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Team Name:

E-Falcons


Team Members:


Evidence of Work

EduPath

Project Info

E-Falcons thumbnail

Team Name


E-Falcons


Team Members


2 members with unpublished profiles.

Project Description


  1. Young Australians face multiple challenges in choosing post-school education and vocational training options.

Decisions are influenced by factors such as:
- Prior educational attainment.
- Employment history.
- Financial situation.
- Health conditions.
- Geographic location.
- Family and peer influences.
- Cultural expectations.
- Access to digital resources.

  1. Financial constraints often deter students from higher education due to concerns about student debt and the need to work.

  2. Students in remote areas face limited access to educational institutions.

  3. Family and cultural pressures shape decisions, leading to paths aligned with societal expectations.

  4. Traditional decision-making models fail to account for individual circumstances, leading to generalized solutions.

  5. There is a need for AI-driven models that predict education choices and provide insights into potential employment and financial outcomes, enabling policymakers to design more targeted interventions.

Project Description:

Developing a prototype that uses AI and data analytics to predict young Australians’ education and vocational training choices.

The prototype will:
- Analyze factors such as financial, educational, and geographic conditions.
- Use machine learning to forecast future decisions on education pathways.
- Provide insights into potential employment and financial outcomes based on chosen education paths.
- Enable educators, career advisors, and policymakers to create targeted, data-driven interventions.

Our Mission:
- To empower young Australians by providing data-driven insights into their education and career decisions.
- To develop a tool that enables personalized guidance for students based on their individual circumstances.
- To support policymakers in creating equitable education policies by leveraging AI and government data.
- To foster a future where all young Australians have the information they need to make informed education choices and achieve better long-term employment outcomes.

Goals:

  1. Build a Functional Prototype: Develop an AI-powered tool that predicts education and vocational training choices.

  2. Leverage Data: Use government and public data to analyze key factors affecting education decisions.

  3. Generate Predictive Insights: Provide predictive insights into students’ potential career and financial outcomes based on their choices.

  4. Enhance Decision-Making: Help policymakers and educators design more tailored interventions to improve educational accessibility.

  5. Improve Equity in Education: Focus on providing personalized recommendations to students from diverse socio-economic and geographic backgrounds, ensuring greater access to education for all.

Outcomes:

  1. Data-Driven Decision-Making: Policymakers and educators will have access to detailed, data-driven insights on students’ education and career choices, helping them design more effective policies and interventions.

  2. Improved Access to Education: The tool will help identify barriers to education and vocational training, leading to more targeted efforts to improve access, particularly for disadvantaged or remote students.

  3. Personalized Education Guidance: Students will receive tailored recommendations for educational and career paths based on their individual circumstances, improving their chances of success.

  4. Long-Term Employment and Financial Success: By choosing better-suited educational pathways, students can achieve better employment prospects and financial outcomes in the long term.

  5. Informed Policy Design: The predictive insights generated by the tool will help shape future education policies, promoting a more equitable and informed approach to education planning.


#educationaccess #vocationaltraining #vetaustralia #postschoolchoices #apprenticeships #educationpathways #youthemployment #financialbarriers #geographicalaccess #policyinsights #edupathapp #govhack2024 #educationdataanalysis #datadriveneducation #educationequity #educationaccessindex #ncver #absdata #censusdata #youthinclusion #educationandwork

Data Story


Data Story: Understanding the Factors Influencing Post-School Education Choices in Australia

The Challenge and Goals
The challenge lies in investigating how different factors influence the decisions of young Australians regarding post-school education, VET, and apprenticeships. Factors include prior educational attainment, employment history, financial situation, health conditions (including disabilities), housing situation, and proximity to universities or training centers. Our goal is to develop a comprehensive data-driven index system to better understand these influences and help optimize educational support strategies for young Australians.

Data Gathering and Preparation
To address this challenge, we have gathered the following key datasets:
• Educational attainment data.
• Employment statistics (both current and historical).
• Financial and housing data relevant to young people.
• Health-related data, including information on disabilities.
• Geospatial data on proximity to educational institutions, universities, and training centers.
These datasets form the foundation of our analysis, allowing us to assess how these factors interrelate and influence young people’s choices regarding post-school education.

Developing the Education Access Index (EAI)
The Education Access Index (EAI) is a comprehensive metric designed to quantify the accessibility and likelihood of young Australians choosing specific post-school education pathways, such as university, Vocational Education and Training (VET), or apprenticeships. The EAI combines multiple factors that influence these decisions, providing a unified score that highlights areas and individuals who may face barriers in accessing education and training opportunities.

Key Components of the EAI
The EAI is composed of five key factors, each contributing to the overall score. These factors are weighted based on their relative importance in influencing educational decisions:
1. Educational Background Score (EBS)
o Definition: This score reflects an individual's prior educational attainment, such as high school completion or previous vocational training.
o Calculation: A higher score is assigned to individuals with a stronger educational background (e.g., completion of high school or equivalent qualifications).
o Rationale: Individuals with higher educational backgrounds are more likely to pursue advanced studies, such as university, while those with lower attainment may prefer vocational training or apprenticeships.
Formula:

  1. Employment Stability Score (ESS)
    o Definition: This score measures an individual's current employment status and their employment history.
    o Calculation: Scores are higher for individuals with stable employment histories or current full-time employment. Unemployed individuals receive a lower score.
    o Rationale: Employment status influences the ability to afford education or take time off to study. Those with stable jobs may be inclined to upskill, while unemployed individuals might seek job-ready qualifications through VET or apprenticeships.
    Formula:

  2. Financial Situation Score (FSS)
    o Definition: This score evaluates an individual's financial capacity, including income level, access to financial aid, and family support.
    o Calculation: Individuals with higher incomes, or those with access to financial aid (scholarships, government support), receive a higher score. Those in financial distress or without financial aid receive a lower score.
    o Rationale: Financial constraints can limit access to higher education, particularly for university pathways. Those with limited financial resources may prefer less costly options like VET or apprenticeships.
    Formula:

  3. Health and Disability Score (HDS)
    o Definition: This score reflects any physical or mental health conditions that may limit an individual's ability to pursue education, particularly in-person or full-time education.
    o Calculation: Individuals with no health issues receive the highest score, while those with significant health conditions that limit their educational options receive a lower score.
    o Rationale: Health conditions, including disabilities, can restrict the type of education that is accessible. For example, individuals with disabilities might prefer flexible or online learning pathways, while those in good health may have a wider range of options.
    Formula:

  4. Proximity Access Score (PAS)
    o Definition: This score measures the geographic proximity of an individual to post-school education institutions, including universities, TAFE, and VET centers.
    o Calculation: Individuals living near education hubs receive a higher score, while those in rural or remote areas receive a lower score.
    o Rationale: Proximity to educational institutions plays a significant role in determining accessibility, particularly for in-person programs. Remote individuals may be more reliant on online options or may face higher barriers to accessing education.
    Formula:

Overall EAI Calculation
The overall Education Access Index (EAI) is a weighted combination of these five factors. Each factor is assigned a weight based on its relative importance, reflecting the impact it has on education accessibility. The formula for the EAI is:

Where:
• are the weights for each score, determined based on empirical analysis or expert opinion.
o Proposed Weights:
 Educational Background Score (EBS): 25%
 Employment Stability Score (ESS): 20%
 Financial Situation Score (FSS): 25%
 Health and Disability Score (HDS): 15%
 Proximity Access Score (PAS): 15%

Interpretation of the EAI
• Higher EAI Scores: Individuals or regions with higher EAI scores face fewer barriers to accessing post-school education. These areas may have strong educational backgrounds, financial stability, proximity to educational institutions, and minimal health constraints.
• Lower EAI Scores: Individuals or regions with lower EAI scores face significant barriers, such as financial instability, remote locations, health challenges, or limited employment history. These areas should be targeted for additional support, such as scholarships, improved transport links, or online education initiatives.

Strategic Deployment Based on EAI Insights
The EAI allows policymakers and educational institutions to:
• Identify regions and demographics with low accessibility to education.
• Prioritize interventions, such as financial aid, transport solutions, or increased online learning opportunities, to support individuals in low-scoring areas.
• Tailor educational offerings based on the most critical factors affecting accessibility in each region (e.g., improving local VET programs for rural areas or providing more financial aid in low-income communities).
By using the Education Access Index, stakeholders can make informed decisions to reduce educational inequities and ensure that young Australians from diverse backgrounds have the opportunity to pursue the education and training paths that best suit their needs and circumstances.


Evidence of Work

Video

Homepage

Team DataSets

Census data

Data Set

Education and Work, Australia

Data Set

Melbourne Institute: Applied Economic & Social Research

Data Set

The National Centre for Vocational Education Research (NCVER) - Data Builder

Data Set

Qualification and Work

Data Set

Challenge Entries

Factors that influence education, skills and training choices of young people

What factors impact the decisions of young people to commence and complete post school studies (Vocational Education and Training or higher education), including those that commence and complete an apprenticeship?

#Study success: Choosing the right study paths

Eligibility: Open to participants including university students and professional researchers

Go to Challenge | 17 teams have entered this challenge.