Search results
1 – 10 of over 1000Marta Melguizo-Garde and Ana Yetano
International education is one of the largest and fastest growing economic sectors in the world. Degree-seeking students have become a large and growing export opportunity. Asian…
Abstract
International education is one of the largest and fastest growing economic sectors in the world. Degree-seeking students have become a large and growing export opportunity. Asian countries, especially China, are amongst the top countries sending students out, as a result, most countries aim to attract their students. Nevertheless, moving from Asian countries to the western ones is not an easy move. Chinese students face different types of challenges that need to be analysed to smooth their adaptation. This chapter analyses their performance, satisfaction and the challenges – pedagogical, language, cultural – they face to deploy the appropriate strategies to reduce failure and drop-out. Results show that the first 2 years are key for they adaptation. Language is the main barrier, it seems that the time devoted prior to their universities studies and their integration with national students is still a pending task.
Details
Keywords
Michelle Maroto, David Pettinicchio, Lei Chai and Andy Holmes
Although social distancing measures enacted during COVID-19 prevented the spread of the virus and acted as important coping mechanisms during this stressful time, they also…
Abstract
Purpose
Although social distancing measures enacted during COVID-19 prevented the spread of the virus and acted as important coping mechanisms during this stressful time, they also contributed to loneliness and anxiety. The pros and cons of social distancing measures were especially relevant among people with disabilities and chronic health conditions – a high-risk group concerned about infection through contact with non-household members and visiting public places like school, healthcare providers, and work.
Methods/Approach
Drawing on data from a national online survey (N = 1,027) and in-depth virtual interviews (N = 50) with Canadians with disabilities and chronic health conditions, we examine the positive and negative effects of three types of social distancing measures – avoiding public places, transitioning to remote work or school, and avoiding contact with non-household members – on perceptions of increases in anxiety and loneliness during the pandemic.
Findings
We find that the relationships between engaging with social distancing measures and anxiety and loneliness could be positive or negative, with measures acting as both adaptive and maladaptive coping mechanisms. Although avoiding public places or non-household members and transitioning to remote work or school often resulted in increased anxiety and loneliness, respondents also described situations where these measures helped them cope with concerns about catching COVID-19.
Implications
Our findings highlight potential implications for public health policy in allocating different coping resources among marginalized groups during times of crisis and demonstrate the importance of using a social model of stress, coping mechanisms, and mental health.
Details
Keywords
Smart card-based E-payment systems are receiving increasing attention as the number of implementations is witnessed on the rise globally. Understanding of user adoption behavior…
Abstract
Smart card-based E-payment systems are receiving increasing attention as the number of implementations is witnessed on the rise globally. Understanding of user adoption behavior of E-payment systems that employ smart card technology becomes a research area that is of particular value and interest to both IS researchers and professionals. However, research interest focuses mostly on why a smart card-based E-payment system results in a failure or how the system could have grown into a success. This signals the fact that researchers have not had much opportunity to critically review a smart card-based E-payment system that has gained wide support and overcome the hurdle of critical mass adoption. The Octopus in Hong Kong has provided a rare opportunity for investigating smart card-based E-payment system because of its unprecedented success. This research seeks to thoroughly analyze the Octopus from technology adoption behavior perspectives.
Cultural impacts on adoption behavior are one of the key areas that this research posits to investigate. Since the present research is conducted in Hong Kong where a majority of population is Chinese ethnicity and yet is westernized in a number of aspects, assuming that users in Hong Kong are characterized by eastern or western culture is less useful. Explicit cultural characteristics at individual level are tapped into here instead of applying generalization of cultural beliefs to users to more accurately reflect cultural bias. In this vein, the technology acceptance model (TAM) is adapted, extended, and tested for its applicability cross-culturally in Hong Kong on the Octopus. Four cultural dimensions developed by Hofstede are included in this study, namely uncertainty avoidance, masculinity, individualism, and Confucian Dynamism (long-term orientation), to explore their influence on usage behavior through the mediation of perceived usefulness.
TAM is also integrated with the innovation diffusion theory (IDT) to borrow two constructs in relation to innovative characteristics, namely relative advantage and compatibility, in order to enhance the explanatory power of the proposed research model. Besides, the normative accountability of the research model is strengthened by embracing two social influences, namely subjective norm and image. As the last antecedent to perceived usefulness, prior experience serves to bring in the time variation factor to allow level of prior experience to exert both direct and moderating effects on perceived usefulness.
The resulting research model is analyzed by partial least squares (PLS)-based Structural Equation Modeling (SEM) approach. The research findings reveal that all cultural dimensions demonstrate direct effect on perceived usefulness though the influence of uncertainty avoidance is found marginally significant. Other constructs on innovative characteristics and social influences are validated to be significant as hypothesized. Prior experience does indeed significantly moderate the two influences that perceived usefulness receives from relative advantage and compatibility, respectively. The research model has demonstrated convincing explanatory power and so may be employed for further studies in other contexts. In particular, cultural effects play a key role in contributing to the uniqueness of the model, enabling it to be an effective tool to help critically understand increasingly internationalized IS system development and implementation efforts. This research also suggests several practical implications in view of the findings that could better inform managerial decisions for designing, implementing, or promoting smart card-based E-payment system.
Details
Keywords
Shakeeb Khan, Arnaud Maurel and Yichong Zhang
We study the informational content of factor structures in discrete triangular systems. Factor structures have been employed in a variety of settings in cross-sectional and panel…
Abstract
We study the informational content of factor structures in discrete triangular systems. Factor structures have been employed in a variety of settings in cross-sectional and panel data models, and in this chapter we formally quantify their identifying power in a bivariate system often employed in the treatment effects literature. Our main findings are that imposing a factor structure yields point-identification of parameters of interest, such as the coefficient associated with the endogenous regressor in the outcome equation, under weaker assumptions than usually required in these models. In particular, we show that a “non-standard” exclusion restriction that requires an explanatory variable in the outcome equation to be excluded from the treatment equation is no longer necessary for identification, even in cases where all of the regressors from the outcome equation are discrete. We also establish identification of the coefficient of the endogenous regressor in models with more general factor structures, in situations where one has access to at least two continuous measurements of the common factor.
Details
Keywords
This chapter explores a descriptive theory of multidimensional travel behaviour, estimation of quantitative models and demonstration in an agent-based microsimulation.
Abstract
Purpose
This chapter explores a descriptive theory of multidimensional travel behaviour, estimation of quantitative models and demonstration in an agent-based microsimulation.
Theory
A descriptive theory on multidimensional travel behaviour is conceptualised. It theorizes multidimensional knowledge updating, search start/stopping criteria and search/decision heuristics. These components are formulated or empirically modelled and integrated in a unified and coherent approach.
Findings
The theory is supported by empirical observations and the derived quantitative models are tested by an agent-based simulation on a demonstration network.
Originality and value
Based on artificially intelligent agents, learning and search theory and bounded rationality, this chapter makes an effort to embed a sound theoretical foundation for the computational process approach and agent-based micro-simulations. A pertinent new theory is proposed with experimental observations and estimations to demonstrate agents with systematic deviations from the rationality paradigm. Procedural and multidimensional decision-making are modelled. The numerical experiment highlights the capabilities of the proposed theory in estimating rich behavioural dynamics.
Details
Keywords
Michael A. Merz, Dana L. Alden, Wayne D. Hoyer and Kalpesh Kaushik Desai
John Chao, Myungsup Kim and Donggyu Sul
This paper proposes a new class of estimators for the autoregressive coefficient of a dynamic panel data model with random individual effects and nonstationary initial condition…
Abstract
This paper proposes a new class of estimators for the autoregressive coefficient of a dynamic panel data model with random individual effects and nonstationary initial condition. The new estimators we introduce are weighted averages of the well-known first difference (FD) GMM/IV estimator and the pooled ordinary least squares (POLS) estimator. The proposed procedure seeks to exploit the differing strengths of the FD GMM/IV estimator relative to the pooled OLS estimator. In particular, the latter is inconsistent in the stationary case but is consistent and asymptotically normal with a faster rate of convergence than the former when the underlying panel autoregressive process has a unit root. By averaging the two estimators in an appropriate way, we are able to construct a class of estimators which are consistent and asymptotically standard normal, when suitably standardized, in both the stationary and the unit root case. The results of our simulation study also show that our proposed estimator has favorable finite sample properties when compared to a number of existing estimators.
Details