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volunteer_data:volunteer_matching [2024/03/17 22:58] yangvolunteer_data:volunteer_matching [2024/04/13 09:07] (current) – [Weekly Progress] gankx
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-======Volunteer Matching for Social Works======+======Volunteer Matching for Social Work======
  
 +[[volunteer_data:top| Volunteer Data Analysis Home]]
 +
 +====Project Goals====
 +  - **volunteer to social work case matching**: assign volunteers to social work case to maximize user satisfaction and global utility. (G1)
 +  - **volunteer user categorization (profiling)**: identify user groups to apply precise content targeting and mobilization/management strategy (G2)
 +
 +
 +Solving G2 will help G1 by improving matching result given sparse and incomplete data. Ideally both tasks can be accomplished in a joint model to ensure optimality.
 +
 +====Related topics====
 +  * personnel assignment problem
 +  * bilateral/two-way recommendation problem
 +  * user categorization/profiling for recommendation
 +
 +
 +====Weekly Progress====
 +
 +=== Meeting: March 16, 2024 ===
 +  * === **Attendees:** ===
 +  * professor Yang Li, Yuanbo Tang, Dongdong Zhang, Yang Chen, Kaixuan Gan (16:00-17:00)
 +  * === **Discussion** ===
 +  * Kaixuan presented a report of his work in the last week.H1: Data processing and analysis, H2: Dimensionality reduction and clustering of volunteers'data
 +  * Dongdong shared new data and discuss aim of volunteer_matching program and the plan of future work
 +
 +  * === **Future plan** ===
 +  * Improvement of dimensionality reduction methods (LDA dimensionality reduction) and clustering methods.
 +  * Further acquisition of behavioral data.
 +  * Hoping to better analyze, predict, and match volunteers with corresponding tasks through data integration.
 +  * Recommendation System Related Literature Review.
 +
 +=== Meeting: March 23, 2024 ===
 +  * === **Attendees:** ===
 +  * professor Yang Li, Yuanbo Tang, Dongdong Zhang, Yang Chen, Kaixuan Gan (16:00-17:00)
 +  * === **Discussion** ===
 +  * Kaixuan presented a report of his work in the last week.H1: Introduction to recommendation system related technologies
 +  * Yang Chen shared new data's organization and analysis
 +  * professor Yang Li introduced some related topics helpful to Volunteer Matching work 
 +  * Discuss the plan of future literature review and data processing
 +
 +  * === **Future plan** ===
 +  * Literature Review on personnel assignment problem and user categorization/profiling for recommendation
 +  * Further acquisition of Negative feedback behavior data.
 +  * Topic analysis of different data.
 +  * Mind map of existing data.
 +
 +=== Meeting: March 30, 2024 ===
 +
 +  * {{:volunteer_data:3.30report.pptx}}
 +  *   * === **Attendees:** ===
 +  * professor Yang Li, Yuanbo Tang, Yang Chen, Kaixuan Gan (16:00-17:00)
 +  * === **Discussion** ===
 +  * Yuanbo presented a report of his work in the last week.H1: The topic analysis of existing textual data.
 +  * Yang Chen shared the potential acquisition of more valuable data in the future.
 +  * Discuss the plan of future data processing and topic analysis
 +
 +  * === **Future plan** ===
 +  * Literature Review on personnel assignment problem and user categorization/profiling for recommendation
 +  * Further acquisition of data.
 +  * Topic analysis of further data.
 +
 +=== Meeting: April 6, 2024 ===
 +  *   * === **Attendees:** ===
 +  * professor Yang Li, Yuanbo Tang, Kaixuan Gan (16:30-17:30)
 +  * === **Discussion** ===
 +  * Kaixuan presented a report of his work in the last week.H1: Using autoencoder for dimensionality reduction and clustering.
 +  * professor Yang Li gave some advice on analysis of clustering results.
 +  * Discuss the plan of future data processing.
 +
 +  * === **Future plan** ===
 +  * Literature Review on personnel assignment problem and user categorization/profiling for recommendation
 +  * Quantitative analysis of clustering results.
 +  * Performing one-hot encoding on categorical data.
 +
 +=== Meeting: April 13, 2024 ===
 +  * {{ :volunteer_data:4.13report.pptx |}}
 +  *   * === **Attendees:** ===
 +  * professor Yang Li, Yuanbo Tang, Dongdong Zhang, Yang Chen,Qitai Tan, Kaixuan Gan (16:00-17:00)
 +  * === **Discussion** ===
 +  * Kaixuan presented a report of his work in the last week.H1: Using autoencoder for dimensionality reduction and clustering.
 +  * professor Yang Li gave some advice on data processing.
 +  * Discuss the plan of future acquisition of data.
 +
 +  * === **Future plan** ===
 +  * Literature Review on recommendation system.
 +  * Perform clustering analysis again after adding more data.
 +  * Further acquisition of data.
  
volunteer_data/volunteer_matching.1710730720.txt.gz · Last modified: 2024/03/17 22:58 by yang