Abstract
This study investigates the emergence and reinforcement of cognitive biases, specifically confirmation bias, within the dynamic interplay of user-recommender system interactions. We address two primary research questions:
- RQ1: Can confirmation bias be inferred from historical user interactions using tag-weighted modifications to a multinomial logit choice model?
- RQ2: How do different choice models and recommendation strategies – such as user weighting and rule-based item selection – affect the dynamics of the feedback loop?
Our objective is to identify and characterize measurable patterns indicative of bias rein- forcement through a robust simulation framework.
Utilizing the LFM-1b dataset, our methodology employs both standard and modified multinomial logit choice models alongside distinct recommendation strategies, including Repetition-Tolerant Exposure and Tag-Based Filtering. We evaluate the behaviors of MostPop, ItemKNN, and ALS models, quantifying confirmation bias via the odds ratio and analyzing temporal shifts in user preferences and recommendation outputs with the Mann–Kendall test.
Our simulations demonstrate moderate evidence of preference reinforcement, particularly in the absence of explicit diversity-promoting strategies. We observe how varying choice models and recommendation approaches impact feedback loop dynamics, revealing subtle yet significant shifts in user tag preferences and recommended item compositions that indicate bias perpetuation. These findings underscore the critical importance of understanding user-recommender system interactions in the context of cognitive biases and contribute to the development of more transparent and equitable algorithmic design.
- RQ1: Can confirmation bias be inferred from historical user interactions using tag-weighted modifications to a multinomial logit choice model?
- RQ2: How do different choice models and recommendation strategies – such as user weighting and rule-based item selection – affect the dynamics of the feedback loop?
Our objective is to identify and characterize measurable patterns indicative of bias rein- forcement through a robust simulation framework.
Utilizing the LFM-1b dataset, our methodology employs both standard and modified multinomial logit choice models alongside distinct recommendation strategies, including Repetition-Tolerant Exposure and Tag-Based Filtering. We evaluate the behaviors of MostPop, ItemKNN, and ALS models, quantifying confirmation bias via the odds ratio and analyzing temporal shifts in user preferences and recommendation outputs with the Mann–Kendall test.
Our simulations demonstrate moderate evidence of preference reinforcement, particularly in the absence of explicit diversity-promoting strategies. We observe how varying choice models and recommendation approaches impact feedback loop dynamics, revealing subtle yet significant shifts in user tag preferences and recommended item compositions that indicate bias perpetuation. These findings underscore the critical importance of understanding user-recommender system interactions in the context of cognitive biases and contribute to the development of more transparent and equitable algorithmic design.
| Originalsprache | Englisch |
|---|---|
| Betreuung / Begutachtung |
|
| Publikationsstatus | Veröffentlicht - 2025 |
Wissenschaftszweige
- 102 Informatik
- 102003 Bildverarbeitung
- 202002 Audiovisuelle Medien
- 102001 Artificial Intelligence
- 102015 Informationssysteme
- 101019 Stochastik
- 103029 Statistische Physik
- 101018 Statistik
- 101017 Spieltheorie
- 202017 Embedded Systems
- 101016 Optimierung
- 101015 Operations Research
- 101014 Numerische Mathematik
- 101029 Mathematische Statistik
- 101028 Mathematische Modellierung
- 101026 Zeitreihenanalyse
- 101024 Wahrscheinlichkeitstheorie
- 102032 Computational Intelligence
- 102004 Bioinformatik
- 102013 Human-Computer Interaction
- 101027 Dynamische Systeme
- 305907 Medizinische Statistik
- 101004 Biomathematik
- 305905 Medizinische Informatik
- 101031 Approximationstheorie
- 102033 Data Mining
- 305901 Computerunterstützte Diagnose und Therapie
- 102019 Machine Learning
- 106007 Biostatistik
- 102018 Künstliche Neuronale Netze
- 106005 Bioinformatik
- 202037 Signalverarbeitung
- 202036 Sensorik
- 202035 Robotik
JKU-Schwerpunkte
- Digital Transformation
Dieses zitieren
- APA
- Author
- BIBTEX
- Harvard
- Standard
- RIS
- Vancouver