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With the aid of recently proposed word embedding algorithms, the study of semantic relatedness has progressed rapidly. However, word-level representations are still lacking for many natural language processing tasks. Various sense-level embedding learning algorithms have been proposed to address this issue. In this paper, we present a generalized model derived from existing sense retrofitting models. In this generalization, we take into account semantic relations between the senses, relation strength, and semantic strength. Experimental results show that the generalized model outperforms previous approaches on four tasks: semantic relatedness, contextual word similarity, semantic difference, and synonym selection. Based on the generalized sense retrofitting model, we also propose a standardization process on the dimensions with four settings, a neighbor expansion process from the nearest neighbors, and combinations of these two approaches. Finally, we propose a Procrustes analysis approach that inspired from bilingual mapping models for learning representations that outside of the ontology. The experimental results show the advantages of these approaches on semantic relatedness tasks.
Edited by
Chu-Ren Huang, The Hong Kong Polytechnic University,Yen-Hwei Lin, Michigan State University,I-Hsuan Chen, University of California, Berkeley,Yu-Yin Hsu, The Hong Kong Polytechnic University
Edited by
Chu-Ren Huang, The Hong Kong Polytechnic University,Yen-Hwei Lin, Michigan State University,I-Hsuan Chen, University of California, Berkeley,Yu-Yin Hsu, The Hong Kong Polytechnic University
Edited by
Chu-Ren Huang, The Hong Kong Polytechnic University,Yen-Hwei Lin, Michigan State University,I-Hsuan Chen, University of California, Berkeley,Yu-Yin Hsu, The Hong Kong Polytechnic University
from
29
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An Interactive Perspective on Topic Constructions in Mandarin
Edited by
Chu-Ren Huang, The Hong Kong Polytechnic University,Yen-Hwei Lin, Michigan State University,I-Hsuan Chen, University of California, Berkeley,Yu-Yin Hsu, The Hong Kong Polytechnic University
Edited by
Chu-Ren Huang, The Hong Kong Polytechnic University,Yen-Hwei Lin, Michigan State University,I-Hsuan Chen, University of California, Berkeley,Yu-Yin Hsu, The Hong Kong Polytechnic University
Edited by
Chu-Ren Huang, The Hong Kong Polytechnic University,Yen-Hwei Lin, Michigan State University,I-Hsuan Chen, University of California, Berkeley,Yu-Yin Hsu, The Hong Kong Polytechnic University
Edited by
Chu-Ren Huang, The Hong Kong Polytechnic University,Yen-Hwei Lin, Michigan State University,I-Hsuan Chen, University of California, Berkeley,Yu-Yin Hsu, The Hong Kong Polytechnic University
Edited by
Chu-Ren Huang, The Hong Kong Polytechnic University,Yen-Hwei Lin, Michigan State University,I-Hsuan Chen, University of California, Berkeley,Yu-Yin Hsu, The Hong Kong Polytechnic University
Edited by
Chu-Ren Huang, The Hong Kong Polytechnic University,Yen-Hwei Lin, Michigan State University,I-Hsuan Chen, University of California, Berkeley,Yu-Yin Hsu, The Hong Kong Polytechnic University
from
29
-
An Interactive Perspective on Topic Constructions in Mandarin
Edited by
Chu-Ren Huang, The Hong Kong Polytechnic University,Yen-Hwei Lin, Michigan State University,I-Hsuan Chen, University of California, Berkeley,Yu-Yin Hsu, The Hong Kong Polytechnic University
Edited by
Chu-Ren Huang, The Hong Kong Polytechnic University,Yen-Hwei Lin, Michigan State University,I-Hsuan Chen, University of California, Berkeley,Yu-Yin Hsu, The Hong Kong Polytechnic University
Edited by
Chu-Ren Huang, The Hong Kong Polytechnic University,Yen-Hwei Lin, Michigan State University,I-Hsuan Chen, University of California, Berkeley,Yu-Yin Hsu, The Hong Kong Polytechnic University
Edited by
Chu-Ren Huang, The Hong Kong Polytechnic University,Yen-Hwei Lin, Michigan State University,I-Hsuan Chen, University of California, Berkeley,Yu-Yin Hsu, The Hong Kong Polytechnic University
The linguistic study of Chinese, with its rich morphological, syntactic and prosodic/tonal structures, its complex writing system, and its diverse socio-historical background, is already a long-established and vast research area. With contributions from internationally renowned experts in the field, this Handbook provides a state-of-the-art survey of the central issues in Chinese linguistics. Chapters are divided into four thematic areas: writing systems and the neuro-cognitive processing of Chinese, morpho-lexical structures, phonetic and phonological characteristics, and issues in syntax, semantics, pragmatics, and discourse. By following a context-driven approach, it shows how theoretical issues in Chinese linguistics can be resolved with empirical evidence and argumentation, and provides a range of different perspectives. Its dialectical design sets a state-of-the-art benchmark for research in a wide range of interdisciplinary and cross-lingual studies involving the Chinese language. It is an essential resource for students and researchers wishing to explore the fascinating field of Chinese linguistics.
Treatment-resistant schizophrenia (TRS) and non-TRS may be associated with different dopaminergic and glutamatergic regulations. The concept of dysregulated glutamatergic concentrations in specific brain regions remains controversial. Herein, we aimed to assess (i) the distribution of the glutamatergic concentration in the brain, (ii) the association between working memory (WM) differences in TRS and non-TRS patients, and (iii) whether an alteration in the glutamate (Glu) level is associated with WM.
Methods
The participants included 38 TRS patients, 35 non-TRS patients, and 19 healthy controls (HCs), all of whom underwent 1.5-Tesla proton magnetic resonance spectroscopy of anterior cingulate cortex (ACC) and medial prefrontal cortex (MPFC). The ratios of glutamatergic neurometabolites to N-acetylaspartate + N-acetyl aspartylglutamate (NAAx) were calculated. Cognitive function was assessed using the Wechsler Adult Intelligence Scales, 4th Edition, which included the working memory index (WMI).
Result
The TRS patients had a higher glutamate + glutamine (Glx)/NAAx ratio compared to the non-TRS patients and HCs in the ACC, but this was not significantly different in the MPFC. WM was negatively correlated with Glx/NAAx in the ACC among the non-TRS patients, but not in the TRS patients or HCs.
Conclusions
Our findings were consistent with most studies indicating that the glutamatergic concentration in the ACC plays important roles in the classification of TRS and cognition. Our results may provide potential evidence for predictors and treatment response biomarkers in TRS patients. Further research is needed to probe the value using the relationship between Glu and WM as a potential prognostic predictor of schizophrenia.
High prevalence of insulin resistance (IR) has been reported in bipolar disorder (BD) patients. Importantly, impaired insulin sensitivity could modulate the course and treatment outcome in BD. Here, we hypothesized that insulin sensitivity could be potentially associated with the neurocognitive trajectory in euthymic BD. We aimed to examine differences in insulin sensitivity and executive function between BD patients and controls.
Methods
Sixty-two patients with BD receiving mood stabilizer treatment and 62 controls, matching age, sex, and body mass index, were recruited in this study. Insulin sensitivity was estimated using the homeostasis model assessment of insulin resistance (HOMA-IR). The Wisconsin card-sorting test (WCST) was applied to test participants’ ability to shift cognitive set. Group differences were measured and multivariate regression analysis was performed to examine relationships among factors.
Results
The results indicated that the HOMA-IR (P = .048) value in the patients with BD were significantly higher than those in controls. With regards to executive function, the BD patients performed significantly poorer than the control subjects (P < .05). Moreover, the interaction effect between BD diagnosis and HOMA-IR value on the WCST-preservation errors was significant (P = .01), and post-hoc analyses showed that the cognitive abilities were worse in the BD patients with a higher IR than in the others groups.
Conclusion
Insulin sensitivity is associated with the neurocognitive performance in euthymic BD patients. Although the underlying mechanisms remain unclear, interventions to improve insulin sensitivity could potentially improve the functional outcome of BD.
The present study examined the relationship between the Lie scale scores and striatal D2/D3 receptor availability with respect to the cerebellum in 42 healthy community volunteers in Taiwan using single photon emission computed tomography (SPECT) with [123I]iodo-benzoaminde (IBZM). Even after controlling of age and educational level, subjects' Lie scale scores of the Maudsley personality inventory correlate negatively with D2/D3 receptor availability. Individual with higher Lie scale scores may have higher impulsivity due to lower dopaminergic availability.
In this contribution, we devoted ourselves to fabricating aggregation-induced emission (AIE) activity copolymers via one-pot combination of RAFT polymerization and Biginelli reaction for the first time. When the feeding ratio of TPB was 33.5%, the molar fraction of TPB was, respectively, about 14.2 and 22.5% in PEG-PTE1 copolymers by two-step strategy and PEG-PTE2 copolymers by one-pot strategy with the similar structure. The Mn of PEG-PTE1 increased to 59,300 from 52,800 of PEG-AE presoma with narrow PDI, which was more than Mn of PEG-PTE2 with 52,300. As compared with PEG-PTE2, when the feeding ratio of TPB was 48.6%, the molar fraction of TPB increased to 32.6% in PEG-PTE3. In aqueous solution, the as-obtained PEG-PTE2 copolymers can self-assemble into fluorescent organic nanoparticles (FONs) with 100–180 nm spherical morphology, the maximal emission peak of which presented at 460 nm with the obvious AIE phenomenon. Moreover, due to the low toxicity and excellent cell dyeing behavior, the as-prepared PEG-PTE2 copolymers displayed great potential for biomedical applications.
In 2007, Taiwan began conducting health technology assessments (HTA) to support the National Health Insurance Administration (NHIA) in its reimbursement decisions for drugs, medical devices, and medical services.
Methods
In this study, the development, missions, and procedures of the implementation of HTA in Taiwan are briefly introduced. Moreover, the value of HTA is examined by reviewing the outcomes and impacts of recent HTA-related research projects, which are classified into five categories: (i) pharmaceutical products, (ii) medical procedures, (iii) medical devices, (iv) health policy, and (v) social care.
Results
Overall, the 10-year implementation of HTA has not only supported the government's decision making but also enhanced patient care. Furthermore, patient evidence has been highlighted, and patient care pathways have been transformed through patient involvement in HTA.
Conclusions
In conclusion, HTA's value has been determined by both government and social aspects in Taiwan.