91 research outputs found
"There is a Job Prepared for Me Here": Understanding How Short Video and Live-streaming Platforms Empower Ageing Job Seekers in China
In recent years, the global unemployment rate has remained persistently high.
Compounding this issue, the ageing population in China often encounters
additional challenges in finding employment due to prevalent age discrimination
in daily life. However, with the advent of social media, there has been a rise
in the popularity of short videos and live-streams for recruiting ageing
workers. To better understand the motivations of ageing job seekers to engage
with these video-based recruitment methods and to explore the extent to which
such platforms can empower them, we conducted an interview-based study with
ageing job seekers who have had exposure to these short recruitment videos and
live-streaming channels. Our findings reveal that these platforms can provide a
job-seeking choice that is particularly friendly to ageing job seekers,
effectively improving their disadvantaged situation.Comment: 14 pages, 3 figures; Accepted to ACM CHI 2024. In Proceedings of the
2024 CHI Conference on Human Factors in Computing Systems (CHI'24
Karar Ağacı Algoritması Kullanılarak Çin Topraklarındaki Orta Dereceli Okul Öğrencilerine İlişkin Jeo-Uzamsal Düşünme Yeteneğinin Tahmin Edilmesi
Predicting secondary school students' geospatial thinking ability can provide targeted guidance for teachers. To date, few scholars have focused on predicting students’ geospatial thinking ability. In this paper, we address this gap by constructing a prediction model based on the decision tree algorithm, to predict the geospatial thinking ability of secondary school students. A total of 1029 secondary school students were surveyed using the Spatial Thinking Ability Test, the Students' Geography Learning Status Questionnaire, and the Middle Students Motivation Test. Our model indicates that geospatial thinking ability can be predicted by nine factors, in order of importance: academic achievement in geography, geography learning strategy, geography classroom environment, gender, learning initiative, learning goals, extra-curricular time spent learning geography, ego-enhancement drive, and interest in learning geography. The model accuracy is 81.25%. Specifically, our study is the first to predict geospatial thinking ability. It provides a tool for teachers that can help them identify and predict students' geospatial thinking ability, which is conducive to designing better teaching plans and making adjustments to the curriculum.Orta dereceli okul öğrencilerinin jeo-uzamsal düşünme yeteneklerinin tahmin edilmesi öğretmenler için hedefe yönelik rehberlik sağlayabilir. Şimdiye kadar az sayıda bilim insanı, öğrencilerin jeo-uzamsal düşünme yeteneklerinin tahmin edilmesine odaklanmıştır. Bu makalede, orta dereceli okul öğrencilerinin jeo-uzamsal düşünme yeteneklerinin tahmin edilmesi amacıyla karar ağacı algoritmasına dayanan bir tahmin modeli oluşturarak bu boşluğu doldurmayı amaçlıyoruz. Uzamsal Düşünme Yeteneği Testi, Öğrencilerin Coğrafya Öğrenimi Durumu Anketi ve Orta Dereceli Okul Öğrencileri Motivasyon Testi kullanılarak toplam 1029 orta dereceli okul öğrencisine anket uygulanmıştır. Modelimiz, jeo-uzamsal düşünme yeteneğinin dokuz etmenle tahmin edilebileceğine işaret etmektedir. Önem sırasına göre bu etmenler; coğrafya dersindeki akademik başarı, coğrafya öğrenimi stratejisi, coğrafya sınıf ortamı, cinsiyet, öğrenme inisiyatifi, öğrenme hedefleri, coğrafya öğreniminde harcanan müfredat harici zaman, benlik geliştirme dürtüsü ve coğrafya öğrenimine ilgi şeklindedir. Model doğruluk oranı %81,25’tir. Özellikle, çalışmamız jeo-uzamsal düşünme yeteneğinin tahmin edilmesine yönelik ilk çalışmadır. Öğretmenlere öğrencilerin jeo-uzamsal düşünme yeteneklerini saptamalarına ve tahmin etmelerine yardımcı olabilecek bir araç sunan çalışmamız böylelikle daha iyi eğitim planları hazırlanmasında ve müfredatta düzenlemeler yapılmasında fayda sağlayacaktır
"It Felt Like Having a Second Mind": Investigating Human-AI Co-creativity in Prewriting with Large Language Models
Prewriting is the process of discovering and developing ideas before a first
draft, which requires divergent thinking and often implies unstructured
strategies such as diagramming, outlining, free-writing, etc. Although large
language models (LLMs) have been demonstrated to be useful for a variety of
tasks including creative writing, little is known about how users would
collaborate with LLMs to support prewriting. The preferred collaborative role
and initiative of LLMs during such a creativity process is also unclear. To
investigate human-LLM collaboration patterns and dynamics during prewriting, we
conducted a three-session qualitative study with 15 participants in two
creative tasks: story writing and slogan writing. The findings indicated that
during collaborative prewriting, there appears to be a three-stage iterative
Human-AI Co-creativity process that includes Ideation, Illumination, and
Implementation stages. This collaborative process champions the human in a
dominant role, in addition to mixed and shifting levels of initiative that
exist between humans and LLMs. This research also reports on collaboration
breakdowns that occur during this process, user perceptions of using existing
LLMs during Human-AI Co-creativity, and discusses design implications to
support this co-creativity process.Comment: Under review at CSCW after a Major Revisio
StoryChat: Designing a Narrative-Based Viewer Participation Tool for Live Streaming Chatrooms
Live streaming platforms and existing viewer participation tools enable users
to interact and engage with an online community, but the anonymity and scale of
chat usually result in the spread of negative comments. However, only a few
existing moderation tools investigate the influence of proactive moderation on
viewers' engagement and prosocial behavior. To address this, we developed
StoryChat, a narrative-based viewer participation tool that utilizes a dynamic
graphical plot to reflect chatroom negativity. We crafted the narrative through
a viewer-centered (N=65) iterative design process and evaluated the tool with
48 experienced viewers in a deployment study. We discovered that StoryChat
encouraged viewers to contribute prosocial comments, increased viewer
engagement, and fostered viewers' sense of community. Viewers reported a closer
connection between streamers and other viewers because of the narrative design,
suggesting that narrative-based viewer engagement tools have the potential to
encourage community engagement and prosocial behaviors
Evaluation of Tung Oil (Vernicia fordii (Hemsl.)) for Controlling Termites
In worldwide, the use of chemical pesticides to protect wood has been greatly restricted. In recent years, a large number of researchers devoted to the search for natural, safe and non-polluting bioactive chemical compounds from plants as an alternative to synthetic organic chemical preservative. In Chinese folk, tung oil can be used as paint for wooden furniture to protect them from pests. This study aimed to evaluate the chemical compositions of raw and heated tung oil and their activity against termite. In choice bioassays, weight loss of wood treated with 5% raw or heated tung oil after 4 weeks was significantly less than that of the control group. In no-choice bioassays, there was a significant difference in termite survival and wood weight loss on raw and heated tung oil-treated wood. When tung oil-treatment concentrations increased to 5%, wood weight loss was less than 10%. There was no significant difference in termite survival and wood weight loss between raw and heated tung oil-treated wood. Survival of termites in both tung oil wood treatments was significantly lower than that in the starvation control after 4 weeks. Raw and heated tung oil significantly improved the resistance of pine wood to termites, and have the potential for the development of natural wood preservatives
Precedent-Enhanced Legal Judgment Prediction with LLM and Domain-Model Collaboration
Legal Judgment Prediction (LJP) has become an increasingly crucial task in
Legal AI, i.e., predicting the judgment of the case in terms of case fact
description. Precedents are the previous legal cases with similar facts, which
are the basis for the judgment of the subsequent case in national legal
systems. Thus, it is worthwhile to explore the utilization of precedents in the
LJP. Recent advances in deep learning have enabled a variety of techniques to
be used to solve the LJP task. These can be broken down into two categories:
large language models (LLMs) and domain-specific models. LLMs are capable of
interpreting and generating complex natural language, while domain models are
efficient in learning task-specific information. In this paper, we propose the
precedent-enhanced LJP framework (PLJP), a system that leverages the strength
of both LLM and domain models in the context of precedents. Specifically, the
domain models are designed to provide candidate labels and find the proper
precedents efficiently, and the large models will make the final prediction
with an in-context precedents comprehension. Experiments on the real-world
dataset demonstrate the effectiveness of our PLJP. Moreover, our work shows a
promising direction for LLM and domain-model collaboration that can be
generalized to other vertical domains
Alcohol Promotes Mammary Tumor Growth through Activation of VEGF-Dependent Tumor Angiogenesis
Alcohol consumption has been recognized as a risk factor for breast cancer. Experimental studies demonstrate that alcohol exposure promotes the progression of existing mammary tumors. However, the mechanisms underlying this effect remain unclear. In the present study, the role of vascular endothelial growth factor (VEGF) in alcohol promotion of breast cancer development was investigated using a mouse xenograft model of mammary tumors and a three-dimensional (3D) tumor/endothelial cell co-culture system. For the mouse xenograft model, mouse E0771 breast cancer cells were implanted into the mammary fat pad of C57BL6 mice. These mice were exposed to alcohol in their drinking water. For the 3D co-culture system, E0771 cells and MDA-MB231 breast cancer cells were co-cultured with SVEC4-10EE2 and human umbilical vein endothelial cells, respectively. The results demonstrated that alcohol increased tumor angiogenesis and accelerated tumor growth. Furthermore, it appeared that alcohol induced VEGF expression in breast cancer cells in vitro and in vivo. Blocking VEGF signaling by SU5416 inhibited tumor angiogenesis in the 3D tumor/endothelial cell co-culture system. Furthermore, injection of SU5416 into mice inhibited alcohol-promoted mammary tumor growth in vivo. These results indicate that alcohol may promote mammary tumor growth by stimulating VEGF-dependent angiogenesis
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