Search Results for author: Yusuke Tanaka

Found 14 papers, 1 papers with code

Neural Operators Meet Energy-based Theory: Operator Learning for Hamiltonian and Dissipative PDEs

no code implementations14 Feb 2024 Yusuke Tanaka, Takaharu Yaguchi, Tomoharu Iwata, Naonori Ueda

The operator learning has received significant attention in recent years, with the aim of learning a mapping between function spaces.

Operator learning Super-Resolution

Meta-learning of Physics-informed Neural Networks for Efficiently Solving Newly Given PDEs

no code implementations20 Oct 2023 Tomoharu Iwata, Yusuke Tanaka, Naonori Ueda

We propose a neural network-based meta-learning method to efficiently solve partial differential equation (PDE) problems.

Meta-Learning

Initialization Bias of Fourier Neural Operator: Revisiting the Edge of Chaos

no code implementations10 Oct 2023 Takeshi Koshizuka, Masahiro Fujisawa, Yusuke Tanaka, Issei Sato

Building upon this observation, we also propose an edge of chaos initialization scheme for FNO to mitigate the negative initialization bias leading to training instability.

Real-to-Sim: Predicting Residual Errors of Robotic Systems with Sparse Data using a Learning-based Unscented Kalman Filter

no code implementations7 Sep 2022 Alexander Schperberg, Yusuke Tanaka, Feng Xu, Marcel Menner, Dennis Hong

Achieving highly accurate dynamic or simulator models that are close to the real robot can facilitate model-based controls (e. g., model predictive control or linear-quadradic regulators), model-based trajectory planning (e. g., trajectory optimization), and decrease the amount of learning time necessary for reinforcement learning methods.

Model Predictive Control Trajectory Planning

Simultaneous Contact-Rich Grasping and Locomotion via Distributed Optimization Enabling Free-Climbing for Multi-Limbed Robots

no code implementations4 Jul 2022 Yuki Shirai, Xuan Lin, Alexander Schperberg, Yusuke Tanaka, Hayato Kato, Varit Vichathorn, Dennis Hong

While motion planning of locomotion for legged robots has shown great success, motion planning for legged robots with dexterous multi-finger grasping is not mature yet.

Distributed Optimization Motion Planning

Aggregated Multi-output Gaussian Processes with Knowledge Transfer Across Domains

no code implementations24 Jun 2022 Yusuke Tanaka, Toshiyuki Tanaka, Tomoharu Iwata, Takeshi Kurashima, Maya Okawa, Yasunori Akagi, Hiroyuki Toda

Since the supports may have various granularities depending on attributes (e. g., poverty rate and crime rate), modeling such data is not straightforward.

Attribute Gaussian Processes +2

Dynamic Hawkes Processes for Discovering Time-evolving Communities' States behind Diffusion Processes

no code implementations24 May 2021 Maya Okawa, Tomoharu Iwata, Yusuke Tanaka, Hiroyuki Toda, Takeshi Kurashima, Hisashi Kashima

Hawkes processes offer a central tool for modeling the diffusion processes, in which the influence from the past events is described by the triggering kernel.

Marketing

Probabilistic Optimal Transport based on Collective Graphical Models

no code implementations16 Jun 2020 Yasunori Akagi, Yusuke Tanaka, Tomoharu Iwata, Takeshi Kurashima, Hiroyuki Toda

In this study, we propose a new framework in which OT is considered as a maximum a posteriori (MAP) solution of a probabilistic generative model.

Spatially Aggregated Gaussian Processes with Multivariate Areal Outputs

no code implementations NeurIPS 2019 Yusuke Tanaka, Toshiyuki Tanaka, Tomoharu Iwata, Takeshi Kurashima, Maya Okawa, Yasunori Akagi, Hiroyuki Toda

By deriving the posterior GP, we can predict the data value at any location point by considering the spatial correlations and the dependences between areal data sets, simultaneously.

Gaussian Processes Transfer Learning

Deep Mixture Point Processes: Spatio-temporal Event Prediction with Rich Contextual Information

no code implementations21 Jun 2019 Maya Okawa, Tomoharu Iwata, Takeshi Kurashima, Yusuke Tanaka, Hiroyuki Toda, Naonori Ueda

Though many point processes have been proposed to model events in a continuous spatio-temporal space, none of them allow for the consideration of the rich contextual factors that affect event occurrence, such as weather, social activities, geographical characteristics, and traffic.

Marketing Point Processes

Refining Coarse-grained Spatial Data using Auxiliary Spatial Data Sets with Various Granularities

no code implementations21 Sep 2018 Yusuke Tanaka, Tomoharu Iwata, Toshiyuki Tanaka, Takeshi Kurashima, Maya Okawa, Hiroyuki Toda

With the proposed model, a distribution for each auxiliary data set on the continuous space is modeled using a Gaussian process, where the representation of uncertainty considers the levels of granularity.

Gaussian Processes

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