2322340
Project Grant
Overview
Grant Description
Sbir Phase I: Sown to Grow - Measuring Growth in Trusting Relationships Between Students and Educators with Natural Language Processing and Machine Learning Technologies -The Broader/Commercial Impact of This Small Business Innovation Research (SBIR) Phase I Project Seeks to Help Educators to Develop Deeper Relationships with Their Students, Assist Schools in Identifying Students Who Lack Strong Relationships and Need Additional Support, and Help School Districts Understand the Emotional Health and Relationship Strength of Their Schools.
Student Emotional Well-Being, Student Absenteeism, and Teacher Burnout Are Some of the Most Pressing Problems Facing K-12 Education Today. A Significant Body of Research Shows That Positive Student-Teacher Relationships Help Students Adjust to School, Contribute to Social Skill Development, Promote Academic Performance and Resiliency, Decrease Absenteeism, and Foster Engagement.
Schools Struggle with Relationship Building at Scale - It Takes Time to Form Connections, Not All Students Are Willing to Open Up, and Teachers Need Help and Training on Understanding and Responding to the Varied Experiences and Needs of Their Students. This Project, If Successful, Will Help Schools Address These Challenges at Scale.
Additionally, the Data from This Project Will Help Teachers Contribute to Learning Science and Behavioral Health Research, While Providing a Blueprint to the Education Technology Industry on How to Implement Advanced Technology in an Ethical and Transparent Manner That Augments, Rather Than Replaces, Existing Education Structures and Systems.
This Project Builds an Innovative Technology That Will Understand and Measure the Strength of the Student-Teacher Relationships at Scale. The Technology Will Develop New Frameworks for Defining Trusting Relationships Based on the Depth of Student Reflections, Teacher Responses, and How Responses Change and Grow Week Over Week.
Advanced Natural Language Processing (NLP) and Machine Learning (ML) Techniques Will Model These Frameworks Based on Real Student-Teacher Interactions. NLP Typically Focuses on Using Models to Understand Text Inputs and Predict/Generate Responses. Through This Project, the Team Seeks to Use New NLP/ML Techniques to Understand and Assess the Interactions and Levels of Trust Between Individuals.
The NLP/ML Models Will Analyze the Depth of Student Reflections and Interpret the Nature of the Teacher Responses Separately. The Output of These Two Models Will Then Be Combined to Understand the Strength of Student-Teacher Relationship by Creating a Student-Teacher Relationship Trust Metric. This Metric Will Help Understand Student-Teacher Relationships at Scale Across Schools and Districts All Over the Country.
This Award Reflects NSF's Statutory Mission and Has Been Deemed Worthy of Support Through Evaluation Using the Foundation's Intellectual Merit and Broader Impacts Review Criteria.- Subawards Are Not Planned for This Award.
Student Emotional Well-Being, Student Absenteeism, and Teacher Burnout Are Some of the Most Pressing Problems Facing K-12 Education Today. A Significant Body of Research Shows That Positive Student-Teacher Relationships Help Students Adjust to School, Contribute to Social Skill Development, Promote Academic Performance and Resiliency, Decrease Absenteeism, and Foster Engagement.
Schools Struggle with Relationship Building at Scale - It Takes Time to Form Connections, Not All Students Are Willing to Open Up, and Teachers Need Help and Training on Understanding and Responding to the Varied Experiences and Needs of Their Students. This Project, If Successful, Will Help Schools Address These Challenges at Scale.
Additionally, the Data from This Project Will Help Teachers Contribute to Learning Science and Behavioral Health Research, While Providing a Blueprint to the Education Technology Industry on How to Implement Advanced Technology in an Ethical and Transparent Manner That Augments, Rather Than Replaces, Existing Education Structures and Systems.
This Project Builds an Innovative Technology That Will Understand and Measure the Strength of the Student-Teacher Relationships at Scale. The Technology Will Develop New Frameworks for Defining Trusting Relationships Based on the Depth of Student Reflections, Teacher Responses, and How Responses Change and Grow Week Over Week.
Advanced Natural Language Processing (NLP) and Machine Learning (ML) Techniques Will Model These Frameworks Based on Real Student-Teacher Interactions. NLP Typically Focuses on Using Models to Understand Text Inputs and Predict/Generate Responses. Through This Project, the Team Seeks to Use New NLP/ML Techniques to Understand and Assess the Interactions and Levels of Trust Between Individuals.
The NLP/ML Models Will Analyze the Depth of Student Reflections and Interpret the Nature of the Teacher Responses Separately. The Output of These Two Models Will Then Be Combined to Understand the Strength of Student-Teacher Relationship by Creating a Student-Teacher Relationship Trust Metric. This Metric Will Help Understand Student-Teacher Relationships at Scale Across Schools and Districts All Over the Country.
This Award Reflects NSF's Statutory Mission and Has Been Deemed Worthy of Support Through Evaluation Using the Foundation's Intellectual Merit and Broader Impacts Review Criteria.- Subawards Are Not Planned for This Award.
Awardee
Funding Goals
THE GOAL OF THIS FUNDING OPPORTUNITY, "NSF SMALL BUSINESS INNOVATION RESEARCH (SBIR)/ SMALL BUSINESS TECHNOLOGY TRANSFER (STTR) PROGRAMS PHASE I", IS IDENTIFIED IN THE LINK: HTTPS://WWW.NSF.GOV/PUBLICATIONS/PUB_SUMM.JSP?ODS_KEY=NSF23515
Grant Program (CFDA)
Awarding / Funding Agency
Place of Performance
Oakland,
California
94612-2124
United States
Geographic Scope
Single Zip Code
Sown To Grow was awarded
Project Grant 2322340
worth $275,000
from National Science Foundation in August 2023 with work to be completed primarily in Oakland California United States.
The grant
has a duration of 1 year and
was awarded through assistance program 47.084 NSF Technology, Innovation, and Partnerships.
The Project Grant was awarded through grant opportunity NSF Small Business Innovation Research / Small Business Technology Transfer Phase I Programs.
SBIR Details
Research Type
SBIR Phase I
Title
SBIR Phase I:Sown To Grow - Measuring Growth in Trusting Relationships between Students and Educators with Natural Language Processing and Machine Learning Technologies
Abstract
The broader/commercial impact of this Small Business Innovation Research (SBIR) Phase I project seeks to help educators to develop deeper relationships with their students, assist schools in identifying students who lack strong relationships and need additional support, and help school districts understand the emotional health and relationship strength of their schools. Student emotional well-being, student absenteeism, and teacher burnout are some of the most pressing problems facing K-12 education today. A significant body of research shows that positive student-teacher relationships help students adjust to school, contribute to social skill development, promote academic performance and resiliency, decrease absenteeism, and foster engagement. Schools struggle with relationship building at scale - it takes time to form connections, not all students are willing to open up, and teachers need help and training on understanding and responding to the varied experiences and needs of their students. This project, if successful, will help schools address these challenges at scale. Additionally, the data from this project will help teachers contribute to learning science and behavioral health research, while providing a blueprint to the education technology industry on how to implement advanced technology in an ethical and transparent manner that augments, rather than replaces, existing education structures and systems._x000D_ _x000D_ This project builds an innovative technology that will understand and measure the strength of the student-teacher relationships at scale. The technology will develop new frameworks for defining trusting relationships based on the depth of student reflections, teacher responses, and how responses change and grow week over week. Advanced natural language processing (NLP) and machine learning (ML) techniques will model these frameworks based on real student-teacher interactions.NLP typically focuses on using models to understand text inputs and predict/generate responses. Through this project, the team seeks to use new NLP/ML techniques to understand and assess the interactions and levels of trust between individuals. The NLP/ML models will analyze the depth of student reflections and interpret the nature of the teacher responses separately. The output of these two models will then be combined to understand the strength of student-teacher relationship by creating a student-teacher relationship trust metric. This metric will help understand student-teacher relationships at scale across schools and districts all over the country._x000D_ _x000D_ This award reflects NSF's statutory mission and has been deemed worthy of support through evaluation using the Foundation's intellectual merit and broader impacts review criteria.
Topic Code
LC
Solicitation Number
NSF 23-515
Status
(Complete)
Last Modified 9/5/23
Period of Performance
8/1/23
Start Date
7/31/24
End Date
Funding Split
$275.0K
Federal Obligation
$0.0
Non-Federal Obligation
$275.0K
Total Obligated
Activity Timeline
Additional Detail
Award ID FAIN
2322340
SAI Number
None
Award ID URI
SAI EXEMPT
Awardee Classifications
Small Business
Awarding Office
491503 TRANSLATIONAL IMPACTS
Funding Office
491503 TRANSLATIONAL IMPACTS
Awardee UEI
GYZAA15MJKZ5
Awardee CAGE
83JJ9
Performance District
CA-12
Senators
Dianne Feinstein
Alejandro Padilla
Alejandro Padilla
Budget Funding
Federal Account | Budget Subfunction | Object Class | Total | Percentage |
---|---|---|---|---|
Research and Related Activities, National Science Foundation (049-0100) | General science and basic research | Grants, subsidies, and contributions (41.0) | $275,000 | 100% |
Modified: 9/5/23