Modeling Support and Resistance Zones in Financial Time Series with Stochastic and Volume-Weighted Methods; Contemporary Mathematics; Vol. 6, iss. 6

Bibliografische gegevens
Parent link:Contemporary Mathematics.— .— Singapore: Universal Wiser Publisher
Vol. 6, iss. 6.— 2025.— P. 8400-8433
Andere auteurs: Martyushev N. V. Nikita Vladimirovich, Spitsin V. V. Vladislav Vladimirovich, Khayrov M. A. Mark Albertovich, Spitsina (Spitsyna) L. Yu. Lubov Yurievna
Samenvatting:Title screen
This paper proposes a unified mathematical framework for the formalization and forecasting of Support and Resistance (S/R) zones in financial time series. Empirical evaluation shows that our method improves Precision and Recall by 10-16 percentage points compared to classical extremum-based approaches. In contrast to traditional heuristic approaches based on local extrema, the method relies on a volume-weighted potential function, stochastic differential equations, and absorbing Markov processes to rigorously describe zone persistence and breakout probabilities. This formulation ensures reproducibility, theoretical grounding, and interpretability, bridging the gap between technical analysis and stochastic modeling. To address irregularly sampled high-frequency data, we employ cubic spline interpolation and continuous-time stochastic models, while incorporating microstructural features such as Volume-Weighted Average Price (VWAP), bid-ask spreads, and realized volatility. Empirical evaluation on a multi-asset high-frequency dataset (1-second and 1-minute grids) demonstrates consistent improvements over classical extremum-based methods: Precision and Recall increase by 10-16 percentage points, while false breakout rates decline by 12-15%. High-volume S/R zones exhibit significantly longer lifetimes, confirming the central role of liquidity clustering in price dynamics. Beyond improving detection accuracy, the framework also generates theoretically grounded labels that enhance machine learning models by reducing overfitting and increasing predictive interpretability. The results establish S/R zones as dynamic, volume-dependent structures rather than static heuristic levels, providing a reproducible foundation for quantitative finance. The proposed approach advances both the theoretical understanding of market boundaries and their practical application in forecasting, algorithmic trading, and risk management. Future research may extend the framework toward reinforcement learning architectures and cross-asset generalization, further expanding its relevance for modern financial markets
Текстовый файл
Taal:Engels
Gepubliceerd in: 2025
Onderwerpen:
Online toegang:https://doi.org/10.37256/cm.6620258482
Formaat: Elektronisch Hoofdstuk
KOHA link:https://koha.lib.tpu.ru/cgi-bin/koha/opac-detail.pl?biblionumber=683655

MARC

LEADER 00000naa0a2200000 4500
001 683655
005 20251209132118.0
090 |a 683655 
100 |a 20251209d2025 k||y0rusy50 ba 
101 0 |a eng 
102 |a SG 
135 |a drcn ---uucaa 
181 0 |a i   |b  e  
182 0 |a b 
183 0 |a cr  |2 RDAcarrier 
200 1 |a Modeling Support and Resistance Zones in Financial Time Series with Stochastic and Volume-Weighted Methods  |f Nikita Martyushev, Vladislav Spitsin, Mark Khairov, Lubov Spitsina 
203 |a Текст  |c электронный  |b визуальный 
283 |a online_resource  |2 RDAcarrier 
300 |a Title screen 
320 |a References: 35 tit 
330 |a This paper proposes a unified mathematical framework for the formalization and forecasting of Support and Resistance (S/R) zones in financial time series. Empirical evaluation shows that our method improves Precision and Recall by 10-16 percentage points compared to classical extremum-based approaches. In contrast to traditional heuristic approaches based on local extrema, the method relies on a volume-weighted potential function, stochastic differential equations, and absorbing Markov processes to rigorously describe zone persistence and breakout probabilities. This formulation ensures reproducibility, theoretical grounding, and interpretability, bridging the gap between technical analysis and stochastic modeling. To address irregularly sampled high-frequency data, we employ cubic spline interpolation and continuous-time stochastic models, while incorporating microstructural features such as Volume-Weighted Average Price (VWAP), bid-ask spreads, and realized volatility. Empirical evaluation on a multi-asset high-frequency dataset (1-second and 1-minute grids) demonstrates consistent improvements over classical extremum-based methods: Precision and Recall increase by 10-16 percentage points, while false breakout rates decline by 12-15%. High-volume S/R zones exhibit significantly longer lifetimes, confirming the central role of liquidity clustering in price dynamics. Beyond improving detection accuracy, the framework also generates theoretically grounded labels that enhance machine learning models by reducing overfitting and increasing predictive interpretability. The results establish S/R zones as dynamic, volume-dependent structures rather than static heuristic levels, providing a reproducible foundation for quantitative finance. The proposed approach advances both the theoretical understanding of market boundaries and their practical application in forecasting, algorithmic trading, and risk management. Future research may extend the framework toward reinforcement learning architectures and cross-asset generalization, further expanding its relevance for modern financial markets 
336 |a Текстовый файл 
461 1 |t Contemporary Mathematics  |c Singapore  |n Universal Wiser Publisher 
463 1 |t Vol. 6, iss. 6  |v P. 8400-8433  |d 2025 
610 1 |a support and resistance zones 
610 1 |a financial time series 
610 1 |a stochastic modeling 
610 1 |a volume-weighted methods 
610 1 |a Markov models 
610 1 |a market microstructure 
610 1 |a algorithmic trading 
610 1 |a breakout forecasting 
610 1 |a электронный ресурс 
610 1 |a труды учёных ТПУ 
701 1 |a Martyushev  |b N. V.  |c specialist in the field of material science  |c Associate Professor of Tomsk Polytechnic University, Candidate of technical sciences  |f 1981-  |g Nikita Vladimirovich  |9 16754 
701 1 |a Spitsin  |b V. V.  |c economist  |c Associate Professor of Tomsk Polytechnic University, Candidate of economic sciences  |f 1976-  |g Vladislav Vladimirovich  |9 15195 
701 1 |a Khayrov  |b M. A.  |g Mark Albertovich 
701 1 |a Spitsina (Spitsyna)  |b L. Yu.  |c Economist  |c Associate Professor of Tomsk Polytechnic University, Candidate of economic sciences  |f 1976-  |g Lubov Yurievna  |9 18510 
801 0 |a RU  |b 63413507  |c 20251209  |g RCR 
856 4 0 |u https://doi.org/10.37256/cm.6620258482  |z https://doi.org/10.37256/cm.6620258482 
942 |c CF