Granger Causal Inference from Spiking Observations via Latent Variable Modeling

被引:0
|
作者
Khosravi, Sahar [1 ]
Rupasinghe, Anuththara [1 ]
Babadi, Behtash [1 ]
机构
[1] Univ Maryland, Syst Res Inst, Dept Elect & Comp Engn, College Pk, MD 20742 USA
基金
美国国家科学基金会; 美国国家卫生研究院;
关键词
D O I
10.1109/IEEECONF56349.2022.10051886
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Extracting directional connectivity in a neuronal ensemble from spiking observations is a key challenge in understanding the circuit mechanisms of brain function. Existing methods proceed in two stages, by first estimating the latent processes that govern spiking, followed by characterizing connectivity using said estimates. As such, the extracted networks in the second stage are highly sensitive to the accuracy of the estimates in the first stage. In this work, we introduce a framework to directly extract Granger causal links from spiking observations, without requiring intermediate time-domain estimation, by explicitly modeling the endogenous and exogenous latent processes that underlie spiking activity. Our proposed method integrates several techniques such as point processes, state-space modeling and Polya-Gamma augmentation. We demonstrate the utility of our proposed approach using simulated data and application to real data from the rat brain during sleep.
引用
收藏
页码:618 / 622
页数:5
相关论文
共 50 条
  • [1] Large dimensional latent factor modeling with missing observations and applications to causal inference?
    Xiong, Ruoxuan
    Pelger, Markus
    JOURNAL OF ECONOMETRICS, 2023, 233 (01) : 271 - 301
  • [2] Causal Effect Inference with Deep Latent-Variable Models
    Louizos, Christos
    Shalit, Uri
    Mooij, Joris
    Sontag, David
    Zemel, Richard
    Welling, Max
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 30 (NIPS 2017), 2017, 30
  • [3] Granger-Causality Meets Causal Inference in Graphical Models: Learning Networks via Non-Invasive Observations
    Dimovska, Mihaela
    Materassi, Donatello
    2017 IEEE 56TH ANNUAL CONFERENCE ON DECISION AND CONTROL (CDC), 2017,
  • [4] Scaling of Union of Intersections for Inference of Granger Causal Networks from Observational Data
    Balasubramanian, Mahesh
    Ruiz, Trevor D.
    Cook, Brandon
    Prabhat
    Bhattacharyya, Sharmodeep
    Shrivastava, Aviral
    Bouchard, Kristofer E.
    2020 IEEE 34TH INTERNATIONAL PARALLEL AND DISTRIBUTED PROCESSING SYMPOSIUM IPDPS 2020, 2020, : 264 - 273
  • [5] Causal inference with latent variables from the Rasch model as outcomes
    Rabbitt, Matthew P.
    MEASUREMENT, 2018, 120 : 193 - 205
  • [6] Uplift Modeling: from Causal Inference to Personalization
    Moraes, Felipe
    Proenca, Hugo Manuel
    Kornilova, Anastasiia
    Albert, Javier
    Goldenberg, Dmitri
    PROCEEDINGS OF THE 32ND ACM INTERNATIONAL CONFERENCE ON INFORMATION AND KNOWLEDGE MANAGEMENT, CIKM 2023, 2023, : 5212 - 5215
  • [7] Adaptive Frequency-domain Granger Causal Inference from Neuronal Ensemble Data
    Rupasinghe, Anuththara
    Mukherjee, Shoutik
    Babadi, Behtash
    2020 54TH ASILOMAR CONFERENCE ON SIGNALS, SYSTEMS, AND COMPUTERS, 2020, : 101 - 105
  • [8] Training Chain-of-Thought via Latent-Variable Inference
    Phan, Du
    Hoffman, Matthew D.
    Dohan, David
    Douglas, Sholto
    Le, Tuan Anh
    Parisi, Aaron
    Sountsov, Pavel
    Sutton, Charles
    Vikram, Sharad
    Saurous, Rif A.
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 36 (NEURIPS 2023), 2023,
  • [9] Detection of Topical Influence in Social Networks via Granger-Causal Inference: A Twitter Case Study
    Hauffa, Jan
    Braeu, Wolfgang
    Groh, Georg
    PROCEEDINGS OF THE 2019 IEEE/ACM INTERNATIONAL CONFERENCE ON ADVANCES IN SOCIAL NETWORKS ANALYSIS AND MINING (ASONAM 2019), 2019, : 969 - 977
  • [10] Robust Inference of Neuronal Correlations from Blurred and Noisy Spiking Observations
    Rupasinghe, Anuththara
    Babadi, Behtash
    2020 54TH ANNUAL CONFERENCE ON INFORMATION SCIENCES AND SYSTEMS (CISS), 2020, : 75 - 79