MODERATING AND MEDIATING EFFECTS IN CAUSAL MODELS
نویسندگان
چکیده
منابع مشابه
Moderating and mediating effects in causal models.
This article explains causal relationships in conceptual models of mental health phenomena. Direct, moderating, mediating, and reciprocal effects among variables are defined, appropriate statistical analyses are described, and the correct interpretations of moderating versus mediating effects are discussed. Examples are provided that will help the reader to distinguish between moderating and me...
متن کاملModerating and Mediating Effects of Team Identification in Regard to Causal Attributions and Summary Judgments Following a Game Outcome
Fans’ causal attributions for a game outcome refer to their assessments of the underlying reasons for why things turned out as they did. We investigate the extent to which team identification moderates fans’ attributional responses to a game outcome so as to produce a self-serving bias that favors the preferred team. Also explored is the ability of team identification to mediate the effect of a...
متن کاملResilience and burden in caregivers of older adults: moderating and mediating effects of perceived social support
BACKGROUND The burden of caring for an older adult can be a form of stress and influence caregivers' daily lives and health. Previous studies have reported that resilience and social support play an important role in reducing physical and psychological burden in caregivers. Thus, the present study aimed to examine whether perceived social support served as a possible protective factor of burden...
متن کاملNegotiation for Calculating Causal Effects in Bi-Agent Causal Models
In this paper we introduce the paradigm of multi-agent causal models (MACM), which are an extension of causal graphical models to a setting where there is no longer one single computational entity (agent) observing or not observing all the domain variables V. Instead there are several agents each having access to non-disjoint subsets of V. The incentive for introducing cooperative multiagent mo...
متن کاملIdentification of Causal Effects in Multi-Agent Causal Models
In this paper we introduce multi-agent causal models (MACMs) which are an extension of causal Bayesian networks to a multi-agent setting. Instead of 1 single agent modeling the entire domain, there are several agents each modeling non-disjoint subsets of the domain. Every agent has a causal model, determined by an acyclic causal diagram and a joint probability distribution over its observed var...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
ژورنال
عنوان ژورنال: Issues in Mental Health Nursing
سال: 2001
ISSN: 1096-4673,0161-2840
DOI: 10.1080/016128401750158768