descriptive word
MAQuA: Adaptive Question-Asking for Multidimensional Mental Health Screening using Item Response Theory
Varadarajan, Vasudha, Xu, Hui, Boehme, Rebecca Astrid, Mirstrom, Mariam Marlan, Sikstrom, Sverker, Schwartz, H. Andrew
Recent advances in large language models (LLMs) offer new opportunities for scalable, interactive mental health assessment, but excessive querying by LLMs burdens users and is inefficient for real-world screening across transdiagnostic symptom profiles. We introduce MAQuA, an adaptive question-asking framework for simultaneous, multidimensional mental health screening. Combining multi-outcome modeling on language responses with item response theory (IRT) and factor analysis, MAQuA selects the questions with most informative responses across multiple dimensions at each turn to optimize diagnostic information, improving accuracy and potentially reducing response burden. Empirical results on a novel dataset reveal that MAQuA reduces the number of assessment questions required for score stabilization by 50-87% compared to random ordering (e.g., achieving stable depression scores with 71% fewer questions and eating disorder scores with 85% fewer questions). MAQuA demonstrates robust performance across both internalizing (depression, anxiety) and externalizing (substance use, eating disorder) domains, with early stopping strategies further reducing patient time and burden. These findings position MAQuA as a powerful and efficient tool for scalable, nuanced, and interactive mental health screening, advancing the integration of LLM-based agents into real-world clinical workflows.
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- North America > United States > New Jersey > Bergen County > Mahwah (0.04)
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Embedding-based Retrieval with LLM for Effective Agriculture Information Extracting from Unstructured Data
Peng, Ruoling, Liu, Kang, Yang, Po, Yuan, Zhipeng, Li, Shunbao
Information extraction (IE) refers to the process of extracting information from unstructured text and transform it into structured data. Nowadays, in an information era, the rapid increase in the amount of data has made this type of task increasingly important. IE is labour-intensive and time-consuming, so lots of domains have switched to automatic or semi-automatic IE Wang et al. [2018] Saggion et al. [2007]. The Internet provides a vast amount of information for agriculture, but the lack of effective data processing methods leads to that much agricultural information remains unarchived, buried in news, papers, and government and organization websites. This may mainly be due to the shortage of annotated corpora Nismi Mol and Santosh Kumar [2023]. These documents cannot be easily analyzed or queried in their raw form and require some form of information extraction to be easily utilised in applications. Searching and managing this unstructured information efficiently is not only a difficult challenge for farmers, but for agriculture professionals as well.
Enhancing Virtual Assistant Intelligence: Precise Area Targeting for Instance-level User Intents beyond Metadata
Chen, Mengyu, Xing, Zhenchang, Chen, Jieshan, Chen, Chunyang, Lu, Qinghua
Virtual assistants have been widely used by mobile phone users in recent years. Although their capabilities of processing user intents have been developed rapidly, virtual assistants in most platforms are only capable of handling pre-defined high-level tasks supported by extra manual efforts of developers. However, instance-level user intents containing more detailed objectives with complex practical situations, are yet rarely studied so far. In this paper, we explore virtual assistants capable of processing instance-level user intents based on pixels of application screens, without the requirements of extra extensions on the application side. We propose a novel cross-modal deep learning pipeline, which understands the input vocal or textual instance-level user intents, predicts the targeting operational area, and detects the absolute button area on screens without any metadata of applications. We conducted a user study with 10 participants to collect a testing dataset with instance-level user intents. The testing dataset is then utilized to evaluate the performance of our model, which demonstrates that our model is promising with the achievement of 64.43% accuracy on our testing dataset.
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- North America > United States > New York > New York County > New York City (0.04)
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Dataless Text Classification with Descriptive LDA
Chen, Xingyuan (Leshan Normal University) | Xia, Yunqing (Tsinghua University) | Jin, Peng (Leshan Normal University) | Carroll, John (University of Sussex)
Manually labeling documents for training a text classifier is expensive and time-consuming. Moreover, a classifier trained on labeled documents may suffer from overfitting and adaptability problems. Dataless text classification (DLTC) has been proposed as a solution to these problems, since it does not require labeled documents. Previous research in DLTC has used explicit semantic analysis of Wikipedia content to measure semantic distance between documents, which is in turn used to classify test documents based on nearest neighbours. The semantic-based DLTC method has a major drawback in that it relies on a large-scale, finely-compiled semantic knowledge base, which is difficult to obtain in many scenarios. In this paper we propose a novel kind of model, descriptive LDA (DescLDA), which performs DLTC with only category description words and unlabeled documents. In DescLDA, the LDA model is assembled with a describing device to infer Dirichlet priors from prior descriptive documents created with category description words. The Dirichlet priors are then used by LDA to induce category-aware latent topics from unlabeled documents. Experimental results with the 20Newsgroups and RCV1 datasets show that: (1) our DLTC method is more effective than the semantic-based DLTC baseline method; and (2) the accuracy of our DLTC method is very close to state-of-the-art supervised text classification methods. As neither external knowledge resources nor labeled documents are required, our DLTC method is applicable to a wider range of scenarios.
- Asia > Middle East > Jordan (0.05)
- North America > United States > Pennsylvania > Allegheny County > Pittsburgh (0.04)
- Europe > United Kingdom (0.04)
- Asia > China > Beijing > Beijing (0.04)