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Social media meets FinTech platforms: How do online emotions support credit risk decision-making? Decis. Support Syst. (IF 6.7) Pub Date : 2025-05-27
Zenan Zhou, Zhichen Chen, Yingjie Zhang, Tian Lu, Xianghua LuAs emerging FinTech platforms face pressure in efficiently managing credit risk, the human emotional spectrum of FinTech platform borrowers within social media becomes a potential source for gaining insight into and evaluating their financial behaviors. Collaborating with an Asian FinTech platform, we investigate the impact of social media emotions on a platform’s loan-approval decisions and repayment-reminder
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More than meets the eye: Feature concerns and suggestions in mobile XR app reviews Decis. Support Syst. (IF 6.7) Pub Date : 2025-05-19
Nohel Zaman, David M. Goldberg, Zhilei Qiao, Alan S. AbrahamsThis study aims to address quality concerns in mobile Extended Reality (XR) apps by developing tools to classify user reviews from the Google Play Store. Our first major contribution is a holistic approach to coding thousands of reviews, offering a unified framework to assess feature concerns and feature suggestions, thereby enhancing the understanding of user expectations. We also introduce a novel
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Integrating temporal association rules into intelligent prediction system for metabolic dysfunction-associated fatty liver disease Decis. Support Syst. (IF 6.7) Pub Date : 2025-05-13
Zhuoqing Wu, Chonghui Guo, Jingfeng Chen, Suying Ding, Yunchao ZhengHealthcare big data provides trajectory data on chronic disease onset, progression, and outcomes, essential for understanding metabolic dysfunction-associated fatty liver disease (MAFLD) patient health dynamics. However, constructing explainable predictive models for MAFLD using longitudinal healthcare big data remains challenging due to its complexity. While several high-performance machine learning
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40 years of Decision Support Systems: A bibliometric analysis Decis. Support Syst. (IF 6.7) Pub Date : 2025-05-08
Li Guan, José M. Merigó, Ghassan BeydounDecision Support Systems (DSS) is a leading international journal dedicated to decision support system research and practice, with the aim of exploring theoretical and technical advancements to facilitate enhanced decision making in industry, commerce, government, and other business settings. The journal published its first issue in 1985, and in 2025, celebrates its 40th anniversary. Motivated by this
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Unlocking big data success in the AI-driven era: Toward a unified theory for intelligent decision support Decis. Support Syst. (IF 6.7) Pub Date : 2025-05-08
Xi Zhao, Hua Dai, Tao “Eric” Hu, Hsing K. Cheng, Ping ZhangUpon a grounded theory-based literature review of 220 articles published in the AIS “Senior Scholars' Basket of Journals” over the period of twenty years of 2000–2020, this study examines concepts, constructs, topics, methodologies, and research models/paradigms of Big Data literature in the information systems (IS) discipline. We extend the well-established IS success model into the Big Data area
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Sponsored search and organic listings in online food delivery platforms: The role of keyword categories Decis. Support Syst. (IF 6.7) Pub Date : 2025-05-05
Guo Chen, Siyu Zhang, Luning Liu, Yuqiang FengOnline sellers appear in search results through sponsored listings (paid advertising links) or organic listings (unpaid links) based on their associations with keywords in consumer search queries. This approach allows sellers to deduce consumers' purchasing preferences, thereby ultimately increasing their economic payoffs. Therefore, selecting appropriate keywords is critical for online sellers. Although
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Product return prediction in live streaming e-commerce with cross-modal contrastive transformer Decis. Support Syst. (IF 6.7) Pub Date : 2025-05-05
Wen Zhang, Rui Xie, Pei Quan, Zhenzhong MaThe live-streaming e-commerce industry is suffering heavy economic losses due to the high product return rate, which leads to rising logistics costs, greater inventory pressure, and unsatisfactory consumer experiences. Accurate product return prediction is highly desirable for the vendors to optimize their business operations in advance to reduce return-related costs. This paper proposes a novel approach
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Using large multimodal models to predict outfit compatibility Decis. Support Syst. (IF 6.7) Pub Date : 2025-04-26
Chia-Ling Chang, Yen-Liang Chen, Dao-Xuan JiangOutfit coordination is a direct way for people to express themselves. However, judging the compatibility between tops and bottoms requires considering multiple factors such as color and style. This process is time-consuming and prone to errors. In recent years, the development of large language models and large multi-modal models has transformed many application fields. This study aims to explore how
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Governmental enforcement against piracy on media platforms Decis. Support Syst. (IF 6.7) Pub Date : 2025-04-23
Meiqian Li, Guowei Liu, Guofang Nan, Yinliang (Ricky) TanThe rapid growth of illegal websites hosting pirated content has significantly reduced demand for legitimate media platforms, causing substantial economic losses to the media industry. Governmental departments must take measures to combat these illegal websites and restrict access to pirated content. This paper examines governmental enforcement against piracy on media platforms that offer consumer
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Metaverse opportunities and challenges: A research agenda and editorial on the special issue on the evolution of Metaverse platforms (part 2) Decis. Support Syst. (IF 6.7) Pub Date : 2025-04-21
Arpan Kumar Kar, Patrick Mikalef, Rohit Nishant, Xin (Robert) Luo, Manish GuptaThe growing adoption of Metaverse offers an exciting opportunity to connect stakeholders on these technology platforms across industries. These platforms offer capabilities to interact, engage, transact and create different user experiences and functional values for users onboarded. The research on Metaverse is still at a nascent stage and our editorial provides research directions in Metaverse as
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Leveraging meta-path and co-attention to model consumer preference stability in fashion recommendations Decis. Support Syst. (IF 6.7) Pub Date : 2025-04-20
Ya-Han Hu, Ting-Hsuan Liu, Kuanchin Chen, Fan-Chi YehWith countless outfit combinations available, consumers often experience choice overload. Two key challenges that significantly impact the quality of recommendation systems are recommendation accuracy and fluctuations in consumer preferences. Previous works primarily extracted generic product features and modeled the compatibility of fashion items, overlooking the relationships hidden in user-product
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Augmenting micro-moment recommendations with group and serendipity perspectives Decis. Support Syst. (IF 6.7) Pub Date : 2025-04-17
Yi-Ling Lin, Yu-Xiang Zheng, Yi-Cheng KuWith the pervasive integration of internet and mobile services, mobile devices have become integral to daily life. The concept of micro-moments, characterized by immediate intent within specific contexts, underscores the importance of timely and relevant information. Traditional RS, though effective in mitigating information overload, often fall short in addressing the dynamic and context-specific
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High efficiency or easy troubleshooting? Human use of autonomous Mobile healthcare robots Decis. Support Syst. (IF 6.7) Pub Date : 2025-04-15
Tzu-Ling Huang, Gen-Yih Liao, Alan R. Dennis, Ching-I TengAmong modern information technologies, robots help reduce the effort employees expend on tasks that are repetitive and physically demanding. When helping employees, robots may be required to display enhanced efficiency, but such a design can also increase employees' effort required for operational troubleshooting. It is not yet known whether effort saving (i.e., increasing nurses' time and energy saved)
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Enhancing return forecasting using LSTM with agent-based synthetic data Decis. Support Syst. (IF 6.7) Pub Date : 2025-04-14
Lijian Wei, Sihang Chen, Junqin Lin, Lei ShiFinancial markets, as complex adaptive systems, are characterized by historical data limitations, inherent evolution and non-stationarity, which challenge the effectiveness of deep learning models such as Long Short-Term Memory (LSTM). We address these challenges by generating synthetic data using Agent-Based Modeling (ABM) to simulate complex market conditions through “what-if” scenarios. Our method
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Can comments and dialogues make sense? The effect of two-way interactions on sales and followers in live streaming commerce Decis. Support Syst. (IF 6.7) Pub Date : 2025-04-05
Xiaoping Lang, Sheng Lin, Xiangyang Ma, Tieshan LiThis research employs interaction ritual model to explore the two-way interaction between streamers and viewers on a live streaming commerce platform. To be specific, the study investigates the impact of viewers' real-time comments and streamer's dialogue on product sales and follower growth, using minute-level data for detailed analysis. The results show that real-time comments exhibit a nonlinear
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Unravelling the effects of two inconsistencies on online review helpfulness: Evidence from TripAdvisor Decis. Support Syst. (IF 6.7) Pub Date : 2025-04-04
Dujuan Wang, Qianyang Xia, Yi Feng, T.C.E. ChengFacing the challenge of information overload, some travel websites have introduced systems for travelers to vote on helpful reviews, prompting researchers to focus on the determinants of review helpfulness. While evaluations from multiple reviews may provide travelers with more perspectives, inconsistent information within the reviews may cause confusion. Studies exploring the effects of multiple inconsistencies
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Remote work in the metaverse: The impact of gamification and online social connectedness on job satisfaction Decis. Support Syst. (IF 6.7) Pub Date : 2025-04-04
Khadija Ali Vakeel, Saurav Chakraborty, Lamont BlackThis study explores the potential of the metaverse in enhancing job satisfaction for remote employees. With the increasing shift towards remote work, firms are investing more in the metaverse to create dynamic and immersive digital environments. Drawing upon media richness theory, we investigate the roles of gamification and online social connectedness within the metaverse, which are crucial factors
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ESG-KIBERT: A new paradigm in ESG evaluation using NLP and industry-specific customization Decis. Support Syst. (IF 6.7) Pub Date : 2025-03-29
Haein Lee, Jang Hyun Kim, Hae Sun JungThis study presents a significant advancement in Environmental, Social, Governance (ESG) evaluation by addressing critical gaps in transparency, consistency, and industry-specific relevance. The ESG-Keyword integrated bidirectional encoder representations from transformers (ESG-KIBERT) model, developed using advanced natural language processing (NLP) techniques, enhances ESG classification performance
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Dynamic model selection in enterprise forecasting systems using sequence modeling Decis. Support Syst. (IF 6.7) Pub Date : 2025-03-29
Jinhang Jiang, Kiran Kumar Bandeli, Karthik SrinivasanEnterprise forecasting systems often involve modeling a large scale of heterogeneous time series using a pool of candidate algorithms, such as in the case of simultaneous sales forecasts of thousands of stock-keeping units. In such cases, it can be advantageous to automatically monitor and replace algorithms for each time series. We introduce TimeSpeaks, a framework that adapts sequence modeling in
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Predicting stock price movement using social network analytics: Posts are sometimes less useful Decis. Support Syst. (IF 6.7) Pub Date : 2025-03-24
Wanyun Li, Alvin Chung Man Leung, Ka Wai Choi, Shuk Ying HoContemporary research has leveraged social network data as a predictive tool for decision-making process in the capital market. Yet, its effectiveness may be compromised by social contagion. This study addresses this problem by introducing conversation-level measures that capture how interactions among investors affect market predictions. Drawing on social contagion theory, we identified three conversation
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To disclose or not? The impact of prosocial behavior disclosure on the attainment of social capital on social networking sites Decis. Support Syst. (IF 6.7) Pub Date : 2025-03-21
Jiayuan Zhang, Koray Özpolat, Gulver Karamemis, Dara SchniederjansWhile some donors and volunteers do not publicize their prosocial behaviors because of humility, many others fear that disclosing their prosocial behaviors may be perceived as bragging. With the rise of social networking sites (SNSs), this has become an essential issue with important business implications. As more companies encourage employees to volunteer a small portion of their work time and match
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Not easy to “like”: How does cognitive load influence user engagement in online reviews? Decis. Support Syst. (IF 6.7) Pub Date : 2025-03-17
Yuqiu Wang, Kai LiUser engagement (e.g., likes, shares, and comments) is widely recognized as critical to business success. Although existing studies have explored the determinants of user engagement, relatively little attention has been paid to cognitive load. This study, based on cognitive load theory, expectation confirmation theory, and the stressor-strain-outcome framework, examines the heterogeneous effects of
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Re-evaluating causal inference: Bias reduction in confounder-effect modifier scenarios Decis. Support Syst. (IF 6.7) Pub Date : 2025-03-13
Xuan Wang, Tamer Oraby, Xi Mao, Geng Sun, Helmut SchneiderPropensity Score Matching (PSM) is a widely used method for estimating causal treatment effects, but its performance can be limited in complex scenarios. This paper examines cases where a confounder also serves as an effect modifier and compares the bias-reduction performance of PSM with Inverse Probability Weighting (IPW). Using the University of California, Berkeley graduate admission data as an
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Optimal advertising strategy for streaming platforms: Whether to purchase external consumer data Decis. Support Syst. (IF 6.7) Pub Date : 2025-03-03
Jiahe Wang, Nan Feng, Haiyang Feng, Minqiang LiBy utilizing consumer behavioral data, targeted ads can enhance the click-through rates (CTRs) but, at the same time, cause consumer privacy concerns. In this paper, we investigate whether a streaming platform should purchase external consumer data to improve ad-targeting levels, whereby it gain revenue from cost-per-mille (CPM) and cost-per-click (CPC) advertising. We explore how advertising intensity
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Balancing the costs and benefits of resilience-based decision making Decis. Support Syst. (IF 6.7) Pub Date : 2025-02-24
Weimar Ardila-Rueda, Alex Savachkin, Daniel Romero-Rodriguez, Jose NavarroMost decision models of system resilience use static, deterministic optimization techniques while focusing on resilience assessment. At present, we lack appropriate decision support methodologies and computational tools that can offer dynamic control of resilience and balance the costs of resilience assurance. This paper presents a stochastic dynamic optimization model, based on an infinite horizon
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Are helpful reviews indeed helpful? Analyzing the information and economic value of contextual cues in user-generated images Decis. Support Syst. (IF 6.7) Pub Date : 2025-02-23
Youngeui Kim, Yang WangWhen shopping online, customers may find user-generated images (UGIs) where existing buyers share their product experiences in an actual setting. Drawing on the constructivist theory of visual perception, we propose a cognitive inference process in which shoppers utilize the background objects in UGIs that contextualize a product (e.g., a snow-covered mountain implying cold weather) to infer its features
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Is ambiguity always adverse? Empirical evidence from the wireless emergency alerts during the pandemic Decis. Support Syst. (IF 6.7) Pub Date : 2025-02-19
Jaeho Myeong, Yongjin Park, Jae-Hyeon AhnWireless emergency alerts (WEAs) have become a crucial information system to notify residents of potential hazards in their vicinity. Using a large transaction dataset, we investigate (1) how WEAs influence offline and online transactions as a proxy to public mobility, and (2) how different types of information in WEAs affect transactions. Our results indicate that WEAs that only notify the occurrence
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Metaverse technology in sustainable supply chain management: Experimental findings Decis. Support Syst. (IF 6.7) Pub Date : 2025-02-14
Kiarash Sadeghi R., Divesh Ojha, Puneet Kaur, Raj V. Mahto, Amandeep DhirThe metaverse is a transformative force in supply chain information systems, particularly in the context of decision-making processes focusing on sustainable development goals. Thus, this study examines: How does the metaverse among stakeholders contribute to the supply chain decision-making processes regarding sustainable development goals? This study is among the first to provide empirical data examining
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Exploring the impact of free live-streamed medical consultation on patient engagement and patient satisfaction in the multistage online consultation process: A quasi-experimental design Decis. Support Syst. (IF 6.7) Pub Date : 2025-02-12
Haochen Song, Xitong Guo, Tianshi WuIn recent years, many online healthcare communities (OHCs) in China introduced the feature of free live-streamed medical consultations (FLSMC), which allows patients to communicate with physicians and have an interactive consultation for free through live streaming. Despite the rapid growth of FLSMC, little is known about whether FLSMC can bring benefits to patients when they have online consultation
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Understanding physicians' noncompliance use of AI-aided diagnosis—A mixed-methods approach Decis. Support Syst. (IF 6.7) Pub Date : 2025-02-10
Jiaoyang Li, Xixi Li, Cheng ZhangDespite the pervasiveness of artificial intelligence (AI) technologies in the healthcare industry, physicians are reluctant to follow the recommendations suggested by AI-aided diagnostic systems. We conceptualize physicians' noncompliance use of AI-aided diagnostic systems and draw on the technology threat avoidance theory (TTAT) to investigate the phenomenon of interest. Specifically, we leverage
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DECEN: A deep learning model enhanced by depressive emotions for depression detection from social media content Decis. Support Syst. (IF 6.7) Pub Date : 2025-02-10
Zhijun Yan, Fei Peng, Dongsong ZhangDepression is a serious and recurrent mental illness that significantly affects an individual's life and the society as a whole. Automatic detection of depression is crucial for early intervention and minimizing negative consequences. Existing studies on building deep learning models for automated depression detection have mainly used post-level emotion polarity (i.e., positive and negative emotions)
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Is seeing the same as doing? An evaluation of vicarious experiences in the metaverse Decis. Support Syst. (IF 6.7) Pub Date : 2025-02-06
Caleb Krieger, Andy Luse, Ghazal Abdolhossein Khani, Rathindra SarathyWith the recent explosion of vicarious experiences in the metaverse (e.g. twitch, YouTube gaming, Facebook gaming, etc.), understanding the underlying mechanism of this phenomenon is key for researchers and practitioners. This research examines the rising phenomenon of vicarious experiences within the metaverse. Using a three-study experimental approach, results show that subjects attain equal levels
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A deep learning–based method to predict the length of stay for patients with traumatic fall injuries in support of physicians' clinical decisions and patient management Decis. Support Syst. (IF 6.7) Pub Date : 2025-02-03
Jiaxuan Peng, Da Xu, Paul Jen-Hwa Hu, Jessica Qiuhua Sheng, Ting-Shuo HuangAccurate estimates of the length of stay (LOS) for patients who suffer traumatic fall injuries are crucial to inform physicians' clinical decisions and patient management. They also have important implications for resource utilization efficiency and cost containment efforts by healthcare organizations. Effective predictions should consider essential relationships across different variables pertaining
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Contending with coronaries: May HIT be with you Decis. Support Syst. (IF 6.7) Pub Date : 2025-02-02
Nirup Menon, Amitava Dutta, Sidhartha DasHealth Information Technology (HIT) is revolutionizing healthcare by serving as the backbone for various decision support activities across the healthcare continuum, particularly within hospital settings. While existing literature highlights its positive impact on patient satisfaction, costs, and quality, its role in complementing other crucial hospital inputs to influence clinical healthcare outcomes
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Should a better-informed manufacturer hold pricing power for the direct channel: The role of consumer reviews Decis. Support Syst. (IF 6.7) Pub Date : 2025-01-31
Musen Xue, Jiahui Guo, Lin FengManufacturers can effectively obtain precise demand information through the utilization of data analysis technologies. These better-informed manufacturers commonly distribute their products not only through traditional offline retailers but also via direct sales channels. In this context, distinct pricing strategies for online channels, namely holding pricing power and giving up pricing power, can
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Tell me a story! Narrative-driven XAI with Large Language Models Decis. Support Syst. (IF 6.7) Pub Date : 2025-01-31
David Martens, James Hinns, Camille Dams, Mark Vergouwen, Theodoros EvgeniouExisting Explainable AI (XAI) approaches, such as the widely used SHAP values or counterfactual (CF) explanations, are arguably often too technical for users to understand and act upon. To enhance comprehension of explanations of AI decisions and the overall user experience, we introduce XAIstories, which leverage Large Language Models (LLMs) to provide narratives about how AI predictions are made:
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Multimodal review helpfulness prediction with a multi-level cognitive reasoning mechanism: A theory-driven graph learning model Decis. Support Syst. (IF 6.7) Pub Date : 2025-01-29
Hai Wei, Ying Yang, Yu-Wang ChenCustomers' perception of review helpfulness entails a cognitive reasoning process influenced by the contextual information of reviews including product descriptions and review neighbors. Current studies on helpfulness prediction primarily focus on static features of individual reviews, neglecting the dynamic interaction among products, reviews and their contextual neighbors. To address this gap, we
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Exploring the motivations behind behavior: A theory-driven deep-learning framework for cyberviolence behavior detection Decis. Support Syst. (IF 6.7) Pub Date : 2025-01-28
Xuelong Chen, Yiping Chen, Guojie YinThe anonymity and convenience of social media platforms enable the public to express and even vent themselves, which drives a surge of cyberviolence behaviors (CVB). Recent advances in machine learning, especially in deep learning, have drastically benefited CVB detection. However, despite the wide use of state-of-the-art deep-learning models, previous studies only analyzed each post/comment for the
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Does the most popular answer lead to the best answer: The moderating roles of tenure, social closeness, and cultural tightness Decis. Support Syst. (IF 6.7) Pub Date : 2025-01-27
Yuxin Cai, Xiayu Chen, Shaobo WeiOnline question and answer (Q&A) communities rely on the general audience or the question asker to determine the best answer. However, limited attention has been directed toward understanding the influence of the general audience-favored answer (i.e., most popular answer) on the question asker-selected best answer (i.e., best answer). This study examines whether and how the general audience-favored
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Disclosure of IT-related risk factors in corporate filings Decis. Support Syst. (IF 6.7) Pub Date : 2025-01-25
Alfred Z. Liu, Angela Xia Liu, Kexin ZhaoThis research investigates the disclosure of IT-related risk factors in U.S. public firms' periodic SEC filings. Drawing upon the Resource-Based View theory, we propose that a firm's IT capability determines the disclosure of its overall IT-related risk factors. We employ a machine learning-enhanced dictionary that captures emerging IT keywords from newly filed corporate reports to quantify the scope
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Enhanced digital embeddedness and bubble mitigation in NFT marketplaces: The impact of rarity rank on user trading behavior Decis. Support Syst. (IF 6.7) Pub Date : 2025-01-23
Lin Yuan, Chaoyue Gao, Alvin Chung Man Leung, Qiang YeAs a nascent market in recent years, the NFT market has been widely scrutinized for its significant market bubble. To help investors make more informed trading decisions, several NFT marketplaces have introduced features that display the rarity information of NFTs directly on their interfaces. Existing literature on the rarity effect suggests that this feature generally increases trading activity.
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An interpretable imbalance ensemble classification method for readmission risk assessment incorporating multi-view perturbation and SHAP analysis Decis. Support Syst. (IF 6.7) Pub Date : 2025-01-23
Shaoze Cui, Ruize Gao, Junwei Kuang, Liang Yang, Huaxin Qiu, Xiaowen WeiIn the domain of medical services, patients are frequently readmitted shortly after discharge due to inadequate discharge planning or relapses of their illnesses. Such occurrences not only deplete valuable medical resources but also compromise patient satisfaction with the medical care they receive. To address this issue, we propose an interpretable imbalance ensemble classification method incorporating
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Panoramic sales insight: Using multimodal fusion to improve the effectiveness of flash sales Decis. Support Syst. (IF 6.7) Pub Date : 2025-01-18
Haoran Wang, Zhen-Song Chen, Mingjie Fang, Yilong Wang, Feng LiuFlash sales are a widely adopted e-commerce marketing strategy that operate over a brief period, offering limited-time discounts, special promotions, or clearance items to create a sense of urgency and promote rapid sales. This study proposes panoramic sales insight (PSI), a multimodal revenue forecasting framework designed to improve the accuracy of revenue predictions for flash sales. Using historical
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Willing and able: Task recommendation with a trade-off of the bilateral benefits for knowledge-intensive crowdsourcing Decis. Support Syst. (IF 6.7) Pub Date : 2025-01-03
Xicheng Yin, Jing Li, Kevin Zhu, Wei Wang, Hongwei WangGiven the “profit-seeking” behavior of task solvers and the “quality-seeking” focus of solution seekers in knowledge-intensive crowdsourcing contests, task recommender systems must manage the trade-off between their respective benefits. This study proposes a multitask deep learning model with a multigate hybrid expert structure to jointly model solver preference and ability, thereby balancing bilateral
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Can causal machine learning reveal individual bid responses of bank customers? — A study on mortgage loan applications in Belgium Decis. Support Syst. (IF 6.7) Pub Date : 2024-12-24
Christopher Bockel-Rickermann, Sam Verboven, Tim Verdonck, Wouter VerbekePersonal loan pricing requires accurate estimates of individual customer behavior, such as the willingness to take out a loan at a given price, the “bid response”. This is challenging due to the nonlinearity of responses hindering the discretionary definition of models, as well as the confoundedness of observational training data. This paper investigates the application of data-driven and machine learning
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Excessive use in the metaverse: The role of multisensory interaction Decis. Support Syst. (IF 6.7) Pub Date : 2024-12-24
Chongyang Chen, Yao-Yu Wang, Kem Z.K. Zhang, Fenghua XieThe metaverse allows users to interact with the real and virtual worlds naturally by stimulating multimodal sensations. Meanwhile, the attractive environments created by the metaverse may also bring challenges such as excessive use. There is a great deal of uncertainty about the undesirable risks of the metaverse. Therefore, this study makes efforts to introduce a theoretical framework and explain
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Decision support through deep reinforcement learning for maximizing a courier's monetary gain in a meal delivery environment Decis. Support Syst. (IF 6.7) Pub Date : 2024-12-20
Weiwen Zhou, Hossein Fotouhi, Elise Miller-HooksMeal delivery is a fast-growing industry supported by couriers participating in the gig economy. This paper takes a single courier's perspective and provides decision support for an individual courier who works at will in repositioning between jobs and order-taking to optimize her profit during a work period. A hybrid discrete-time, discrete-event simulation environment was developed based on data
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The implications of account suspensions on online discussion platforms Decis. Support Syst. (IF 6.7) Pub Date : 2024-12-20
Pattharin Tangwaragorn, Warut Khern-am-nuai, Wreetabrata KarThis study explores the impact of temporary account suspensions on users' engagement in online platforms. Using observational data obtained through a collaboration with a prominent online discussion forum in Asia, we conduct empirical analyses that are guided by regulatory focus theory and reactance theory, and we use both propensity score matching and a difference-in-differences regression analysis
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Impact of multidimensional presence on user well-being in metaverse communities Decis. Support Syst. (IF 6.7) Pub Date : 2024-12-19
Arslan Rafi, Sanjit K. Roy, Mohsin Abdur Rehman, Muhammad Junaid Shahid HasniIn metaverse communities, users engage in various activities, such as socializing, gaming, and exploration. Presence in such communities refers to the feeling of being there and being fully immersed. This study examines the role of various dimensions of presence (e.g., social, spatial, and self) in driving user well-being in metaverse communities. Moreover, the study tests the mediating roles of social
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Metaverse advertising and promotional effectiveness: The route from immersion to joy Decis. Support Syst. (IF 6.7) Pub Date : 2024-12-16
Rahul Kumar, Shubhadeep Mukherjee, Indranil BoseThe emerging technologies, immersive systems, and metaverse are evolving at a rapid pace. These advancements are creating and offering unique opportunities for individuals, platforms, and businesses through virtual interactions. This proliferation is also gathering attention of marketeers and advertising agencies as the metaverse can conduct campaigns with a recreational touch. However, little is known
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Unveiling the metaverse: A comparison of multiple environments Decis. Support Syst. (IF 6.7) Pub Date : 2024-12-16
Sumanta Singha, Kiran Pedada, Pradeep Racherla, Srinivas PingaliThe advent of the metaverse is fundamentally altering the relationship dynamics between brands and users. Brands that successfully navigate this new landscape create deeper engagement and foster lasting brand loyalty. Using a multi-method, multi-study approach, we examine the interplay between user characteristics and brand perception in a real metaverse environment called “Universe”, created by a
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Metaverse adoption for competitive edge: The role of implementation capability & willingness to change Decis. Support Syst. (IF 6.7) Pub Date : 2024-12-16
Georgios S. Bekos, Simos Chari, Davit Marikyan, Savvas PapagiannidisThe metaverse has recently attracted significant attention from the business community as it offers various opportunities for enhanced business value creation. Nevertheless, there is a limited understanding as to why some firms are better able than others to realise the performance benefits afforded by the metaverses. To address this shortcoming, we draw on the ‘organisational excellence’ framework
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From game to beyond game: Exploring the role of 3D rendering technology in user immersion and virtual consumption in the Metaverse Decis. Support Syst. (IF 6.7) Pub Date : 2024-12-15
Guihua Zhang, Sarbottam Bhagat, Sung Ho Lee, Dae Wan Kim, Dan J. KimThe Metaverse is a virtual shared space that merges physical and digital realities, allowing users to have immersive experiences with avatars and interact in various ways such as socializing, gaming, and commerce. Despite ongoing research on rendering technology and its impact on user immersion, empathy, and virtual consumption from a perspective of social needs, the field is still in its infancy.
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Are you caught in the dilemma of metaverse avatars? The impact of individuals' congruity perceptions on paradoxical emotions and actual behaviors Decis. Support Syst. (IF 6.7) Pub Date : 2024-12-14
Xusen Cheng, Shuang Zhang, Jian MouAs the foundation of the metaverse, three-dimensional avatars are increasingly shaping our personal and professional lives. However, a nuanced reading of avatar literature proposes that avatars can exhibit both positive and negative dimensions, leading to a paradoxical phenomenon. This study aims to conceptualize a holistic framework elucidating the intricate interplay between perceptions, emotions
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Integrating direct and indirect views for group recommendation: An inter- and intra-view contrastive learning method Decis. Support Syst. (IF 6.7) Pub Date : 2024-12-11
Xiangyu Li, Xunhua Guo, Guoqing ChenThe growing popularity of online social networking has made it increasingly important to develop group recommender systems (RS) for delivering personalized services to the members of user groups. However, owing to the sparsity of data on group–item interactions (G–I interactions), existing group recommendation methods have concentrated on modeling user–item interactions (U–I interactions), which has
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Can earnings conference calls tell more lies? A contrastive multimodal dialogue network for advanced financial statement fraud detection Decis. Support Syst. (IF 6.7) Pub Date : 2024-12-09
Qi Lu, Wei Du, Shaochen Yang, Wei Xu, J. Leon ZhaoFinancial statement frauds by listed firms pose significant challenges to public investors and jeopardize the stability of financial markets. Previous studies have identified deceptive verbal and vocal cues from earnings conference calls as indicators of financial statement fraud. However, these studies only extracted managers' verbal and vocal cues separately over the entire call, neglecting the utterance-level
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IS/IT Backsourcing decision making - A design science research approach Decis. Support Syst. (IF 6.7) Pub Date : 2024-12-06
Jacky Akoka, Isabelle Comyn-WattiauMany organizations implement outsourcing solutions for information systems and/or information technology (IS/IT). Some of them face problems resulting from dissatisfaction with these outsourcing decisions. Reasons for dissatisfaction include an outsourcing agreement that did not meet expectations, organizational changes, and a loss of control over the business. As a result, companies are rethinking
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Time for a change! Uprooting users embedded in the status quo from habitual decision-making Decis. Support Syst. (IF 6.7) Pub Date : 2024-12-06
Xue Sun, Bo Guo, Yufeng Yang, Yu PanIntroducing the feature of “Buy Again” or “Order Again” is a common practice for online platforms to facilitate consumer repurchases. Although the adoption of these features can cultivate consumers' dependence on focal products and promote habitual purchases, it potentially hinders the promotion of new products and reduces consumer choice diversity. This raises a broader issue of how to inhibit habitual
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Towards sustainable consumption decision-making: Examining the interplay of blockchain transparency and information-seeking in reducing product uncertainty Decis. Support Syst. (IF 6.7) Pub Date : 2024-12-03
Maryam Hina, Najmul Islam, Xin (Robert) LuoTo facilitate the promotion of sustainable consumption decision-making, organizations might employ blockchain technology to offer transparent information regarding the sustainability of their products. Nonetheless, consumers often seek supplementary information from diverse sources. The inconsistent or conflicting information across these sources can complicate the process of making sustainable consumption
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Digitalization of the natural sciences: Design science research and computational science Decis. Support Syst. (IF 6.7) Pub Date : 2024-11-26
Veda C. Storey, Richard L. BaskervilleIn the natural sciences, many research activities now require the support of digital artifacts. This digitalization of science has led to the need to develop essential, specialized, devices and software. Computational science is a branch of science that especially requires such artifacts. This research examines computational science to identify its challenges and successes in developing and applying