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risk management research & development

AVAILABLE TO ADVISE. REVIEW Primary research. GUIDE research proposals. PROVIDE IRB SUPPORT.

AVAILABLE TO ADVISE. REVIEW Primary research. GUIDE research proposals. PROVIDE IRB SUPPORT.

AVAILABLE TO ADVISE. REVIEW Primary research. GUIDE research proposals. PROVIDE IRB SUPPORT.

AVAILABLE TO ADVISE. REVIEW Primary research. GUIDE research proposals. PROVIDE IRB SUPPORT.

AVAILABLE TO ADVISE. REVIEW Primary research. GUIDE research proposals. PROVIDE IRB SUPPORT.

AVAILABLE TO ADVISE. REVIEW Primary research. GUIDE research proposals. PROVIDE IRB SUPPORT.

EXAMPLES OF primary research capabilities

Introduction to THE CONCEPT OF CONFLICTING RISK STRUCTURES!

Introduction to THE CONCEPT OF CONFLICTING RISK STRUCTURES!

Introduction to THE CONCEPT OF CONFLICTING RISK STRUCTURES!

 This RGB-PS LLC research example intends to examine the impact of conflicting risk structures on decision quality within cybersecurity risk management teams and explore how cognitive diversity can serve as a moderating factor. The study was meticulously designed with several safeguards to ensure the integrity and validity of the findings and protect against biases, including the Dunning-Kruger effect. The research employed established theoretical frameworks—Intragroup Conflict Theory, Expectation States Theory, and Social Cognitive Theory—to provide a robust foundation and avoid overestimating novel contributions. Rigorous statistical methods, such as confirmatory factor analysis and partial least squares regression, were utilized to ensure precise measurement and analysis of variables.  

OSOLEASE 2021

why might conflicting risk structures be A PROBLEM?

Introduction to THE CONCEPT OF CONFLICTING RISK STRUCTURES!

Introduction to THE CONCEPT OF CONFLICTING RISK STRUCTURES!

Entry-level practitioners in an environment where conflicting risk structures exist may face several challenges that can hinder their learning. When risk management priorities are misaligned, it creates confusion about the protocols and practices apprentices need to follow, leading to inconsistent training experiences. Additionally, apprentices may struggle with understanding the complexities of balancing technological innovation with security requirements, a nuance that might not be immediately apparent to those new to the field. This environment can exacerbate the Dunning-Kruger effect, where less experienced apprentices might feel overconfident in their understanding, underestimating the importance of integrating cybersecurity with IT processes. 

READ ARTICLE

--- CLINICAL medication reviewS --- nih MARKET RESEARCH

Introduction to THE CONCEPT OF CONFLICTING RISK STRUCTURES!

--- CLINICAL medication reviewS --- nih MARKET RESEARCH

  We are initiating a NIH sanctioned market research effort to explore the issue of infrequent medication reviews, which can lead to adverse drug events and compromise patient safety. Our primary goal is to analyze this problem from the perspective of healthcare practitioners, gathering their insights and experiences to fully understand the scope of the challenges. This research will help us and NIH to assess whether there is a genuine need and desire in the market to develop a solution that improves medication monitoring and reduces the risks of harmful drug interactions. By focusing on thorough problem analysis, we aim to determine the best path forward for enhancing patient safety and improving the flow of information between patients and healthcare providers. 

SEE RESULTS

WHAT factors WERE modeled for CONFLICTING RISK STRUCTURES?

CONFLICTING RISK STRUCTURES

CONFLICTING RISK STRUCTURES

CONFLICTING RISK STRUCTURES

 Conflicting Risk Structures refer to situations where different risk management frameworks, strategies, or priorities within an organization, or between multiple organizations, are at odds with one another. This conflict can arise from various subfactors, including differences in risk tolerance, objectives, regulatory requirements, or approaches to risk assessment and mitigation. 

COGNITIVE DIVERSITY

CONFLICTING RISK STRUCTURES

CONFLICTING RISK STRUCTURES

 Cognitive Diversity refers to the inclusion of people who have different ways of thinking, problem-solving, processing information, and approaching tasks. It encompasses a variety of perspectives and mental models that individuals bring to a group based on their unique experiences, education, skills, cultural backgrounds, and personal characteristics. 

DECISION QUALITY

CONFLICTING RISK STRUCTURES

DECISION QUALITY

 Decision quality refers to the extent to which a decision-making process and its outcomes meet certain standards of effectiveness and reliability. It encompasses the thoroughness, objectivity, and soundness of the decision-making process, ensuring that decisions are well-informed, well-reasoned, and likely to achieve the desired results.

 Decision quality refers to the extent to which a decision-making process and its outcomes meet certain standards of effectiveness and reliability. It encompasses the thoroughness, objectivity, and soundness of the decision-making process, ensuring that decisions are well-informed, well-reasoned, and likely to achieve the desired results. Decision quality focuses on both the process and the outcome, aiming to ensure that the best possible decision is made given the available information, resources, and circumstances. 

WHAT METHODS WERE USED?

example of Research Design

The example dissertation's research design is quantitative, employing a cross-sectional study approach to investigate the relationships between conflicting risk structures, decision quality, and the moderating effects of cognitive diversity within cybersecurity risk management teams.  

Research Design Model

EXAMPLE OF DETERMINING STUDY participants

The study participants were 146 cybersecurity professionals with some level of technical certification and were currently employed in roles related to professional risk management. The selection criteria ensured that all participants had relevant cybersecurity and risk management expertise, allowing for a more accurate assessment of the factors influencing decision quality within this context. The participants' demographic details, such as age, gender, job experience, and educational background, were collected, but the high-level demographic data were not fully detailed in the study. This diverse group of professionals was chosen to explore the moderating effects of cognitive diversity—including expertise diversity and conflict-handling style—on the relationship between conflicting risk structures and decision quality. By targeting participants with substantial knowledge and experience in cybersecurity, the study aimed to enhance the validity and applicability of its findings to real-world settings in the cybersecurity domain. 

Sample Selection

EXAMPLE OF data collection

The data was collected using a survey administered through a panel service provider, Survey Gizmo. The sample included 146 cybersecurity professionals with relevant technical certifications and current employment in some aspect of professional risk management. This sampling strategy ensured that participants had a baseline level of expertise and experience in cybersecurity risk management, enhancing the study's relevance. 

EXAMPLE OF data analysis

The study employed advanced statistical techniques, including Confirmatory Factor Analysis (CFA) and Partial Least Squares (PLS) regression, to test the hypothesized relationships and models. CFA was used to validate the measurement model and ensure the constructs were properly defined and measured. PLS regression helped assess the strength and direction of the relationships between the variables, particularly the moderating effects of cognitive diversity on decision quality. 

EXAMPLE OF MEASURING validity, reliability, and methodological integrity

The research design included specific, testable hypotheses regarding the relationships between team cohesion, intragroup conflict, goal similarity, conflict resolution norms, cognitive diversity, and decision quality. These hypotheses were tested using a structured approach that allowed for the examination of both direct and moderating effects. 

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