TA6a6: Estimation and Inference
Tue, 31 Oct, 08:15 - 09:55 PT (UTC -8)
Location: Fred Farr
Session Type: Poster
Session Chair: Visa Koivunen, Aalto Unversity
Track: Adaptive Systems, Machine Learning, Data Analytics

TA6a6.1: Power Grid Faults Classification via Low-Rank Tensor Modeling

Matthew Repasky, Yao Xie, Georgia Institute of Technology, United States; Yichen Zhang, University of Texas at Arlington, United States; Feng Qiu, Argonne National Laboratory, United States

TA6a6.2: Bias, Variance, and Threshold Level of the Least Squares Pitch Estimator with Windowed Data

Jonas Lindenberger, Silicon Austria Labs GmbH, Austria; Stefan Schuster, voestalpine Stahl GmbH, Austria; Oliver Lang, Johannes Kepler University, Austria; Alexander Haberl, voestalpine Stahl GmbH, Austria; Clemens Staudinger, K1-MET GmbH, Austria; Theresa Roland, voestalpine Metal Forming GmbH, Austria; Mario Huemer, Johannes Kepler University, Austria

TA6a6.3: Stochastic Geometry Analysis of Localizability in Vision-Based Geolocation Systems

Haozhou Hu, Harpreet S. Dhillon, R. Michael Buehrer, Virginia Tech, United States

TA6a6.4: Optimal Multi-Stream Quickest Detection with False Discovery Rate control

Topi Halme, Visa Koivunen, Aalto University, Finland

TA6a6.5: Intrinsic Slepian-Bangs Type Formula for Parameters on LGs with Unknown Measurement Noise Variance

Samy LABSIR, IPSA, France; Alexandre Renaux, University of Paris Saclay, France; Jordi VilĂ -Valls, Eric Chaumette, ISAE-SUPAERO, France

TA6a6.6: Local Convergence of Gradient Descent-Ascent for Training Generative Adversarial Networks

Evan Becker, University of California Los Angeles, United States; Parthe Pandit, University of California San Diego, United States; Alyson Fletcher, University of California Los Angeles, United States; Sundeep Rangan, New York University, United States

TA6a6.8: Causal Structural Learning from Time Series: A Convex Optimization Approach

Song Wei, Yao Xie, Georgia Institute of Technology, United States

TA6a6.9: Deep Expectation-Consistent Approximation for Phase Retrieval

Saurav K. Shastri, Rizwan Ahmad, Philip Schniter, The Ohio State University, United States

TA6a6.10: Identifying Direct Causes using Intervened Target Variable

Kang Du, Yu Xiang, University of Utah, United States; Ilya Soloveychik, Hebrew University of Jerusalem, Israel

TA6a6.11: Streaming Low-Rank Matrix Data Assimilation and Change Identification

Henry Yuchi, Matthew Repasky, Terry Ma, Yao Xie, Georgia Institute of Technology, United States

TA6a6.12: Poisson Multi-Bernoulli Filtering With Amplitude Information

Thomas Kropfreiter, University of California San Diego, United States; Jason L. Williams, Data61, Commonwealth Scientific and Industrial Research Organisation, Australia; Florian Meyer, University of California San Diego, United States

TA6a6.13: Global One-Bit Phase Retrieval via Sample Abundance—Including an Application to STFT Measurements

Arian Eamaz, Farhang Yeganegi, Mojtaba Soltanalian, University of Illinois Chicago, United States

TA6a6.14: Error Probability Bounds for Invariant Causal Prediction via Multiple Access Channels

Austin Goddard, Yu Xiang, University of Utah, United States; Ilya Soloveychik, Hebrew University of Jerusalem, Israel