Sentimentally enhanced conversation recommender system
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A conversation recommender system (CRS) aims to provide high-quality recommendations to users in fewer conversation turns. Existing studies often rely on knowledge graphs and entities mentioned in dialogues to enhance the representation of entity information. However, they fail to thoroughly explore users’ emotional tendencies toward entities or effectively differentiate the varying impacts of different entities on user preferences. Recently, Liu et.al. proposed an innovative Sentimentally Enhanced Conversation Recommender system (SECR). In this presentation, the SECR method will be explained and described how this method captured users’ emotional inclinations toward entities.
Portfolio Optimization, Finance, LLMs, and Deep Learning
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Here’s a paragraph for Portfolio Optimization and Finance with LLMs and Deep Learning:
Portfolio optimization, a cornerstone of finance, aims to construct investment portfolios that maximize returns while minimizing risk.
Traditional methods often rely on simplified assumptions and struggle to capture complex market dynamics. The advent of Large Language Models (LLMs) and Deep Learning offers transformative potential. LLMs can process vast amounts of textual data, including news articles, financial reports, and social media sentiment, to extract valuable insights and predict market trends. Deep Learning algorithms, such as recurrent neural networks and convolutional neural networks, can effectively model time series data, identify non-linear relationships, and learn intricate patterns in financial markets. By integrating these powerful technologies, researchers and practitioners can develop sophisticated portfolio optimization strategies that adapt to evolving market conditions, incorporate diverse information sources, and potentially achieve superior risk-adjusted returns.