Document detail
ID

oai:arXiv.org:2404.19095

Topic
Computer Science - Human-Computer ... Computer Science - Information Ret... Computer Science - Machine Learnin... Computer Science - Social and Info...
Author
Srivastava, Sparsh Arora, Rohan
Category

Computer Science

Year

2024

listing date

5/8/2024

Keywords
reality trained features models right-time social
Metrics

Abstract

We create an innovative mixed reality-first social recommendation model, utilizing features uniquely collected through mixed reality (MR) systems to promote social interaction, such as gaze recognition, proximity, noise level, congestion level, and conversational intensity.

We further extend these models to include right-time features to deliver timely notifications.

We measure performance metrics across various models by creating a new intersection of user features, MR features, and right-time features.

We create four model types trained on different combinations of the feature classes, where we compare the baseline model trained on the class of user features against the models trained on MR features, right-time features, and a combination of all of the feature classes.

Due to limitations in data collection and cost, we observe performance degradation in the right-time, mixed reality, and combination models.

Despite these challenges, we introduce optimizations to improve accuracy across all models by over 14 percentage points, where the best performing model achieved 24% greater accuracy.

Srivastava, Sparsh,Arora, Rohan, 2024, Catalyzing Social Interactions in Mixed Reality using ML Recommendation Systems

Document

Open

Share

Source

Articles recommended by ES/IODE AI

Vulnerable consumers: marketing research needs to pay more attention to the brain health of consumers
vulnerable consumers research methods neuroscience brain health causal inference marketing ethics brain health consumers