artificial Intelligence and consumer analytics

CALL FOR PAPER


◆ predictive analytics using machine learning for consumer behavior forecasting
◆ sentiment analysis of customer reviews using nlp techniques
◆ deep learning models for personalized product recommendations
◆ computer vision applications in retail for customer tracking and heat mapping
◆ voice-activated shopping assistants powered by nlp and machine learning
◆ chatbots and conversational ai for enhanced customer service
◆ image recognition for visual search and product identification
◆ fraud detection in e-commerce using anomaly detection algorithms
◆ customer segmentation and profiling using unsupervised learning techniques
◆ real-time pricing optimization with reinforcement learning
◆ social media analytics using nlp for brand monitoring and trend prediction
◆ emotion detection in customer interactions through facial recognition and speech analysis
◆ recommendation systems utilizing collaborative filtering and deep learning
◆ predictive maintenance for retail operations using iot data and machine learning
◆ natural language generation for automated product descriptions and marketing content
◆ customer churn prediction models using supervised learning algorithms
◆ video analytics for in-store customer behavior analysis
◆ time series forecasting for inventory management and demand prediction
◆ text summarization of customer feedback using advanced nlp models
◆ cross-channel customer journey mapping with machine learning algorithms

Leave a Comment

Your email address will not be published. Required fields are marked *