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Connection between discrete financial models and continuous models with Wiener and Poisson processes
Computer Research and Modeling, 2023, v. 15, no. 3, pp. 781-795The paper is devoted to the study of relationships between discrete and continuous models financial processes and their probabilistic characteristics. First, a connection is established between the price processes of stocks, hedging portfolio and options in the models conditioned by binomial perturbations and their limit perturbations of the Brownian motion type. Secondly, analogues in the coefficients of stochastic equations with various random processes, continuous and jumpwise, and in the coefficients corresponding deterministic equations for their probabilistic characteristics. Statement of the results on the connections and finding analogies, obtained in this paper, led to the need for an adequate presentation of preliminary information and results from financial mathematics, as well as descriptions of related objects of stochastic analysis. In this paper, partially new and known results are presented in an accessible form for those who are not specialists in financial mathematics and stochastic analysis, and for whom these results are important from the point of view of applications. Specifically, the following sections are presented.
• In one- and n-period binomial models, it is proposed a unified approach to determining on the probability space a risk-neutral measure with which the discounted option price becomes a martingale. The resulting martingale formula for the option price is suitable for numerical simulation. In the following sections, the risk-neutral measures approach is applied to study financial processes in continuous-time models.
• In continuous time, models of the price of shares, hedging portfolios and options are considered in the form of stochastic equations with the Ito integral over Brownian motion and over a compensated Poisson process. The study of the properties of these processes in this section is based on one of the central objects of stochastic analysis — the Ito formula. Special attention is given to the methods of its application.
• The famous Black – Scholes formula is presented, which gives a solution to the partial differential equation for the function v(t,x), which, when x=S(t) is substituted, where S(t) is the stock price at the moment time t, gives the price of the option in the model with continuous perturbation by Brownian motion.
• The analogue of the Black – Scholes formula for the case of the model with a jump-like perturbation by the Poisson process is suggested. The derivation of this formula is based on the technique of risk-neutral measures and the independence lemma.
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Fast and accurate x86 disassembly using a graph convolutional network model
Computer Research and Modeling, 2024, v. 16, no. 7, pp. 1779-1792Disassembly of stripped x86 binaries is an important yet non-trivial task. Disassembly is difficult to perform correctly without debug information, especially on x86 architecture, which has variablesized instructions interleaved with data. Moreover, the presence of indirect jumps in binary code adds another layer of complexity. Indirect jumps impede the ability of recursive traversal, a common disassembly technique, to successfully identify all instructions within the code. Consequently, disassembling such code becomes even more intricate and demanding, further highlighting the challenges faced in this field. Many tools, including commercial ones such as IDA Pro, struggle with accurate x86 disassembly. As such, there has been some interest in developing a better solution using machine learning (ML) techniques. ML can potentially capture underlying compiler-independent patterns inherent for the compiler-generated assembly. Researchers in this area have shown that it is possible for ML approaches to outperform the classical tools. They also can be less timeconsuming to develop compared to manual heuristics, shifting most of the burden onto collecting a big representative dataset of executables with debug information. Following this line of work, we propose an improvement of an existing RGCN-based architecture, which builds control and flow graph on superset disassembly. The enhancement comes from augmenting the graph with data flow information. In particular, in the embedding we add Jump Control Flow and Register Dependency edges, inspired by Probabilistic Disassembly. We also create an open-source x86 instruction identification dataset, based on a combination of ByteWeight dataset and a selection open-source Debian packages. Compared to IDA Pro, a state of the art commercial tool, our approach yields better accuracy, while maintaining great performance on our benchmarks. It also fares well against existing machine learning approaches such as DeepDi.
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Probabilistic-statistical model of insurance capital
Computer Research and Modeling, 2012, v. 4, no. 1, pp. 231-235The article reveals the necessity of introduction of new economic category such as “insurance capital”. Insurance activity generates a specific kind of capital (as a production factor) – the guarantee fund, which is called “primary insurance monetary capital". The article establishes that, due to its probabilistic and statistical nature, the insurance capital has a number of specific features in addition to conventional characteristics of capital as a production factor. Basing on probabilistic-statistical model author investigates the role of insurance capital in the formation of price for insurance services. In particular, the author exposes that the law of diminishing returns is not universal when talking about insurance capital.
Keywords: insurance capital, law of diminishing returns.Views (last year): 1. Citations: 2 (RSCI). -
Estimation of probabilistic model of employee labor process
Computer Research and Modeling, 2012, v. 4, no. 4, pp. 969-975Views (last year): 1.The mathematical estimation model for employee labor process, built on the basis of Bayesian network is presented in the article. The great attention is given to the estimation of qualitative characteristics of labor product. Usage of described model is supposed in the companies with the management employee workflows system.
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