284 research outputs found
China's governance reform from 1978 to 2008
This paper systematically examines the dominant processes and key issues of China's governance reforms over the last 30 years since the start of the reform and opening policies. It argues that the main thrust of China's governance reforms is the shift from monistic governance to pluralist governance, from centralization to decentralization, from rule of man to rule of law, from regulatory government to service-oriented government, and from intra-party democracy to people's democracy. This paper argues further that the focus of China's governance reform includes ecological balance, social justice, public service, social harmony, government cleanness, government innovation, intra-party democracy, grassroots democracy, etc. The variables of governance reform in China are social and economic development, the logic of political development, influence of new political culture and impacts of globalization. After persistent efforts in the past three decades, this paper contends that in China a unique governance model is emerging which is destined to democracy, rule of law, justice, accountability, transparency, cleanness, efficiency and harmony. --governance,democracy,political reform,governance model,government innovation
China's governance reform from 1978 to 2008
This paper systematically examines the dominant processes and key issues of China's governance reforms over the last 30 years since the start of the reform and opening policies. It argues that the main thrust of China's governance reforms is the shift from monistic governance to pluralist governance, from centralization to decentralization, from rule of man to rule of law, from regulatory government to service-oriented government, and from intra-party democracy to people's democracy. This paper argues further that the focus of China's governance reform includes ecological balance, social justice, public service, social harmony, government cleanness, government innovation, intra-party democracy, grassroots democracy, etc. The variables of governance reform in China are social and economic development, the logic of political development, influence of new political culture and impacts of globalization. After persistent efforts in the past three decades, this paper contends that in China a unique governance model is emerging which is destined to democracy, rule of law, justice, accountability, transparency, cleanness, efficiency and harmony
CIR at the NTCIR-17 ULTRE-2 Task
The Chinese academy of sciences Information Retrieval team (CIR) has
participated in the NTCIR-17 ULTRE-2 task. This paper describes our approaches
and reports our results on the ULTRE-2 task. We recognize the issue of false
negatives in the Baidu search data in this competition is very severe, much
more severe than position bias. Hence, we adopt the Dual Learning Algorithm
(DLA) to address the position bias and use it as an auxiliary model to study
how to alleviate the false negative issue. We approach the problem from two
perspectives: 1) correcting the labels for non-clicked items by a relevance
judgment model trained from DLA, and learn a new ranker that is initialized
from DLA; 2) including random documents as true negatives and documents that
have partial matching as hard negatives. Both methods can enhance the model
performance and our best method has achieved nDCG@10 of 0.5355, which is 2.66%
better than the best score from the organizer.Comment: 5 pages, 1 figure, NTCIR-1
Feature-Enhanced Network with Hybrid Debiasing Strategies for Unbiased Learning to Rank
Unbiased learning to rank (ULTR) aims to mitigate various biases existing in
user clicks, such as position bias, trust bias, presentation bias, and learn an
effective ranker. In this paper, we introduce our winning approach for the
"Unbiased Learning to Rank" task in WSDM Cup 2023. We find that the provided
data is severely biased so neural models trained directly with the top 10
results with click information are unsatisfactory. So we extract multiple
heuristic-based features for multi-fields of the results, adjust the click
labels, add true negatives, and re-weight the samples during model training.
Since the propensities learned by existing ULTR methods are not decreasing
w.r.t. positions, we also calibrate the propensities according to the click
ratios and ensemble the models trained in two different ways. Our method won
the 3rd prize with a DCG@10 score of 9.80, which is 1.1% worse than the 2nd and
25.3% higher than the 4th.Comment: 5 pages, 1 figure, WSDM Cup 202
Implicit feedback-based group recommender system for internet of things applications
With the prevalence of Internet of Things (IoT)-based social media applications, the distance among people has been greatly shortened. As a result, recommender systems in IoT-based social media need to be developed oriented to groups of users rather than individual users. However, existing methods were highly dependent on explicit preference feedbacks, ignoring scenarios of implicit feedbacks. To remedy such gap, this paper proposes an implicit feedback-based group recommender system using probabilistic inference and non-cooperative game (GREPING) for IoT-based social media. Particularly, unknown process variables can be estimated from observable implicit feedbacks via Bayesian posterior probability inference. In addition, the globally optimal recommendation results can be calculated with the aid of non-cooperative game. Two groups of experiments are conducted to assess the GREPING from two aspects: efficiency and robustness. Experimental results show obvious promotion and considerable stability of the GREPING compared to baseline methods. © 2020 IEEE
An Intelligent Trust Cloud Management Method for Secure Clustering in 5G enabled Internet of Medical Things
5G edge computing enabled Internet of Medical Things (IoMT) is an efficient
technology to provide decentralized medical services while Device-to-device
(D2D) communication is a promising paradigm for future 5G networks. To assure
secure and reliable communication in 5G edge computing and D2D enabled IoMT
systems, this paper presents an intelligent trust cloud management method.
Firstly, an active training mechanism is proposed to construct the standard
trust clouds. Secondly, individual trust clouds of the IoMT devices can be
established through fuzzy trust inferring and recommending. Thirdly, a trust
classification scheme is proposed to determine whether an IoMT device is
malicious. Finally, a trust cloud update mechanism is presented to make the
proposed trust management method adaptive and intelligent under an open
wireless medium. Simulation results demonstrate that the proposed method can
effectively address the trust uncertainty issue and improve the detection
accuracy of malicious devices
- …