Difference between revisions of "Text Analytics for Predicting Crisis Events in Veterans"

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(Milestones:)
(Milestones:)
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|Week 1: Orientation
 
|Week 1: Orientation
 
|
 
|
*
+
*Meet with REU students and mentors
 +
*Learn about introductory data science topics
 +
*Meet with my mentor to talk about the project
 
|-
 
|-
|Week 2:
+
|Week 2: Android/iOS programming
 
|
 
|
*
+
*Continue programming feedback activity (Android)
 +
*Continue programming serverside feedback activity (Php, mysql)
 +
*Possibly start programming iOS depending on time
 +
*TBD: Collect data from apps
 
|-
 
|-
|Week 3:
+
|Week 3: Group Messaging
 
|
 
|
*
+
*Read articles about implementing a group messaging system
 +
*Find best practices for implementing one
 +
*TBD: Collect data from the system
 
|-
 
|-
|Week 4:
+
|Week 4: Natural Language Processing
 
|
 
|
*
+
*Read articles about NLP
 +
*Find best practices for implementing one
 +
*Practice implementing NLP with a kaggle dataset
 
|-
 
|-
 
|Week 5:
 
|Week 5:
Line 50: Line 59:
 
*
 
*
 
|-
 
|-
|Week 6:
+
|Week 6: TBD - Collect data
 
|
 
|
*
+
*Hopefully have veterans use apps to get data
 +
*Will update wiki when I know we'll have veterans
 
|-
 
|-
|Week 7:
+
|Week 7: NLP on Data
 
|
 
|
*
+
*Using the data, create a ML alg that uses NLP
 +
*Use survey data, feedback data, and group message data
 
|-
 
|-
|Week 8:
+
|Week 8: Research Paper
 
|
 
|
*
+
*Plan to work on the paper throughout the whole summer, but this week will be used for writing the majority of my paper and refining it since I will have my data and ML alg output
 +
 
 
|-
 
|-
|Week 9:
+
|Week 9: Poster
 
|
 
|
*
+
*Create poster by taking info from paper
 
|-
 
|-
|Week 10:
+
|Week 10: Finale
 
|
 
|
*
+
*Finish up critiquing paper/poster
 +
*Present poster
 
|}
 
|}

Revision as of 20:03, 5 June 2020

Student: Wylie Frydrychowicz
Mentor: Dr. Praveen Madiraju

Project Description:

Veterans can have a hard time returning to civilized life. They can end up in various crises such as arrest, hospitalization, relapse, or angry outbursts. We want to help the veterans by predicting if they will be in crisis.

Project Goal:

Using data we collect from mobile applications that we built and continue to build, we want to create a machine learning algorithm that uses NLP (Natural Language Processing) to predict crisis events in veterans.

Summary of Milestones:

  • Read research articles about:
    • Text/group messaging systems
    • Natural language processing
    • Veteran-related crises
  • Gather:
    • Survey data
    • Feedback data
    • Text/group messaging data
  • Implement:
    • Text/group messaging system
    • Machine learning algorithm that uses NLP
  • Write the research paper
  • Make the poster
  • Present the poster

Milestones:

Week Description
Week 1: Orientation
  • Meet with REU students and mentors
  • Learn about introductory data science topics
  • Meet with my mentor to talk about the project
Week 2: Android/iOS programming
  • Continue programming feedback activity (Android)
  • Continue programming serverside feedback activity (Php, mysql)
  • Possibly start programming iOS depending on time
  • TBD: Collect data from apps
Week 3: Group Messaging
  • Read articles about implementing a group messaging system
  • Find best practices for implementing one
  • TBD: Collect data from the system
Week 4: Natural Language Processing
  • Read articles about NLP
  • Find best practices for implementing one
  • Practice implementing NLP with a kaggle dataset
Week 5:
Week 6: TBD - Collect data
  • Hopefully have veterans use apps to get data
  • Will update wiki when I know we'll have veterans
Week 7: NLP on Data
  • Using the data, create a ML alg that uses NLP
  • Use survey data, feedback data, and group message data
Week 8: Research Paper
  • Plan to work on the paper throughout the whole summer, but this week will be used for writing the majority of my paper and refining it since I will have my data and ML alg output
Week 9: Poster
  • Create poster by taking info from paper
Week 10: Finale
  • Finish up critiquing paper/poster
  • Present poster