irregular time series
TL; DR:We propose a multi-marginal Doob's-transform for irregular time series and variational inference with stochastic optimal control to approximate it.
4 Time-MoE: Billion-Scale Time Series Foundation Models with Mixture of Experts
链接:https://openreview.net/forum?id=e1wDDFmlVu
分数:688
关键词:预测,基础模型,混合专家系统
keywords:time series, foundation model, forecasting
5 Label Correlation Biases Direct Time Series Forecast
链接:https://openreview.net/forum?id=4A9IdSa1ul
分数:8686
关键词:长时预测,频域
keywords:Time series, Long-term Forecast
TL; DR:Learning to forecast in the frequency domain significantly enhances forecasting performance.
6 Fast and Slow Streams for Online Time Series Forecasting Without Information Leakage
链接:https://openreview.net/forum?id=I0n3EyogMi
分数:6688
关键词:在线预测,流式数据,概念飘逸
keywords:online time series forecasting, concept drift, online learning
TL; DR: Redefined the setting of online time series forecasting to prevent information leakage and proposed a model-agnostic framework for this setting.
7 Shifting the Paradigm: A Diffeomorphism Between Time Series Data Manifolds for Achieving Shift-Invariancy in Deep Learning
链接:https://openreview.net/forum?id=nibeaHUEJx
分数:6688
关键词:频域,平移不变性
keywords:Time series analysis, invariance in neural networks
8 Optimal Transport for Time Series Imputation
链接:https://openreview.net/forum?id=xPTzjpIQNp
分数:588
关键词:插补,最优传输
keywords:Time series, Imputation
9 Constrained Posterior Sampling: Time Series Generation with Hard Constraints
链接:https://openreview.net/forum?id=pKMpmbuKnd
分数:5688
关键词:时间序列生成,扩散模型
keywords:Time Series Generation, Posterior Sampling, Diffusion Models, Controlled Generation
10 A Simple Baseline for Multivariate Time Series Forecasting
链接:https://openreview.net/forum?id=oANkBaVci5
分数:5688
关键词:预测,小波变换
keywords:Time Series Forecasting, Wavelets
11 Shedding Light on Time Series Classification using Interpretability Gated Networks
链接:https://openreview.net/forum?id=n34taxF0TC
分数:56688
关键词:可解释性,Shapelet(特征提取)
keywords:Interpretability, Time-series, Shapelet
TL; DR: A framework to integrate interpretable models with deep neural networks for interpretable time-series classification.
12 Multi-Resolution Decomposable Diffusion Model for Non-Stationary Time Series Anomaly Detection
链接:https://openreview.net/forum?id=eWocmTQn7H
分数:6668
关键词:异常检测,多分辨率,扩散模型
keywords:Diffusion Model, Non-Stationary Time Series, Anomaly Detection, Multi-Resolution
TL; DR:This paper delves into the potential of multi-resolution technique and diffusion model for non-stationary time series anomaly detection, supported by rigorous mathematical proofs.
13 CATCH: Channel-Aware Multivariate Time Series Anomaly Detection via Frequency Patching
链接:https://openreview.net/forum?id=m08aK3xxdJ
分数:5668
关键词:异常检测,频域
keywords:Multivariate Time Series, Anomaly Detection
14 CoMRes: Semi-Supervised Time Series Forecasting Utilizing Consensus Promotion of Multi-Resolution
链接:https://openreview.net/forum?id=bRa4JLPzii
分数:5668
关键词:多尺度,半监督
keywords:Time series forecasting, Multi-scale, Semi-supervised learning
TL; DR:we propose a novel semi-supervised time series forecasting utilzing con
15 Towards Neural Scaling Laws for Time Series Foundation Models
链接:https://openreview.net/forum?id=uCqxDfLYrB
分数:5668
keywords:Time series, scaling law, foundation model, transformer, forecasting
16 Quantifying Past Error Matters: Conformal Inference for Time Series
链接:https://openreview.net/forum?id=RD9q5vEe1Q
分数:5668
关键词:不确定性量化,分布偏移
keywords:Time Series; Uncertainty Quantification; Conformal Prediction; Distribution Shift
17 TVNet: A Novel Time Series Analysis Method Based on Dynamic Convolution and 3D-Variation
链接:https://openreview.net/forum?id=MZDdTzN6Cy
分数:5668
关键词:卷积
keywords:Time series Analysis, Dynamic convolution, Deep Learning
TL; DR:New time series modeling perspective based 3D-variation and new analysis framework based dynamic convolution
18 In-context Time Series Predictor
链接:https://openreview.net/forum?id=dCcY2pyNIO
分数:3668
关键词:预测,上下文学习
keywords:Time Series Forecasting, In-context Learning, Transformer
19 Compositional simulation-based inference for time series
链接:https://openreview.net/forum?id=uClUUJk05H
分数:566668
关键词:贝叶斯推断
keywords:Simulation-based inference, Bayesian inference, time series, markovian simulators, Amortized Bayesian inference
20 Towards a General Time Series Anomaly Detector with Adaptive Bottlenecks and Dual Adversarial Decoders
链接:https://openreview.net/forum?id=aKcd7ImG5e
分数:6666
关键词:异常检测
keywords:Time series, Anomaly detection
TL; DR:We propose a general time series anomaly detection model that is pre-trained on multi-domain datasets and can subsequently apply to many downstream scenarios
21 TimeKAN: KAN-based Frequency Decomposition Learning Architecture for Long-term Time Series Forecasting
链接:https://openreview.net/forum?id=wTLc79YNbh
分数:3588
关键词:预测,KAN
keywords:kolmogorov-Arnold Network; Time Series Forecasting
22 Investigating Pattern Neurons in Urban Time Series Forecasting
链接:https://openreview.net/forum?id=a9vey6B54y
分数:6666
关键词:时空预测(更像是),城市时间序列预测模型
keywords:urban time series forecasting, neuron detection
23 Locally Connected Echo State Networks for Time Series Forecasting
链接:https://openreview.net/forum?id=KeRwLLwZaw
分数:6666
关键词:回声状态网络
keywords:Time Series Analysis, Time Series Forecasting, Recurrent Networks, Regression, Echo State Networks
TL; DR: Improved locally connected ESN method comparable with state-of-the-art on real-world time series datasets.
24 Diffusion-based Decoupled Deterministic and Uncertain Framework for Probabilistic Multivariate Time Series Forecasting
链接:https://openreview.net/forum?id=HdUkF1Qk7g
分数:6666
关键词:长时预测,扩散模型
keywords:long-term time series forecasting, deep learning, diffusion model
25 TS-LIF: A Temporal Segment Spiking Neuron Network for Time Series Forecasting
链接:https://openreview.net/forum?id=rDe9yQQYKt
分数:666
关键词:脉冲神经网络
keywords:spiking neural network, time series forecasting, Application
TL; DR:We proposed a Temporal Segment Spiking Neuron Network (TS-LIF) for multivariate time series forecasting, supported by stability analysis and frequency response analysis to demonstrate its effectiveness and efficiency.
26 Exploring Representations and Interventions in Time Series Foundation Models
链接:https://openreview.net/forum?id=IRL9wUiwab
分数:6666
keywords:Time Series Foundation Models, Model Steering, Interpretability, Pruning
TL; DR:We investigate why time series foundation models work, the kinds of concepts that these models learn, and how can these concepts be manipulated to influence their outputs?
27 FLDmamba: Integrating Fourier and Laplace Transform Decomposition with Mamba for Enhanced Time Series Prediction
链接:https://openreview.net/forum?id=9EiWIyJMNi
分数:556668
关键词:Mamba,FFT
keywords:Mamba; Time Series Prediction
28 KooNPro: A Variance-Aware Koopman Probabilistic Model Enhanced by Neural Processes for Time Series Forecasting
链接:https://openreview.net/forum?id=5oSUgTzs8Y
分数:66666
keywords:Probabilistic time series prediction; Neural Process; Deep Koopman model
29 Context-Alignment: Activating and Enhancing LLMs Capabilities in Time Series
链接:https://openreview.net/forum?id=syC2764fPc
分数:6666
keywords:Time Series, Large Language Models, Context-Alignment
TL; DR:LLMs for time series tasks
30 TwinsFormer: Revisiting Inherent Dependencies via Two Interactive Components for Time Series Forecasting
链接:https://openreview.net/forum?id=BSsyY29bcl
分数:55568
keywords:Inherent Dependencies, Interactive Components, Time Series Forecasting
TL; DR:A novel Transformer-and decomposition-based framework using residual and interactive learning for time series forecasting.
31 DyCAST: Learning Dynamic Causal Structure from Time Series
链接:https://openreview.net/forum?id=WjDjem8mWE
分数:3668
关键词:
TL; DR:dynamic causal discovery; time series
32 Drift2Matrix: Kernel-Induced Self Representation for Concept Drift Adaptation in Co-evolving Time Series
链接:https://openreview.net/forum?id=prSJlvWrgE
分数:3866
TL; DR:co-evolving time series, concept drift, kernel representation learning
相关链接
ICLR 2025 OpenReview:https://openreview.net/group?id=ICLR.cc/2025/Conference#tab-active-submissions
ICLR 2025分数统计:https://papercopilot.com/statistics/iclr-statistics/iclr-2025-statistics/
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