170 research outputs found
Chinese household saving and dependent children: Theory and evidence
This paper examines the impact of family size on household saving. We first study a theoretical life-cycle model that includes finite lifetimes and saving for retirement and in which parents care about the consumption by their dependent children. The model implies a negative relationship between the number of dependent children in the family and the household saving rate. Then, we test the model\u27s implications using new survey data on household finances in China. We use the differential enforcement of the one-child policy across counties to address the possible endogeneity between household saving and fertility decisions in a two-stage least squares Tobit regression. We find that Chinese families with fewer dependent children have significantly higher saving rates. The data yields several additional insights on household saving patterns. Households with college-age children have lower saving rates, and households residing in urban areas have higher saving rates and a lower ratio of education expenditures to income. However, having an additional child reduces saving rates more for households in urban areas than in rural areas. Our regressions also indicate that saving rates vary with age and tend to be higher for households with more workers, higher education, better health, and more assets
DETERMINANTS OF AGRICULTURE-RELATED LOAN DEFAULT: EVIDENCE FROM CHINA
This paper investigates agriculture-related loan default in 2002–2009 through a large data set from a leading Chinese state-owned bank. Using logit regression, we find the default rate on agriculture-related loans is significantly higher than that on non–agriculture-related loans. We find that base interest rates, loan maturity, the type of collateral, firm size, ownership structure, and managerial quality rating have a significant impact on agriculture-related loan default, but this also depends on how agriculture-related loans are defined. The results provide insight into the real impact of monetary policy on agriculture-related lending.This paper investigates agriculture-related loan default in 2002–2009 through a large data set from a leading Chinese state-owned bank. Using logit regression, we find the default rate on agriculture-related loans is significantly higher than that on non–agriculture-related loans. We find that base interest rates, loan maturity, the type of collateral, firm size, ownership structure, and managerial quality rating have a significant impact on agriculture-related loan default, but this also depends on how agriculture-related loans are defined. The results provide insight into the real impact of monetary policy on agriculture-related lending
Network analysis on cortical morphometry in first-episode schizophrenia
First-episode schizophrenia (FES) results in abnormality of brain
connectivity at different levels. Despite some successful findings on
functional and structural connectivity of FES, relatively few studies have been
focused on morphological connectivity, which may provide a potential biomarker
for FES. In this study, we aim to investigate cortical morphological
connectivity in FES. T1-weighted magnetic resonance image data from 92 FES
patients and 106 healthy controls (HCs) are analyzed.We parcellate brain into
68 cortical regions, calculate the averaged thickness and surface area of each
region, construct undirected networks by correlating cortical thickness or
surface area measures across 68 regions for each group, and finally compute a
variety of network-related topology characteristics. Our experimental results
show that both the cortical thickness network and the surface area network in
two groups are small-world networks; that is, those networks have high
clustering coefficients and low characteristic path lengths. At certain network
sparsity levels, both the cortical thickness network and the surface area
network of FES have significantly lower clustering coefficients and local
efficiencies than those of HC, indicating FES-related abnormalities in local
connectivity and small-worldness. These abnormalities mainly involve the
frontal, parietal, and temporal lobes. Further regional analyses confirm
significant group differences in the node betweenness of the posterior
cingulate gyrus for both the cortical thickness network and the surface area
network. Our work supports that cortical morphological connectivity, which is
constructed based on correlations across subjects' cortical thickness, may
serve as a tool to study topological abnormalities in neurological disorders
Class-level Multiple Distributions Representation are Necessary for Semantic Segmentation
Existing approaches focus on using class-level features to improve semantic
segmentation performance. How to characterize the relationships of intra-class
pixels and inter-class pixels is the key to extract the discriminative
representative class-level features. In this paper, we introduce for the first
time to describe intra-class variations by multiple distributions. Then,
multiple distributions representation learning(\textbf{MDRL}) is proposed to
augment the pixel representations for semantic segmentation. Meanwhile, we
design a class multiple distributions consistency strategy to construct
discriminative multiple distribution representations of embedded pixels.
Moreover, we put forward a multiple distribution semantic aggregation module to
aggregate multiple distributions of the corresponding class to enhance pixel
semantic information. Our approach can be seamlessly integrated into popular
segmentation frameworks FCN/PSPNet/CCNet and achieve 5.61\%/1.75\%/0.75\% mIoU
improvements on ADE20K. Extensive experiments on the Cityscapes, ADE20K
datasets have proved that our method can bring significant performance
improvement
PaCE: Unified Multi-modal Dialogue Pre-training with Progressive and Compositional Experts
Perceiving multi-modal information and fulfilling dialogues with humans is a
long-term goal of artificial intelligence. Pre-training is commonly regarded as
an effective approach for multi-modal dialogue. However, due to the limited
availability of multi-modal dialogue data, there is still scarce research on
multi-modal dialogue pre-training. Yet another intriguing challenge emerges
from the encompassing nature of multi-modal dialogue, which involves various
modalities and tasks. Moreover, new forms of tasks may arise at unpredictable
points in the future. Hence, it is essential for designed multi-modal dialogue
models to possess sufficient flexibility to adapt to such scenarios. This paper
proposes \textbf{PaCE}, a unified, structured, compositional multi-modal
dialogue pre-training framework. It utilizes a combination of several
fundamental experts to accommodate multiple dialogue-related tasks and can be
pre-trained using limited dialogue and extensive non-dialogue multi-modal data.
Furthermore, we propose a progressive training method where old experts from
the past can assist new experts, facilitating the expansion of their
capabilities. Experimental results demonstrate that PaCE achieves
state-of-the-art results on eight multi-modal dialog benchmarks.Comment: ACL 202
Heterogeneous Knowledge Fusion: A Novel Approach for Personalized Recommendation via LLM
The analysis and mining of user heterogeneous behavior are of paramount
importance in recommendation systems. However, the conventional approach of
incorporating various types of heterogeneous behavior into recommendation
models leads to feature sparsity and knowledge fragmentation issues. To address
this challenge, we propose a novel approach for personalized recommendation via
Large Language Model (LLM), by extracting and fusing heterogeneous knowledge
from user heterogeneous behavior information. In addition, by combining
heterogeneous knowledge and recommendation tasks, instruction tuning is
performed on LLM for personalized recommendations. The experimental results
demonstrate that our method can effectively integrate user heterogeneous
behavior and significantly improve recommendation performance.Comment: Accepted at RecSys 202
Influence of temperature on the transmission performance of track circuit in high-speed railway
In order to explore the influence of temperature on track circuit, a mathematical simulation model of track circuit is established. Then, the influence mechanism of temperature on the key equipment of track circuit is analysed. Finally, the influence on the receiver voltage and the locomotive signal current are computed based on the simulation model
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