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Full-Text Articles in Finance and Financial Management
The Implementation Of Eportfolios As A High Impact Practice In The Real Estate Practice Class, Yu Liu
The Implementation Of Eportfolios As A High Impact Practice In The Real Estate Practice Class, Yu Liu
Q2S Enhancing Pedagogy
I would like to implement the ePortfolio to my Fin 481 Real Estate Practice course. Real Estate Practice course introduces students to a broad spectrum of practical issues and activities in real estate markets. It provides the opportunity for the students to get an in-depth understanding of the real estate business. Subjects include Understand Real Estate Market; Math for Real Estate; Buying Real Estate, Mortgage, Escrow, Title Company, Inspection, Home Insurance Company; Selling Real Estate, Repairing, Brokerage, Staging; Comparative Market Analysis; Brokerage and Marketing Strategies; Investing in Real Estate Market, Debt Utilization; Flipping and Wholesaling; Construction Fundamentals; Legal Protection and …
Machine Learning Stock Market Prediction Studies: Review And Research Directions, Troy J. Strader, John J. Rozycki, Thomas H. Root, Yu-Hsiang John Huang
Machine Learning Stock Market Prediction Studies: Review And Research Directions, Troy J. Strader, John J. Rozycki, Thomas H. Root, Yu-Hsiang John Huang
Journal of International Technology and Information Management
Stock market investment strategies are complex and rely on an evaluation of vast amounts of data. In recent years, machine learning techniques have increasingly been examined to assess whether they can improve market forecasting when compared with traditional approaches. The objective for this study is to identify directions for future machine learning stock market prediction research based upon a review of current literature. A systematic literature review methodology is used to identify relevant peer-reviewed journal articles from the past twenty years and categorize studies that have similar methods and contexts. Four categories emerge: artificial neural network studies, support vector machine …