scholarly journals An actor-model based bottom-up simulation — An experiment on Indian demonetisation initiative

Author(s):  
Souvik Barat ◽  
Vinay Kulkarni ◽  
Tony Clark ◽  
Balbir Barn
Keyword(s):  
2003 ◽  
Vol 12 (03) ◽  
pp. 227-248 ◽  
Author(s):  
Henning Christiansen ◽  
Veronica Dahl

We propose an abductive model based on Constraint Handling Rule Grammars (CHRGs) for detecting and correcting errors in problem domains that can be described in terms of strings of words accepted by a logic grammar. We provide a proof of concept for the specific problem of detecting and repairing natural language errors, in particular, those concerning feature agreement. Our methodology relies on grammar and string transformation in accordance with a user-defined dictionary of possible repairs. This transformation also serves as top-down guidance for our essentially bottom-up parser. With respect to previous approaches to error detection and repair, including those that also use constraints and/or abduction, our methodology is surprisingly simple while far-reaching and efficient.


2019 ◽  
Vol 28 (1) ◽  
pp. 41-42

Purpose A Danish researcher reviewed the literature on ambidexterity in order to develop an “innovation capacity building” framework. Design/methodology/approach The researcher proposed a bottoms-up model based around a feedback loop between the management team and employees. Findings The theory is that the process enables employees to move to a more ambidextrous culture through an organic process of self-learning. Originality/value The author said there was a lack of analysis in the existing literature about the process of creating an ambidextrous culture.


Author(s):  
Safaà Hachana ◽  
Frédéric Cuppens ◽  
Nora Cuppens-Boulahia ◽  
Vijay Atluri ◽  
Stephane Morucci
Keyword(s):  

Author(s):  
SUNGHO KIM ◽  
GIJEONG JANG ◽  
WANG-HEON LEE ◽  
IN SO KWEON

This paper presents a combined model-based 3D object recognition method motivated by the robust properties of human vision. The human visual system (HVS) is very efficient and robust in identifying and grabbing objects, in part because of its properties of visual attention, contrast mechanism, feature binding, multiresolution and part-based representation. In addition, the HVS combines bottom-up and top-down information effectively using combined model representation. We propose a method for integrating these aspects under a Monte Carlo method. In this scheme, object recognition is regarded as a parameter optimization problem. The bottom-up process initializes parameters, and the top-down process optimizes them. Experimental results show that the proposed recognition model is feasible for 3D object identification and pose estimation.


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