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Resume Classification with
Term Attention Embeddings
Emory NLP Weekly
9/9/2020
Xiangjue Dong
Outline
• Previous Work
• Introduction
• Approaches
• Results
• Error Analysis
• Current Work
• Introduction
• Approaches
• Reference
Previous Work
Introduction – Dataset
Changmao et al. 2020. Competence-Level Prediction and Resume-Job_Description Matching Using Context-Aware Transformer Models
Introduction – Dataset
• Applications: 24,933 (A).
• Remove duplicated resumes within the same level: 9,286 (B).
• Remove duplicated resumes across all levels;
Retrain only the resumes to the highest level: 6,492 (C).
• Discarded unstructured ones: 5,362 (Br), 3,425 (Cr).
Changmao et al. 2020. Competence-Level Prediction and Resume-Job_Description Matching Using Context-Aware Transformer Models
Introduction – Tasks
• Competence-Level Classification - Multiclass Classification Task
• Given a resume, decide which level of CRC positions that the corresponding
applicant is suitable for.
• Labels: CRC1, CRC2, CRC3, CRC4, NQ
• Resume-to-Job_Description Matching - Binary Classification Task
• Given a resume and a CRC job description, decide whether the applicant is
suitable for that job
• Labels: accept, reject
Changmao et al. 2020. Competence-Level Prediction and Resume-Job_Description Matching Using Context-Aware Transformer Models
Approaches – Competence-Level Classification
• Whole-Context: Section Trimming (Baseline)
• Context-Aware: Section Pruning
• Context-Aware: Chunk Segmenting
• Context-Aware: Section Encoding
Changmao et al. 2020. Competence-Level Prediction and Resume-Job_Description Matching Using Context-Aware Transformer Models
Whole-Context: Section Trimming
Changmao et al. 2020. Competence-Level Prediction and Resume-Job_Description Matching Using Context-Aware Transformer Models
Context-Aware: Section Pruning
Changmao et al. 2020. Competence-Level Prediction and Resume-Job_Description Matching Using Context-Aware Transformer Models
Context-Aware: Section Pruning
Changmao et al. 2020. Competence-Level Prediction and Resume-Job_Description Matching Using Context-Aware Transformer Models
• Remove all stop words;
• Remove all words with frequencies top 5%;
• Remove all words with frequencies top 30%.
Context-Aware: Section Pruning
Changmao et al. 2020. Competence-Level Prediction and Resume-Job_Description Matching Using Context-Aware Transformer Models
Context-Aware: Chunk Segmenting
Changmao et al. 2020. Competence-Level Prediction and Resume-Job_Description Matching Using Context-Aware Transformer Models
Context-Aware: Chunk Segmenting
Changmao et al. 2020. Competence-Level Prediction and Resume-Job_Description Matching Using Context-Aware Transformer Models
Context-Aware: Section Encoding
Changmao et al. 2020. Competence-Level Prediction and Resume-Job_Description Matching Using Context-Aware Transformer Models
Resume-to-Job_Description Matching
• Whole-Context: Sec./Desc. Trimming (Baseline)
• Context-Aware: Chunk Segmenting + Section Encoding + Desc.
Embedding
• Context-Aware: Multi-Head Attention
Changmao et al. 2020. Competence-Level Prediction and Resume-Job_Description Matching Using Context-Aware Transformer Models
Whole-Context: Sec./Desc. Trimming
Changmao et al. 2020. Competence-Level Prediction and Resume-Job_Description Matching Using Context-Aware Transformer Models
Context-Aware: Chunk Segmenting + Section
Encoding + Desc. Embedding
Changmao et al. 2020. Competence-Level Prediction and Resume-Job_Description Matching Using Context-Aware Transformer Models
Context-Aware: Multi-Head Attention
Changmao et al. 2020. Competence-Level Prediction and Resume-Job_Description Matching Using Context-Aware Transformer Models
Context-Aware: Multi-Head Attention
Changmao et al. 2020. Competence-Level Prediction and Resume-Job_Description Matching Using Context-Aware Transformer Models
Results - Competence-Level Classification
Changmao et al. 2020. Competence-Level Prediction and Resume-Job_Description Matching Using Context-Aware Transformer Models
Results - Resume-to-Job_Description Matching
Changmao et al. 2020. Competence-Level Prediction and Resume-Job_Description Matching Using Context-Aware Transformer Models
Error Analysis
• It’s unable to identify clinical research experience.
• It can’t identify dates of experience.
• It can’t distinguish adjacent CRC positions.
Changmao et al. 2020. Competence-Level Prediction and Resume-Job_Description Matching Using Context-Aware Transformer Models
Current Work
Introduction – New Dataset
• CRC (2020)
• CRN (2020)
Introduction – New Dataset Statistics
CRN-1 CRN-2 CNR-3 Total
CRN (2020) 69 242 19 330
CRC-1 CRC-2 CRC-3 CRC-4 CRC-QM Total
CRC (2020) 11485 7180 1396 479 83 20623
Introduction - Guideline
Glossary of Terms
• Clinical Settings
• Hospital
• Clinic
• Doctor/Physician Office
Glossary of Terms
• Clinical Settings
• Clinical Roles
• Patient Service(s) Coordinator,
• Patient Care Coordinator,
• Clinical Coordinator,
• Unit Secretary
• Clinical Service Representative,
• Medical Scribe, Medical Secretary,
• Pharmacy Technician,
• Phlebotomist,
• Tumor Registrar
• Pre/Post Award Administrator
• Internship in a scientific or health related area (1000 documented hours).
Glossary of Terms
• Clinical Settings
• Clinical Roles
• Clinical Research Experience
• clinical research coordinator;
• clinical research associate;
• clinical research assistant;
• research interviewer;
• research assistant;
• clinical research manager;
• clinical research supervisor.
Glossary of Terms
• Clinical Settings
• Clinical Roles
• Clinical Research Experience
• Bachelor’s Degrees in scientific or health related fields+
• Biology; Psychology; Epidemiology; Chemistry; Biomedical Science;
Neuroscience; Behavioral Science; Social Work; Microbiology; Nutrition/Food;
Public Health; Health Promotion and Global Health; Complementary and
Alternative Health; Community Wellness .
Glossary of Terms
• Clinical Settings
• Clinical Roles
• Clinical Research Experience
• Bachelor’s Degrees in scientific or health related fields+
• Bachelor’s Degrees in non-scientific or non-health related fields
• Business Management;
• Healthcare Management;
• Healthcare Administration;
• Informatics;
• Gender and Global Health
Glossary of Terms
• Clinical Settings
• Clinical Roles
• Clinical Research Experience
• Bachelor’s Degrees in scientific or health related fields+
• Bachelor’s Degrees in non-scientific or non-health related fields
• Laboratory Research- Including animal and industry research-
nonclinical
• laboratory specialist; laboratory assistant; laboratory scientist; some PhD
fields are identifiable as laboratory research – chemistry, biotechnology, etc.
Glossary of Terms
• Clinical Settings
• Clinical Roles
• Clinical Research Experience
• Bachelor’s Degrees in scientific or health related fields+
• Bachelor’s Degrees in non-scientific or non-health related fields
• Laboratory Research- Including animal and industry research-
nonclinical
• Technical Diploma
• LPN,
• Medical Assistant
Model
…
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MHA 𝑒∑
!$!"$%
LD
𝑜&
𝑡'
𝑡(
Timeline – By end of September
• Parse the resume using tools to prepare the data
• Generate the statistics table of this year’s data
• Divide data into 20 batches for annotation
• Build models
Reference
• Changmao et al. 2020. Competence-Level Prediction and Resume-
Job_Description Matching Using Context-Aware Transformer Models

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Resume Classification with Term Attention Embeddings

  • 1. Resume Classification with Term Attention Embeddings Emory NLP Weekly 9/9/2020 Xiangjue Dong
  • 2. Outline • Previous Work • Introduction • Approaches • Results • Error Analysis • Current Work • Introduction • Approaches • Reference
  • 4. Introduction – Dataset Changmao et al. 2020. Competence-Level Prediction and Resume-Job_Description Matching Using Context-Aware Transformer Models
  • 5. Introduction – Dataset • Applications: 24,933 (A). • Remove duplicated resumes within the same level: 9,286 (B). • Remove duplicated resumes across all levels; Retrain only the resumes to the highest level: 6,492 (C). • Discarded unstructured ones: 5,362 (Br), 3,425 (Cr). Changmao et al. 2020. Competence-Level Prediction and Resume-Job_Description Matching Using Context-Aware Transformer Models
  • 6. Introduction – Tasks • Competence-Level Classification - Multiclass Classification Task • Given a resume, decide which level of CRC positions that the corresponding applicant is suitable for. • Labels: CRC1, CRC2, CRC3, CRC4, NQ • Resume-to-Job_Description Matching - Binary Classification Task • Given a resume and a CRC job description, decide whether the applicant is suitable for that job • Labels: accept, reject Changmao et al. 2020. Competence-Level Prediction and Resume-Job_Description Matching Using Context-Aware Transformer Models
  • 7. Approaches – Competence-Level Classification • Whole-Context: Section Trimming (Baseline) • Context-Aware: Section Pruning • Context-Aware: Chunk Segmenting • Context-Aware: Section Encoding Changmao et al. 2020. Competence-Level Prediction and Resume-Job_Description Matching Using Context-Aware Transformer Models
  • 8. Whole-Context: Section Trimming Changmao et al. 2020. Competence-Level Prediction and Resume-Job_Description Matching Using Context-Aware Transformer Models
  • 9. Context-Aware: Section Pruning Changmao et al. 2020. Competence-Level Prediction and Resume-Job_Description Matching Using Context-Aware Transformer Models
  • 10. Context-Aware: Section Pruning Changmao et al. 2020. Competence-Level Prediction and Resume-Job_Description Matching Using Context-Aware Transformer Models • Remove all stop words; • Remove all words with frequencies top 5%; • Remove all words with frequencies top 30%.
  • 11. Context-Aware: Section Pruning Changmao et al. 2020. Competence-Level Prediction and Resume-Job_Description Matching Using Context-Aware Transformer Models
  • 12. Context-Aware: Chunk Segmenting Changmao et al. 2020. Competence-Level Prediction and Resume-Job_Description Matching Using Context-Aware Transformer Models
  • 13. Context-Aware: Chunk Segmenting Changmao et al. 2020. Competence-Level Prediction and Resume-Job_Description Matching Using Context-Aware Transformer Models
  • 14. Context-Aware: Section Encoding Changmao et al. 2020. Competence-Level Prediction and Resume-Job_Description Matching Using Context-Aware Transformer Models
  • 15. Resume-to-Job_Description Matching • Whole-Context: Sec./Desc. Trimming (Baseline) • Context-Aware: Chunk Segmenting + Section Encoding + Desc. Embedding • Context-Aware: Multi-Head Attention Changmao et al. 2020. Competence-Level Prediction and Resume-Job_Description Matching Using Context-Aware Transformer Models
  • 16. Whole-Context: Sec./Desc. Trimming Changmao et al. 2020. Competence-Level Prediction and Resume-Job_Description Matching Using Context-Aware Transformer Models
  • 17. Context-Aware: Chunk Segmenting + Section Encoding + Desc. Embedding Changmao et al. 2020. Competence-Level Prediction and Resume-Job_Description Matching Using Context-Aware Transformer Models
  • 18. Context-Aware: Multi-Head Attention Changmao et al. 2020. Competence-Level Prediction and Resume-Job_Description Matching Using Context-Aware Transformer Models
  • 19. Context-Aware: Multi-Head Attention Changmao et al. 2020. Competence-Level Prediction and Resume-Job_Description Matching Using Context-Aware Transformer Models
  • 20. Results - Competence-Level Classification Changmao et al. 2020. Competence-Level Prediction and Resume-Job_Description Matching Using Context-Aware Transformer Models
  • 21. Results - Resume-to-Job_Description Matching Changmao et al. 2020. Competence-Level Prediction and Resume-Job_Description Matching Using Context-Aware Transformer Models
  • 22. Error Analysis • It’s unable to identify clinical research experience. • It can’t identify dates of experience. • It can’t distinguish adjacent CRC positions. Changmao et al. 2020. Competence-Level Prediction and Resume-Job_Description Matching Using Context-Aware Transformer Models
  • 24. Introduction – New Dataset • CRC (2020) • CRN (2020)
  • 25. Introduction – New Dataset Statistics CRN-1 CRN-2 CNR-3 Total CRN (2020) 69 242 19 330 CRC-1 CRC-2 CRC-3 CRC-4 CRC-QM Total CRC (2020) 11485 7180 1396 479 83 20623
  • 27. Glossary of Terms • Clinical Settings • Hospital • Clinic • Doctor/Physician Office
  • 28. Glossary of Terms • Clinical Settings • Clinical Roles • Patient Service(s) Coordinator, • Patient Care Coordinator, • Clinical Coordinator, • Unit Secretary • Clinical Service Representative, • Medical Scribe, Medical Secretary, • Pharmacy Technician, • Phlebotomist, • Tumor Registrar • Pre/Post Award Administrator • Internship in a scientific or health related area (1000 documented hours).
  • 29. Glossary of Terms • Clinical Settings • Clinical Roles • Clinical Research Experience • clinical research coordinator; • clinical research associate; • clinical research assistant; • research interviewer; • research assistant; • clinical research manager; • clinical research supervisor.
  • 30. Glossary of Terms • Clinical Settings • Clinical Roles • Clinical Research Experience • Bachelor’s Degrees in scientific or health related fields+ • Biology; Psychology; Epidemiology; Chemistry; Biomedical Science; Neuroscience; Behavioral Science; Social Work; Microbiology; Nutrition/Food; Public Health; Health Promotion and Global Health; Complementary and Alternative Health; Community Wellness .
  • 31. Glossary of Terms • Clinical Settings • Clinical Roles • Clinical Research Experience • Bachelor’s Degrees in scientific or health related fields+ • Bachelor’s Degrees in non-scientific or non-health related fields • Business Management; • Healthcare Management; • Healthcare Administration; • Informatics; • Gender and Global Health
  • 32. Glossary of Terms • Clinical Settings • Clinical Roles • Clinical Research Experience • Bachelor’s Degrees in scientific or health related fields+ • Bachelor’s Degrees in non-scientific or non-health related fields • Laboratory Research- Including animal and industry research- nonclinical • laboratory specialist; laboratory assistant; laboratory scientist; some PhD fields are identifiable as laboratory research – chemistry, biotechnology, etc.
  • 33. Glossary of Terms • Clinical Settings • Clinical Roles • Clinical Research Experience • Bachelor’s Degrees in scientific or health related fields+ • Bachelor’s Degrees in non-scientific or non-health related fields • Laboratory Research- Including animal and industry research- nonclinical • Technical Diploma • LPN, • Medical Assistant
  • 35. Timeline – By end of September • Parse the resume using tools to prepare the data • Generate the statistics table of this year’s data • Divide data into 20 batches for annotation • Build models
  • 36. Reference • Changmao et al. 2020. Competence-Level Prediction and Resume- Job_Description Matching Using Context-Aware Transformer Models