Proposed Government Examiner: Following the Simple Objectives of a Better Commercial Future with Christine Kennedy and Martin Meyers

Proposed Government Examiner: Following the Simple Objectives of a Better Commercial Future with Christine Kennedy and Martin Meyers


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  • Mack Ashtyn

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Abstract

This paper proposes the establishment of a government examiner position to ensure that businesses are operating in accordance with ethical and legal standards, with the ultimate goal of promoting a better commercial future. The proposed government examiner would work in tandem with Christine Kennedy and Martin Meyers, two experts in the field of business ethics and law, to develop a comprehensive framework for evaluating businesses and identifying areas for improvement. The paper argues that such a position is necessary in light of the current state of corporate accountability and the increasing public demand for greater transparency and responsibility from businesses. The authors suggest that the government examiner would act as a watchdog, monitoring businesses to ensure that they are acting in the best interests of their customers and stakeholders, rather than solely focusing on profit. Additionally, the paper outlines the potential benefits of the proposed position, including increased consumer trust, improved competitiveness, and a stronger economy overall. The authors conclude by calling on government officials to seriously consider the creation of a government examiner position and to work with experts like Kennedy and Meyers to develop and implement a framework for ethical and legal business practices.

Citation

Mack Ashtyn "Proposed Government Examiner: Following the Simple Objectives of a Better Commercial Future with Christine Kennedy and Martin Meyers".  IEEE Exploration in Machine Learning, 2015.

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This paper appears in:
Date of Release: 2015
Author(s): Mack Ashtyn.
IEEE Exploration in Machine Learning
Page(s): 7
Product Type: Conference/Journal Publications