HINTS: Extraction of Human Insights from Time-Series Without External Sources
- URL: http://arxiv.org/abs/2512.23755v1
- Date: Sat, 27 Dec 2025 15:13:12 GMT
- Title: HINTS: Extraction of Human Insights from Time-Series Without External Sources
- Authors: Sheo Yon Jhin, Noseong Park,
- Abstract summary: Human decision-making, emotions, and collective psychology are complex factors that shape the temporal dynamics observed in financial and economic systems.<n>We propose HINTS, a self-supervised learning framework that extracts these latent factors endogenously from time series residuals without external data.
- Score: 32.55954799466416
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Human decision-making, emotions, and collective psychology are complex factors that shape the temporal dynamics observed in financial and economic systems. Many recent time series forecasting models leverage external sources (e.g., news and social media) to capture human factors, but these approaches incur high data dependency costs in terms of financial, computational, and practical implications. In this study, we propose HINTS, a self-supervised learning framework that extracts these latent factors endogenously from time series residuals without external data. HINTS leverages the Friedkin-Johnsen (FJ) opinion dynamics model as a structural inductive bias to model evolving social influence, memory, and bias patterns. The extracted human factors are integrated into a state-of-the-art backbone model as an attention map. Experimental results using nine real-world and benchmark datasets demonstrate that HINTS consistently improves forecasting accuracy. Furthermore, multiple case studies and ablation studies validate the interpretability of HINTS, demonstrating strong semantic alignment between the extracted factors and real-world events, demonstrating the practical utility of HINTS.
Related papers
- Temporal Latent Variable Structural Causal Model for Causal Discovery under External Interferences [53.308122815325326]
We introduce latent variables to represent unobserved factors that affect the observed data.<n>Specifically, to capture the causal strength and adjacency information, we propose a new temporal latent variable structural causal model.<n>Considering that expert knowledge can provide information about unknown interferences in certain scenarios, we develop a method that facilitates the incorporation of prior knowledge into parameter learning.
arXiv Detail & Related papers (2025-11-13T07:10:10Z) - Do-PFN: In-Context Learning for Causal Effect Estimation [75.62771416172109]
We show that Prior-data fitted networks (PFNs) can be pre-trained on synthetic data to predict outcomes.<n>Our approach allows for the accurate estimation of causal effects without knowledge of the underlying causal graph.
arXiv Detail & Related papers (2025-06-06T12:43:57Z) - Predictive AI with External Knowledge Infusion for Stocks [7.141953814374132]
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.
arXiv Detail & Related papers (2025-04-14T14:15:48Z) - STORM: A Spatio-Temporal Factor Model Based on Dual Vector Quantized Variational Autoencoders for Financial Trading [55.02735046724146]
In financial trading, factor models are widely used to price assets and capture excess returns from mispricing.<n>We propose a Spatio-Temporal factOR Model based on dual vector quantized variational autoencoders, named STORM.<n>Storm extracts features of stocks from temporal and spatial perspectives, then fuses and aligns these features at the fine-grained and semantic level, and represents the factors as multi-dimensional embeddings.
arXiv Detail & Related papers (2024-12-12T17:15:49Z) - CausalMob: Causal Human Mobility Prediction with LLMs-derived Human Intentions toward Public Events [13.839692239149889]
We propose a causality-augmented prediction model, called CausalMob, to analyze the causal effects of public events.<n>Based on large-scale real-world data, the experimental results show that the CausalMob model excels in human mobility prediction.
arXiv Detail & Related papers (2024-12-03T04:29:27Z) - Decoupled Marked Temporal Point Process using Neural Ordinary Differential Equations [14.828081841581296]
A Marked Temporal Point Process (MTPP) is a process whose realization is a set of event-time data.
Recent studies have utilized deep neural networks to capture complex temporal dependencies of events.
We propose a Decoupled MTPP framework that disentangles characterization of a process into a set of evolving influences from different events.
arXiv Detail & Related papers (2024-06-10T10:15:32Z) - Cumulative Distribution Function based General Temporal Point Processes [49.758080415846884]
CuFun model represents a novel approach to TPPs that revolves around the Cumulative Distribution Function (CDF)
Our approach addresses several critical issues inherent in traditional TPP modeling.
Our contributions encompass the introduction of a pioneering CDF-based TPP model, the development of a methodology for incorporating past event information into future event prediction.
arXiv Detail & Related papers (2024-02-01T07:21:30Z) - Decoding Susceptibility: Modeling Misbelief to Misinformation Through a Computational Approach [61.04606493712002]
Susceptibility to misinformation describes the degree of belief in unverifiable claims that is not observable.
Existing susceptibility studies heavily rely on self-reported beliefs.
We propose a computational approach to model users' latent susceptibility levels.
arXiv Detail & Related papers (2023-11-16T07:22:56Z) - COSTAR: Improved Temporal Counterfactual Estimation with Self-Supervised
Learning [35.119957381211236]
We introduce Counterfactual Self-Supervised Transformer (COSTAR), a novel approach that integrates self-supervised learning for improved historical representations.
COSTAR yields superior performance in estimation accuracy and generalization to out-of-distribution data compared to existing models.
arXiv Detail & Related papers (2023-11-01T22:38:14Z) - Data-Centric Epidemic Forecasting: A Survey [56.99209141838794]
This survey delves into various data-driven methodological and practical advancements.
We enumerate the large number of epidemiological datasets and novel data streams that are relevant to epidemic forecasting.
We also discuss experiences and challenges that arise in real-world deployment of these forecasting systems.
arXiv Detail & Related papers (2022-07-19T16:15:11Z) - Improving Prediction of Cognitive Performance using Deep Neural Networks
in Sparse Data [2.867517731896504]
We used data from an observational, cohort study, Midlife in the United States (MIDUS) to model executive function and episodic memory measures.
Deep neural network (DNN) models consistently ranked highest in all of the cognitive performance prediction tasks.
arXiv Detail & Related papers (2021-12-28T22:23:08Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.