Evidence-based workplace harassment guidance system: transforming #MeToo narratives into actionable knowledge through machine learning
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BRAC University
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Abstract
Workplace harassment remains a pervasive global issue, yet victims often lack ac-
cess to evidence about what actually happens when people in similar situations
take action. Traditional resources offer generic procedural advice without outcome
data, leaving individuals to make consequential decisions with incomplete informa-
tion. This study presents an evidence-based workplace harassment guidance system
that transforms 15,835 #MeToo narratives into personalized, actionable guidance
grounded in documented outcomes from comparable cases.
The system addresses a fundamental information asymmetry: while organizations
accumulate knowledge about harassment cases, individual victims rarely know what
outcomes others in similar situations experienced. By analyzing patterns across
thousands of documented experiences, the system identifies a user’s specific vulner-
ability profile, retrieves semantically similar historical cases, and presents evidence-
based guidance including proven successful action sequences, outcome statistics, and
high-impact actions that correlate with positive results. The guidance generation
pipeline employs SimCSE-BERT embeddings for semantic similarity, multi-label vul-
nerability detection leveraging these embeddings to identify seven co-occurring risk
factors, and outcome pattern analysis across fifteen outcome categories—supported
by BERT sentiment analysis (98.1% accuracy) and HDBSCAN clustering for eval-
uation.
The empirical analysis reveals sobering realities: negative outcomes predominate
across all vulnerability types, institutional inaction occurs in 16.9% of cases, and
harasser accountability remains rare at 3.6%. Rather than offering false reassur-
ance, the system presents these evidence-based statistics to enable informed decision-
making. Professional evaluation with eleven practitioners from HR, legal, mental
health, and other sectors—91% with direct harassment case experience—validates
that the guidance meets practical standards for appropriateness (M=4.09/5), use-
fulness (M=4.09/5), actionability (M=3.91/5), and safety (M=3.73/5), with 91%
endorsement and 73% rating the approach superior to typical harassment resources.
This research demonstrates that machine learning can provide meaningful support
for sensitive domains when developed with rigorous professional validation and com-
mitment to user safety.
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Cataloged from PDF version of thesis.
Includes bibliographical references (pages 83-85).
This thesis is submitted in partial fulfillment of the requirements for the degree of Master of Science in Computer Science, 2026.
Includes bibliographical references (pages 83-85).
This thesis is submitted in partial fulfillment of the requirements for the degree of Master of Science in Computer Science, 2026.
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Thesis