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  1. Intent-Prediction-and-Algorithmic-Alignment-in-Online-Dating Intent-Prediction-and-Algorithmic-Alignment-in-Online-Dating Public

    Leveraging NLP and predictive modeling to align user intent with algorithmic matching. Focuses on classifying family-planning preferences to reduce friction in online dating experiences.

    Jupyter Notebook

  2. Social-Graph-Dynamics-and-Predictive-Interaction-Modeling Social-Graph-Dynamics-and-Predictive-Interaction-Modeling Public

    Experimental validation of balance theory in network contexts. Tests how relationship valence shapes attitude formation - a principle underlying social recommendation systems.

  3. Emotional-Dynamics-Scale-Development-and-Psychometric-Validation Emotional-Dynamics-Scale-Development-and-Psychometric-Validation Public

    Psychometric validation of the Emotional Flow Scale using CFA and invariance testing. Measures dynamic emotional experience during content consumption (N=2,626).

  4. Market-Trends-and-Genre-Success-Analysis-of-9-068-Films Market-Trends-and-Genre-Success-Analysis-of-9-068-Films Public

    Analysis of 9,068 films over 20 years examining market trends, genre co-occurrence, and release timing. Identifies patterns in content success using longitudinal modeling.

  5. Psychographic-Segmentation-and-Behavioral-Tipping-Points Psychographic-Segmentation-and-Behavioral-Tipping-Points Public

    Experimental research identifying when individual differences override consensus judgment. Uses multilevel modeling to pinpoint behavioral tipping points (N=889).