192 research outputs found
Foreign Direct Investment and Wage Inequality: Evidence from the People\u27s Republic of China
Based on theoretical analysis of effects of foreign direct investment (FDI) on the wage gap between foreign firms and domestic firms in the host country, we use data from Chinese Industrial Enterprises Database to measure these effects. Theoretical results show that the wage gap between foreign firms and domestic firms in the host country caused by the FDI labor transfer effect and technology spillover effect tends to increase then decrease, which implies an inverted U curve track. The empirical results show that the FDI has significant effects on the wage gap in the Peopleâs Republic of China (PRC) during the observed time period. The contribution of the FDI to change of the wage gap is above 10%, which is in the second position among all observed factors. From the overall point of view, the contribution of the FDI tends to decrease. The reason is that the wage gap caused by the FDI has stepped into the decreasing stage. This means the wage gap between foreign firms and domestic firms currently has been on the latter part of the inverted U curve. The Chinese government should expand fields for FDI so as to decrease the wage gap between foreign firms and domestic firms. This policy implication should be helpful for the PRC to step over the âmiddle-income trapâ
Study on the Realization of Freshwater Ecosystem Services from the Perspective of Consumer Willingness to Pay in China
The realization of freshwater ecosystem services value plays a vital role in the survival of human beings and the sustainable development of fisheries, and this process is inseparable from the support of consumers. This paper decomposes freshwater ecosystem services in multiple dimensions. From the perspective of consumers' willingness to pay for ecosystem services, using the survey data of 821 consumers in China, the influence of various dimensions of freshwater ecosystem services on consumers' willingness is explored by the structural equation model. The results show that: (1) consumers already have a certain awareness of freshwater ecosystem services, but the proportion of consumers willing to pay extra for them is not high; (2) the individual characteristics (age, gender, education, and income ) affect consumersâ willingness to pay for freshwater ecosystem services value, but the impact degree is not high; (3) regulating, cultural, and provisional servers functions of freshwater ecosystem services significantly affect consumersâ willingness to pay, especially freshwater ecosystem servicesâ role on regulating carbon emissions, controlling algal biomass, enhancing local fishery culture and improving leisure and leisure entertainment services. This study is helpful to deeply understand consumers' willingness to pay for various dimensions of freshwater ecosystem services and provide more targeted and detailed guidance for realizing it
Unifying Token and Span Level Supervisions for Few-Shot Sequence Labeling
Few-shot sequence labeling aims to identify novel classes based on only a few
labeled samples. Existing methods solve the data scarcity problem mainly by
designing token-level or span-level labeling models based on metric learning.
However, these methods are only trained at a single granularity (i.e., either
token level or span level) and have some weaknesses of the corresponding
granularity. In this paper, we first unify token and span level supervisions
and propose a Consistent Dual Adaptive Prototypical (CDAP) network for few-shot
sequence labeling. CDAP contains the token-level and span-level networks,
jointly trained at different granularities. To align the outputs of two
networks, we further propose a consistent loss to enable them to learn from
each other. During the inference phase, we propose a consistent greedy
inference algorithm that first adjusts the predicted probability and then
greedily selects non-overlapping spans with maximum probability. Extensive
experiments show that our model achieves new state-of-the-art results on three
benchmark datasets.Comment: Accepted by ACM Transactions on Information System
3DHacker: Spectrum-based Decision Boundary Generation for Hard-label 3D Point Cloud Attack
With the maturity of depth sensors, the vulnerability of 3D point cloud
models has received increasing attention in various applications such as
autonomous driving and robot navigation. Previous 3D adversarial attackers
either follow the white-box setting to iteratively update the coordinate
perturbations based on gradients, or utilize the output model logits to
estimate noisy gradients in the black-box setting. However, these attack
methods are hard to be deployed in real-world scenarios since realistic 3D
applications will not share any model details to users. Therefore, we explore a
more challenging yet practical 3D attack setting, \textit{i.e.}, attacking
point clouds with black-box hard labels, in which the attacker can only have
access to the prediction label of the input. To tackle this setting, we propose
a novel 3D attack method, termed \textbf{3D} \textbf{H}ard-label
att\textbf{acker} (\textbf{3DHacker}), based on the developed decision boundary
algorithm to generate adversarial samples solely with the knowledge of class
labels. Specifically, to construct the class-aware model decision boundary,
3DHacker first randomly fuses two point clouds of different classes in the
spectral domain to craft their intermediate sample with high imperceptibility,
then projects it onto the decision boundary via binary search. To restrict the
final perturbation size, 3DHacker further introduces an iterative optimization
strategy to move the intermediate sample along the decision boundary for
generating adversarial point clouds with smallest trivial perturbations.
Extensive evaluations show that, even in the challenging hard-label setting,
3DHacker still competitively outperforms existing 3D attacks regarding the
attack performance as well as adversary quality.Comment: Accepted by ICCV 202
Contextual Similarity is More Valuable than Character Similarity: Curriculum Learning for Chinese Spell Checking
Chinese Spell Checking (CSC) task aims to detect and correct Chinese spelling
errors. In recent years, related researches focus on introducing the character
similarity from confusion set to enhance the CSC models, ignoring the context
of characters that contain richer information. To make better use of contextual
similarity, we propose a simple yet effective curriculum learning framework for
the CSC task. With the help of our designed model-agnostic framework, existing
CSC models will be trained from easy to difficult as humans learn Chinese
characters and achieve further performance improvements. Extensive experiments
and detailed analyses on widely used SIGHAN datasets show that our method
outperforms previous state-of-the-art methods
A glycosylation risk score comprehensively assists the treatment of bladder neoplasm in the real-world cohort, including the tumor microenvironment, molecular and clinical prognosis
Background: Bladder cancer is a common urological cancer associated high significant morbidity and mortality rates. Immunotherapy has emerged as a promising treatment option, although response rates vary among patients. Glycosylation has been implicated in tumorigenesis and immune regulation. However, our current comprehensive understanding of the role of glycosylation in bladder cancer and its clinical implications is limited.Methods: We constructed a training cohort based on the downloaded TCGA-BLCA dataset, while additional datasets (Xiangya cohort, GSE32894, GSE48075, GSE31684, GSE69795 and E-MTAB-1803) from Xiangya hospital, GEO and ArrayExpress database were obtained and used as validation cohorts. To identify glycosylation-related genes associated with prognosis, univariate Cox regression and LASSO regression were performed. A Cox proportional hazards regression model was then constructed to develop a risk score model. The performance of the risk score was assessed in the training cohort using Kaplan-Meier survival curves and ROC curves, and further validated in multiple validation cohorts.Results: We classified patients in the training cohort into two groups based on glycosylation-related gene expression patterns: Cluster 1 and Cluster 2. Prognostic analysis revealed that Cluster 2 had poorer survival outcomes. Cluster 2 also showed higher levels of immune cell presence in the tumor microenvironment and increased activation in key steps of the cancer immune response cycle. We developed an independent prognostic risk score (p < 0.001) and used it to construct an accurate prognostic prediction nomogram. The high glycosylation risk score group exhibited higher tumor immune cell infiltration, enrichment scores in immune therapy-related pathways, and a tendency towards a basal subtype. Conversely, the low-risk score group had minimal immune cell infiltration and tended to have a luminal subtype. These findings were consistent in our real-world Xiangya cohort.Conclusion: This multi-omics glycosylation score based on these genes reliably confirmed the heterogeneity of bladder cancer tumors, predicted the efficacy of immunotherapy and molecular subtypes, optimizing individual treatment decisions
Soft Language Clustering for Multilingual Model Pre-training
Multilingual pre-trained language models have demonstrated impressive
(zero-shot) cross-lingual transfer abilities, however, their performance is
hindered when the target language has distant typology from source languages or
when pre-training data is limited in size. In this paper, we propose XLM-P,
which contextually retrieves prompts as flexible guidance for encoding
instances conditionally. Our XLM-P enables (1) lightweight modeling of
language-invariant and language-specific knowledge across languages, and (2)
easy integration with other multilingual pre-training methods. On the tasks of
XTREME including text classification, sequence labeling, question answering,
and sentence retrieval, both base- and large-size language models pre-trained
with our proposed method exhibit consistent performance improvement.
Furthermore, it provides substantial advantages for low-resource languages in
unsupervised sentence retrieval and for target languages that differ greatly
from the source language in cross-lingual transfer
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