50 research outputs found
Linking Distributive and Procedural Justice to Employee Engagement Through Social Exchange: A Field Study in India
Research linking justice perceptions to employee outcomes has referred to social exchange as its central theoretical premise. We tested a conceptual model linking distributive and procedural justice to employee engagement through social exchange mediators, namely, perceived organizational support and psychological contract, among 238 managers and executives from manufacturing and service sector firms in India. Findings suggest that perceived organizational support mediated the relationship between distributive justice and employee engagement, and both perceived organizational support and psychological contract mediated the relationship between procedural justice and employee engagement. Theoretical and practical implications with respect to organizational functions are discussed
Rethinking PSHA
Since the early 1980s seismic hazard assessment in New Zealand has been based on Probabilistic
Seismic Hazard Analysis (PSHA). The most recent version of the New Zealand National Seismic Hazard
Model, a PSHA model, was published by Stirling et al, in 2012. This model follows standard PSHA
principals and combines a nation-wide model of active faults with a gridded point-source model based on
the earthquake catalogue since 1840. These models are coupled with the ground-motion prediction
equation of McVerry et al (2006). Additionally, we have developed a time-dependent clustering-based
PSHA model for the Canterbury region (Gerstenberger et al, 2014) in response to the Canterbury
earthquake sequence.
We are now in the process of revising that national model. In this process we are investigating
several of the fundamental assumptions in traditional PSHA and in how we modelled hazard in the past.
For this project, we have three main focuses: 1) how do we design an optimal combination of multiple
sources of information to produce the best forecast of earthquake rates in the next 50 years: can we
improve upon a simple hybrid of fault sources and background sources, and can we better handle the
uncertainties in the data and models (e.g., fault segmentation, frequency-magnitude distributions,
time-dependence & clustering, low strain-rate areas, and subduction zone modelling)? 2) developing
revised and new ground-motion predictions models including better capturing of epistemic uncertainty â a
key focus in this work is developing a new strong ground motion catalogue for model development; and 3)
how can we best quantify if changes we have made in our modelling are truly improvements? Throughout
this process we are working toward incorporating numerical modelling results from physics based
synthetic seismicity and ground-motion models
ncRNA-Class Web Tool: Non-coding RNA Feature Extraction and Pre-miRNA Classification Web Tool
Part 8: First Workshop on Algorithms for Data and Text Mining in Bioinformatics (WADTMB 2012)International audienceUntil recently, it was commonly accepted that most genetic information is transacted by proteins. Recent evidence suggests that the majority of the genomes of mammals and other complex organisms are in fact transcribed into non-coding RNAs (ncRNAs), many of which are alternatively spliced and/or processed into smaller products. Non coding RNA genes analysis requires the calculation of several sequential, thermodynamical and structural features. Many independent tools have already been developed for the efficient calculation of such features but to the best of our knowledge there does not exist any integrative approach for this task. The most significant amount of existing work is related to the miRNA class of non-coding RNAs. MicroRNAs (miRNAs) are small non-coding RNAs that play a significant role in gene regulation and their prediction is a challenging bioinformatics problem. Non-coding RNA feature extraction and pre-miRNA classification Web Tool (ncRNA-class Web Tool) is a publicly available web tool (http://150.140.142.24:82/Default.aspx) which provides a user friendly and efficient environment for the effective calculation of a set of 58 sequential, thermodynamical and structural features of non-coding RNAs, plus a tool for the accurate prediction of miRNAs