Search Results for author: Taesoo Kim

Found 12 papers, 3 papers with code

ReInc: Scaling Training of Dynamic Graph Neural Networks

no code implementations25 Jan 2025 Mingyu Guan, Saumia Singhal, Taesoo Kim, Anand Padmanabha Iyer

Dynamic Graph Neural Networks (DGNNs) have gained widespread attention due to their applicability in diverse domains such as traffic network prediction, epidemiological forecasting, and social network analysis.

Computational Efficiency

Heterogeneous Graph Neural Network on Semantic Tree

no code implementations21 Feb 2024 Mingyu Guan, Jack W. Stokes, Qinlong Luo, Fuchen Liu, Purvanshi Mehta, Elnaz Nouri, Taesoo Kim

Specifically, HetTree builds a semantic tree data structure to capture the hierarchy among metapaths.

Graph Neural Network

RainSD: Rain Style Diversification Module for Image Synthesis Enhancement using Feature-Level Style Distribution

no code implementations31 Dec 2023 Hyeonjae Jeon, Junghyun Seo, Taesoo Kim, Sungho Son, Jungki Lee, Gyeungho Choi, Yongseob Lim

Finally, we discuss the limitation and the future directions of the deep neural network-based perception algorithms and autonomous driving dataset generation based on image-to-image translation.

Autonomous Driving Dataset Generation +8

Selective Generation for Controllable Language Models

1 code implementation18 Jul 2023 Minjae Lee, KyungMin Kim, Taesoo Kim, Sangdon Park

$\texttt{SGen}^{\texttt{Sup}}$, a direct modification of the selective prediction, is a supervised learning algorithm which exploits entailment-labeled data, annotated by humans.

Conformal Prediction Hallucination +4

Enhancing Breast Cancer Risk Prediction by Incorporating Prior Images

no code implementations28 Mar 2023 Hyeonsoo Lee, Junha Kim, Eunkyung Park, Minjeong Kim, Taesoo Kim, Thijs Kooi

Recently, deep learning models have shown the potential to predict breast cancer risk and enable targeted screening strategies, but current models do not consider the change in the breast over time.

Decoder Prediction

ACon$^2$: Adaptive Conformal Consensus for Provable Blockchain Oracles

1 code implementation17 Nov 2022 Sangdon Park, Osbert Bastani, Taesoo Kim

To address the oracle problem, we propose an adaptive conformal consensus (ACon$^2$) algorithm that derives a consensus set of data from multiple oracle contracts via the recent advance in online uncertainty quantification learning.

Uncertainty Quantification

OOOE: Only-One-Object-Exists Assumption to Find Very Small Objects in Chest Radiographs

no code implementations13 Oct 2022 Gunhee Nam, Taesoo Kim, Sanghyup Lee, Thijs Kooi

We validate our approach using a large scale proprietary dataset of over 100K radiographs as well as publicly available RANZCR-CLiP Kaggle Challenge dataset and show that our method consistently outperforms commonly used regression-based detection models as well as commonly used pixel-wise classification methods.

Anatomy regression

ADA-VAD: Unpaired Adversarial Domain Adaptation for Noise-Robust Voice Activity Detection

no code implementations ICASSP 2022 Taesoo Kim, Jiho Chang, Jong Hwan Ko

In this paper, we propose adversarial domain adaptive VAD (ADA-VAD), which is a deep neural network (DNN) based VAD method highly robust to audio samples with various noise types and low SNRs.

Ranked #4 on Activity Detection on AVA-Speech (ROC-AUC metric)

Action Detection Activity Detection +1

Semantic-aware Binary Code Representation with BERT

no code implementations10 Jun 2021 Hyungjoon Koo, Soyeon Park, Daejin Choi, Taesoo Kim

Recently, binary analysis techniques based on machine learning have been proposed to automatically reconstruct the code representation of a binary instead of manually crafting specifics of the analysis algorithm.

BIG-bench Machine Learning Clone Detection +1

RECIPE : Converting Concurrent DRAM Indexes to Persistent-Memory Indexes

2 code implementations23 Sep 2019 Se Kwon Lee, Jayashree Mohan, Sanidhya Kashyap, Taesoo Kim, Vijay Chidambaram

We present Recipe, a principled approach for converting concurrent DRAM indexes into crash-consistent indexes for persistent memory (PM).

Distributed, Parallel, and Cluster Computing Databases Data Structures and Algorithms

Cannot find the paper you are looking for? You can Submit a new open access paper.