1,186 research outputs found
A Semi-Supervised Two-Stage Approach to Learning from Noisy Labels
The recent success of deep neural networks is powered in part by large-scale
well-labeled training data. However, it is a daunting task to laboriously
annotate an ImageNet-like dateset. On the contrary, it is fairly convenient,
fast, and cheap to collect training images from the Web along with their noisy
labels. This signifies the need of alternative approaches to training deep
neural networks using such noisy labels. Existing methods tackling this problem
either try to identify and correct the wrong labels or reweigh the data terms
in the loss function according to the inferred noisy rates. Both strategies
inevitably incur errors for some of the data points. In this paper, we contend
that it is actually better to ignore the labels of some of the data points than
to keep them if the labels are incorrect, especially when the noisy rate is
high. After all, the wrong labels could mislead a neural network to a bad local
optimum. We suggest a two-stage framework for the learning from noisy labels.
In the first stage, we identify a small portion of images from the noisy
training set of which the labels are correct with a high probability. The noisy
labels of the other images are ignored. In the second stage, we train a deep
neural network in a semi-supervised manner. This framework effectively takes
advantage of the whole training set and yet only a portion of its labels that
are most likely correct. Experiments on three datasets verify the effectiveness
of our approach especially when the noisy rate is high
HetSeq: Distributed GPU Training on Heterogeneous Infrastructure
Modern deep learning systems like PyTorch and Tensorflow are able to train
enormous models with billions (or trillions) of parameters on a distributed
infrastructure. These systems require that the internal nodes have the same
memory capacity and compute performance. Unfortunately, most organizations,
especially universities, have a piecemeal approach to purchasing computer
systems resulting in a heterogeneous infrastructure, which cannot be used to
compute large models. The present work describes HetSeq, a software package
adapted from the popular PyTorch package that provides the capability to train
large neural network models on heterogeneous infrastructure. Experiments with
transformer translation and BERT language model shows that HetSeq scales over
heterogeneous systems. HetSeq can be easily extended to other models like image
classification. Package with supported document is publicly available at
https://github.com/yifding/hetseq.Comment: 7 pages, 3 tables, 2 figure
ChatEL: Entity Linking with Chatbots
Entity Linking (EL) is an essential and challenging task in natural language
processing that seeks to link some text representing an entity within a
document or sentence with its corresponding entry in a dictionary or knowledge
base. Most existing approaches focus on creating elaborate contextual models
that look for clues the words surrounding the entity-text to help solve the
linking problem. Although these fine-tuned language models tend to work, they
can be unwieldy, difficult to train, and do not transfer well to other domains.
Fortunately, Large Language Models (LLMs) like GPT provide a highly-advanced
solution to the problems inherent in EL models, but simply naive prompts to
LLMs do not work well. In the present work, we define ChatEL, which is a
three-step framework to prompt LLMs to return accurate results. Overall the
ChatEL framework improves the average F1 performance across 10 datasets by more
than 2%. Finally, a thorough error analysis shows many instances with the
ground truth labels were actually incorrect, and the labels predicted by ChatEL
were actually correct. This indicates that the quantitative results presented
in this paper may be a conservative estimate of the actual performance. All
data and code are available as an open-source package on GitHub at
https://github.com/yifding/In_Context_EL
Multi-modal Domain Adaptation for REG via Relation Transfer
Domain adaptation, which aims to transfer knowledge between domains, has been
well studied in many areas such as image classification and object detection.
However, for multi-modal tasks, conventional approaches rely on large-scale
pre-training. But due to the difficulty of acquiring multi-modal data,
large-scale pre-training is often impractical. Therefore, domain adaptation,
which can efficiently utilize the knowledge from different datasets (domains),
is crucial for multi-modal tasks. In this paper, we focus on the Referring
Expression Grounding (REG) task, which is to localize an image region described
by a natural language expression. Specifically, we propose a novel approach to
effectively transfer multi-modal knowledge through a specially
relation-tailored approach for the REG problem. Our approach tackles the
multi-modal domain adaptation problem by simultaneously enriching inter-domain
relations and transferring relations between domains. Experiments show that our
proposed approach significantly improves the transferability of multi-modal
domains and enhances adaptation performance in the REG problem
Differences and common ground in the frameworks of health-related quality of life in traditional Chinese medicine and modern medicine:a systematic review
Purpose: This systematic review aims to explore the conceptualization of health-related quality of life (HRQoL) in China. With HRQoL influenced by both modern medicine (MM) and traditional Chinese medicine (TCM), the study seeks to identify differences and common ground between the frameworks of MM and TCM as defined in the literature. Method: A systematic literature search was conducted across three Chinese databases and four English databases. The data was extracted including title, author(s), publication year, region, aim, method, category, and result. When sorting data, we broke down the HRQoL frameworks into concepts, domains and facets, with a focus on overlapped facets between the frameworks of MM and TCM. Results: A total of 31 studies were included. In the perspective of TCM, HRQoL is centered around three key 'concepts': (1) 'xingshentongyi' (unity of body and spirit), (2) 'tianrenheyi' (harmony between man and nature), and (3) 'qiqing' (seven emotional forms). In contrast, the MM framework comprises 'physical,' 'mental,' 'social,' and 'environment' domains. Out of the 59 unique facets identified, 28 are common to both TCM and MM, 9 specific to TCM, and 22 specific to MM. 'Appetite,' 'sleep,' and 'energy' are the most frequently mentioned facets in both frameworks. Conclusion: The concept of HRQoL in China encompasses frameworks rooted in both TCM and MM. While TCM and MM have distinct healthcare approaches, they share overlapping domains when measuring HRQoL through questionnaires. Furthermore, TCM and MM demonstrate considerable convergence in terms of HRQoL facets, showing the potential for utilizing HRQoL instruments across different cultural settings.</p
CiGNN: A Causality-informed and Graph Neural Network Based Framework for Cuffless Continuous Blood Pressure Estimation:A Causality-informed and Graph Neural Network Based Framework for Cuffless Continuous Blood Pressure Estimation
Causality holds profound potentials to dissipate confusion and improve accuracy in cuffless continuous blood pressure (BP) estimation, an area often neglected in current research. In this study, we propose a two-stage framework, CiGNN, that seamlessly integrates causality and graph neural network (GNN) for cuffless continuous BP estimation. The first stage concentrates on the generation of a causal graph between BP and wearable features from the the perspective of causal inference, so as to identify features that are causally related to BP variations. This stage is pivotal for the identification of novel causal features from the causal graph beyond pulse transit time (PTT). We found these causal features empower better tracking in BP changes compared to PTT. For the second stage, a spatio-temporal GNN (STGNN) is utilized to learn from the causal graph obtained from the first stage. The STGNN can exploit both the spatial information within the causal graph and temporal information from beat-by-beat cardiac signals for refined cuffless continuous BP estimation. We evaluated the proposed method with three datasets that include 305 subjects (102 hypertensive patients) with age ranging from 20-90 and BP at different levels, with the continuous Finapres BP as references. The mean absolute difference (MAD) for estimated systolic blood pressure (SBP) and diastolic blood pressure (DBP) were 3.77 mmHg and 2.52 mmHg, respectively, which outperformed comparison methods. In all cases including subjects with different age groups, while doing various maneuvers that induces BP changes at different levels and with or without hypertension, the proposed CiGNN method demonstrates superior performance for cuffless continuous BP estimation. These findings suggest that the proposed CiGNN is a promising approach in elucidating the causal mechanisms of cuffless BP estimation and can substantially enhance the precision of BP measurement
- …