Predictive AI with External Knowledge Infusion for Stocks
- URL: http://arxiv.org/abs/2504.20058v1
- Date: Mon, 14 Apr 2025 14:15:48 GMT
- Title: Predictive AI with External Knowledge Infusion for Stocks
- Authors: Ambedkar Dukkipati, Kawin Mayilvaghanan, Naveen Kumar Pallekonda, Sai Prakash Hadnoor, Ranga Shaarad Ayyagari,
- Abstract summary: Fluctuations in stock prices are influenced by a complex interplay of factors that go beyond mere historical data.<n>We propose learning mechanisms that learn from historical trends but also incorporate external knowledge from temporal knowledge graphs.<n>With extensive experiments, we show that learned dynamic representations effectively rank stocks based on returns across multiple holding periods.
- Score: 7.141953814374132
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Fluctuations in stock prices are influenced by a complex interplay of factors that go beyond mere historical data. These factors, themselves influenced by external forces, encompass inter-stock dynamics, broader economic factors, various government policy decisions, outbreaks of wars, etc. Furthermore, all of these factors are dynamic and exhibit changes over time. In this paper, for the first time, we tackle the forecasting problem under external influence by proposing learning mechanisms that not only learn from historical trends but also incorporate external knowledge from temporal knowledge graphs. Since there are no such datasets or temporal knowledge graphs available, we study this problem with stock market data, and we construct comprehensive temporal knowledge graph datasets. In our proposed approach, we model relations on external temporal knowledge graphs as events of a Hawkes process on graphs. With extensive experiments, we show that learned dynamic representations effectively rank stocks based on returns across multiple holding periods, outperforming related baselines on relevant metrics.
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