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民族团结进步示范区视域下云南高职少数民族学生心理危机干预研究一一基于文化心理互构的三维整合模型

Under the national strategy of forging a strong sense of community for the Chinese nation, the intervention of psychological crises among minority students in Yunnans higher vocational colleges needs to break through the traditional psychological paradigm and shift to the deep logic of mutual construction between culture and psychology. Based on the empirical research in Yunnans higher vocational education, this study integrates the theory of "cultural ecological disruption" in psychological anthropology and the "bicultural competence" model in cross-cultural psychological counseling to construct a three-level dynamic intervention system of "prevention-intervention-consolidation". Guided by policies such as the Guidelines on Promoting High-Quality Development of Ethnic Work with Forging a Strong Sense of Community for the Chinese Nation as the Core, this study proposes practical paths for culture-sensitive intervention. The research shows that reconstructing cultural cognition, integrating identity, and building a systematic support network can effectively enhance the psychological resilience of minority students, providing theoretical and methodological innovations for the practice of ethnic unity in vocational education in borderland areas.

袁宁晞;王堂指;鲁彦良发表时间:2025-06-04
On the Usage of Gaussian Process for Efficient Data Valuation

In machine learning, knowing the impact of a given datum on model training is a fundamental task referred to as Data Valuation. Building on previous works from the literature, we have designed a novel canonical decomposition allowing practitioners to analyze any data valuation method as the combination of two parts: a utility function that captures characteristics from a given model and an aggregation procedure that merges such information. We also propose to use Gaussian Processes as a means to easily access the utility function on ``sub-models'', which are models trained on a subset of the training set. The strength of our approach stems from both its theoretical grounding in Bayesian theory, and its practical reach, by enabling fast estimation of valuations thanks to efficient update formulae.

Clément Bénesse;Patrick Mesana;Athéna?s Gautier;Sébastien Gambs发表时间:2025-06-04
MudiNet: Task-guided Disentangled Representation Learning for 5G Indoor Multipath-assisted Positioning

In the fifth-generation communication system (5G), multipath-assisted positioning (MAP) has emerged as a promising approach. With the enhancement of signal resolution, multipath component (MPC) are no longer regarded as noise but rather as valuable information that can contribute to positioning. However, existing research often treats reflective surfaces as ideal reflectors, while being powerless in the face of indistinguishable multipath caused by diffuse reflectors. This study approaches diffuse reflectors from the perspective of uncertainty, investigating the statistical distribution characteristics of indoor diffuse and specular reflectors. Based on these insights, a task-guided disentangled representation learning method leveraging multi-time channel impulse response (CIR) observations is designed to directly map CIRs to positions, while mitigating the adverse effects of components that contribute minimally to localization accuracy (e.g., diffuse multipath).In this semi-supervised learning framework, a global feature extraction architecture based on self-attention is proposed to capture location-independent wireless environmental information, while an MLP is employed to extract the time-varying features related to user equipment (UE) positions. Variational inference based on a latent variable model (LVM) is applied to separate independent features within the CIR, with position labels guiding the LVM to express components more beneficial for localization. Additionally, we provide a feasibility proof for the separability of diffuse and specular environmental features in CIRs. Simulation results demonstrate that the proposed method achieves higher localization accuracy compared to conventional search-based localization methods, with enhanced robustness against indistinguishable multipath from diffuse reflectors.

Ye Tian;Xueting Xu;Ao Peng发表时间:2025-06-04
Simulating fluid vortex interactions on a superconducting quantum processor

Vortex interactions are commonly observed in atmospheric turbulence, plasma dynamics, and collective behaviors in biological systems. However, accurately simulating these complex interactions is highly challenging due to the need to capture fine-scale details over extended timescales, which places computational burdens on traditional methods. In this study, we introduce a quantum vortex method, reformulating the Navier--Stokes (NS) equations within a quantum mechanical framework to enable the simulation of multi-vortex interactions on a quantum computer. We construct the effective Hamiltonian for the vortex system and implement a spatiotemporal evolution circuit to simulate its dynamics over prolonged periods. By leveraging eight qubits on a superconducting quantum processor with gate fidelities of 99.97\% for single-qubit gates and 99.76\% for two-qubit gates, we successfully reproduce natural vortex interactions. This method bridges classical fluid dynamics and quantum computing, offering a novel computational platform for studying vortex dynamics. Our results demonstrate the potential of quantum computing to tackle longstanding challenges in fluid dynamics and broaden applications across both natural and engineering systems.

Ziteng Wang;Jiarun Zhong;Ke Wang;Zitian Zhu;Zehang Bao;Chenjia Zhu;Wenwen Zhao;Yaomin Zhao;Yue Yang;Chao Song;Shiying Xiong发表时间:2025-06-04
Interpretability by Design for Efficient Multi-Objective Reinforcement Learning

Multi-objective reinforcement learning (MORL) aims at optimising several, often conflicting goals in order to improve flexibility and reliability of RL in practical tasks. This can be achieved by finding diverse policies that are optimal for some objective preferences and non-dominated by optimal policies for other preferences so that they form a Pareto front in the multi-objective performance space. The relation between the multi-objective performance space and the parameter space that represents the policies is generally non-unique. Using a training scheme that is based on a locally linear map between the parameter space and the performance space, we show that an approximate Pareto front can provide an interpretation of the current parameter vectors in terms of the objectives which enables an effective search within contiguous solution domains. Experiments are conducted with and without retraining across different domains, and the comparison with previous methods demonstrates the efficiency of our approach.

Qiyue Xia;J. Michael Herrmann发表时间:2025-06-04
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