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Data Science Executive Week 2025
Venue: 214B clear filter
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Thursday, March 13
 

9:30am CDT

IAB Introduction, Capstone OL 2, Capstone OC 1
Thursday March 13, 2025 9:30am - 10:30am CDT
9:30am CDT N214B
Capstone OL-Team2
Title: So you want to be a restaurant owner?
Project Description: Our project aims to provide valuable insights into the restaurant industry by analyzing key business attributes across four major cities including Austin, Texas; Chicago, Illinois; New York City, New York; and Los Angeles, California. We will provide insights through the analysis of key factors including health inspection scores, location, customer reviews, time series analysis spanning the past five years, and additional information collected from census data. This data will be collected through web scraping, official city resources, and the Census Bureau. Our goal is to identify patterns for successful restaurant creation or expansion and offer actionable insights for restaurant owners to make informed business decisions regarding improvements. Our analysis will culminate in a business-focused dashboard which will serve as a tool to observe our findings and help restaurant owners optimize their strategies.
Master Students: Reid Lawson, Kevin Sherer, Ryan Russell, Daniel Bassett
10:00am CDT N214B
Capstone OC1-Team1
Title:  Detecting Bias in Missouri News Data Using NLP and Machine Learning
Project Description: This project focuses on detecting implicit bias in Missouri news articles using advanced Natural Language Processing (NLP) and machine learning techniques. The dataset consists of ~100,000 news articles provided from various sources, supplemented with bias-labeled datasets from AllSides and NewsMediaBias-Plus. Our approach involves comprehensive text preprocessing (tokenization, lemmatization, and POS tagging), feature engineering (TF-IDF, n-grams, sentiment scores), and embedding-based representations using transformer models (BERT, RoBERTa, and Sentence-BERT). Bias detection is formulated as a classification and clustering problem, leveraging DBSCAN, HDBSCAN, and K-Means for clustering, alongside dimensionality reduction techniques (UMAP, t-SNE, PCA). We fine-tune large language models (Claude, LLaMA 3.2, Mistral-7B) for classification, with model performance evaluated using precision, recall, and F1-score. Explainability methods ensure interpretability of bias indicators. This work aims to provide industry-relevant insights into algorithmic bias detection and media transparency at scale.
Master Students: Gulli Atakishiyeva, Piyusha Modhave, Tarun Kumar
Thursday March 13, 2025 9:30am - 10:30am CDT
214B

1:00pm CDT

IAB Introduction, Capstone OL 6, Capstone OC 3
Thursday March 13, 2025 1:00pm - 2:00pm CDT
1:00pm CDT N214B
Capstone OL-Team6
Title: Analyzing HCAHPS Patient Ratings analysis using census data.
Project Description: Our aim of this project uses Hospital Consumer Assessment of Healthcare Providers and Systems (HCAHPS) survey ratings to understand how socioeconomic factors—such as income levels, education attainment, and insurance coverage, ethnicity —influence patient satisfaction and hospital ratings. By integrating U.S. Census data with hospital survey results, we want to identify trends that affect healthcare experiences and provide insights for improving hospital services.
Master Students: Anjan Chatterjee, Matt Giguere, Akshat Gandhi
1:30pm CDT N214B 
Capstone OC3 – Team3
Title:   GeoRealEdge: A Geospatial Decision Support System for Real Estate
Project Description: GeoRealEdge is a geospatial decision support system that provides personalized property recommendations by considering socio-economic, healthcare, environmental, and other factors often overlooked by traditional real estate platforms like Zillow and MLS. Using Springfield, Missouri, as a pilot location, the platform uses a weighted scoring system that the end user can use to express their real estate priorities and preferences by incorporating accessibility metrics and housing attributes. The system gives tailored recommendations through an interactive interface and a customized property suggestion PDF, helping to better inform real estate decisions based on spatial and statistical analysis.
Master Students: Yatish Devapati, Sai Teja Gullapalli, Rachel McMullen, James Simelus
Thursday March 13, 2025 1:00pm - 2:00pm CDT
214B
 
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