Please use this identifier to cite or link to this item: http://oaps.umac.mo/handle/10692.1/356
Title: Enhance Market Price Prediction Accuracy For Second-hand Luxury Goods Through Sentiment Analysis
Authors: LI, GE YUE(李格悅)
LEI, KA HOU(李嘉豪)
Department: Department of Mathematics
Faculty: Faculty of Science and Technology
Keywords: VADER Sentiment Scoring
ANOVA Test
Granger Causality Test
Pricing Model
Pricing Model
Machine Learning
Issue Date: 2024
Citation: LI, G. Y., LEI, K. H. (2024). Enhance Market Price Prediction Accuracy For Second-hand Luxury Goods Through Sentiment Analysis (Outstanding Academic Papers by Students (OAPS)). Retrieved from University of Macau, Outstanding Academic Papers by Students Repository.
Abstract: As sentiment expressed in people’s comments can be systematically recorded and amassed in significant volumes, leveraging this information to augment pricing models stands as an effective means to enhance predictive accuracy. The objective of this study is to explore the impact of comment occurrence on price fluctuations and investigate the causal relationship between changes in the value retention rate of luxury goods and fluctuations in public sentiment derived from online reviews across ten prominent luxury brands. Initially, we employ web scraping techniques to gather thousands of comments and gather pricing data from multiple specialized second-hand luxury goods platforms. We then conduct sentiment analysis[1] and utilize ANOVA test[2] to scrutinize whether the appearance of comments significantly influences price variations. Following this, we compute the value retention rate of luxury goods and conduct Granger Causality test[3] between value retention rate and sentiment score. Our hypothesis testing corroborate that public sentiment notably impacts the pricing of second-hand luxury goods, thus advocating for the integration of a new feature, ’sentiment,’ in second-hand luxury goods pricing models. Lastly, we employ machine learning methodologies[4] to develop more refined pricing models and asses the predictive accuracy of these models with and without the sentiment score factor.
Instructor: Prof. Simon Fong James
Programme: Bachelor of Science in Mathematics (Statistics and Data Science Stream)
URI: http://oaps.umac.mo/handle/10692.1/356
Appears in Collections:FST OAPS 2024



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