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Titlebook: Web and Big Data; 8th International Jo Wenjie Zhang,Anthony Tung,Hongjie Guo Conference proceedings 2024 The Editor(s) (if applicable) and

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楼主: dejected
发表于 2025-4-1 05:11:22 | 显示全部楼层
Similarity Retrieval and Medical Cross-Modal Attention Based Medical Report Generationon Network (SRMCAN). By employing content-based similarity retrieval, SRMCAN filters out interfering information in relevant semantic features, which serves as a complementary feature for the model. SRMCAN constructs a fine-grained alignment loss function, taking similar cases as hard negative sampl
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LLM-Based Empathetic Response Through Psychologist-Agent Debater empathetic responses is the lack of integration of different schools of psychology and multiple rounds. To address this issue, we propose a psychologist-agent-based multi-turn dialogue framework. This framework comprises a group of arguers with preferences of different psychological schools, used
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LLM-Based Empathetic Response Through Psychologist-Agent Debater empathetic responses is the lack of integration of different schools of psychology and multiple rounds. To address this issue, we propose a psychologist-agent-based multi-turn dialogue framework. This framework comprises a group of arguers with preferences of different psychological schools, used
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Enhancing Continual Relation Extraction with Concept Aware Dynamic Memory Optimizationappropriate training samples for replay training and the latter generates more accurate relation prototypes for the prediction. Our experimental results demonstrate the effectiveness of our method in mitigating biased feature representations to overcome catastrophic forgetting.
发表于 2025-4-2 10:28:57 | 显示全部楼层
Enhancing Continual Relation Extraction with Concept Aware Dynamic Memory Optimizationappropriate training samples for replay training and the latter generates more accurate relation prototypes for the prediction. Our experimental results demonstrate the effectiveness of our method in mitigating biased feature representations to overcome catastrophic forgetting.
发表于 2025-4-2 11:20:38 | 显示全部楼层
Knowledge-Enhanced Context Representation for Unbiased Scene Graph Generationco-occurrence frequencies of entities and relationships, the global semantic representation of the entire image, and visual features are combined as inputs to generate contextual semantic representations for relational triplets. Additionally, this model also demonstrates improvement in addressing th
发表于 2025-4-2 15:52:39 | 显示全部楼层
Knowledge-Enhanced Context Representation for Unbiased Scene Graph Generationco-occurrence frequencies of entities and relationships, the global semantic representation of the entire image, and visual features are combined as inputs to generate contextual semantic representations for relational triplets. Additionally, this model also demonstrates improvement in addressing th
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