Fundamental Analysis Support for Financial Statement. Using

Fundamental Analysis Support for Financial Statement. Using

FAST: Fundamental Analysis Support for Financial Statements. Using semantics for trading recommendations Alejandro Rodríguez-González & Ricardo Colomo-Palacios & Fernando Guldris-Iglesias & Juan Miguel Gómez-Berbís & Angel García-Crespo Abstract Trading systems are tools to aid financial analysts According to (Wen et al. 2010), the study of the stock in the investment process in companies. This process is highly market is a hot topic, because if successful, the result will complex because a big number of variables take part in it. transfer to fruitful rewards. Moreover, Qian and Rasheed Furthermore, huge sets of data must be taken into account to (2006) argue that stock market prediction is attractive and perform a grounded investment, making the process even challenging, although this market is extremely hard to more complicated. In this paper we present a real trading model with any reasonable accuracy (Wang 2003). Stock system that has been developed using semantic technologies. market fluctuations are also the result of complex phenomena These cutting-edge technologies are very useful in this context (Sitte and Sitte 2002). However, despite this complexity, because they enable the definition of schemes that can be used many factors, including macroeconomic variables and stock for storing financial information, which, in turn, can be easily market analysis, have been proven to have a certain level of accessed and queried. Additionally, the inference capabilities forecast capability in the stock market during a certain period of the existing reasoning engines enable the generation of a set of time (Lo et al. 2000). Stock market research encapsulates of rules supporting this investment analysis process. two elemental trading philosophies: fundamental and techni- cal approaches (Schumaker and Chen 2009). This paper Keywords Trading system . Semantic technologies . focuses on the first one. In fundamental analysis, stock Fundamental analysis . Reasoning market price movements are believed to be derived from earnings, ratios, and management effectiveness to determine future forecasts. In other words, the price of a security can be 1 Introduction determined through the nuts and bolts of financial numbers (Schumaker and Chen 2009). Predicting stock market movements is the long cherished According to Yoda (1994), investment analysis tools can desire of investors, speculators, and industries (Kim 2004). be classified into mechanical tools. Mechanical tools include traditional tools by technical analysis, fundamental * : : A. Rodríguez González: ( ) R. Colomo: Palacios analysis and other expanded tools from these two types of F. Guldris Iglesias J. M. Gómez Berbís A. García Crespo analysis. Intelligent tools are the mechanisms which apply Computer Science Department, Universidad Carlos III de Madrid, intelligent techniques to solve problems, where soft Av. Universidad 30, Leganés, 28911 Madrid, Spain computing is the major representative (Chen and Liao e mail: [email protected] 2007). Having this taxonomy in mind, mixing both R. Colomo Palacios investment tools can be seen as an interesting field of e mail: [email protected] study, particularly by building a solution capable of making F. Guldris Iglesias recommendations on the basis of fundamental analysis and e mail: [email protected] improving these recommendations by means of combining J. M. Gómez Berbís a set of technologies. Following this research trend, we e mail: [email protected] present in this paper FAST (Fundamental Analysis System A. García Crespo for Trading): a tool designed to aid investors in the e mail: [email protected] investment process helping to take the most appropriate 1 decision (buy, sell or maintain the share values) in a long Concerning semantic technologies, in the last few years, term investment. several finance-related ontologies have been developed. The remainder of the paper is structured as follows. The ontology TOVE (Toronto Virtual Enterprise) (Fox et al. Section 2 reviews the relevant literature. Section 3 dis- 1998), developed by the Enterprise Integration Laboratory cusses the main features of FAST. Section 4 describes the from the Toronto University, describes a standard organi- evaluation of the tool’s performance including a description zation company as their processes. BORO (Business of the sample, the method, results and discussion. Finally, Object Reference Ontology) ontology is intended to be the paper ends with a discussion of research findings, suitable as a basis for facilitating, among other things, limitations and concluding remarks. the semantic interoperability of enterprises’ operational systems (Partridge and Stefanova 2001). The DIP (Data Information and Process Integration) consortium devel- 2 Background oped an ontology for the financial domain which was mainly focused to describe semantic web services in the Stock market prediction is attractive and challenging, but stock market domain (Losada et al. 2005). The eXtensible also a very difficult issue (Qian and Rasheed 2006). Along Business Reporting Language (XBRL) Ontology Specifi- with the development of artificial intelligence, more and cation Group developed a set of ontologies for describing more researchers try to build automatic decision-making financial and economical data in Resource Description systems to predict the stock market (Kovalerchuk and Framework (RDF) for sharing and interchanging data. Vityaev 2000). Thus, soft computing is progressively This ontology is becoming an open standard means of gaining presence in the financial world (Mochón et al. electronically communicating information among busi- 2008). Soft computing techniques such as fuzzy logic, neural nesses, banks, and regulators (XBRL International 2009). networks, and probabilistic reasoning draw most attention However, the approach of this work is quite different. In the because of their abilities to handle uncertainty and noise in the FAST system, semantic technologies are applied with two stock market (Vanstone and Tan 2005). The main reasons for objectives: in the first place, semantic technologies are used their popularity include the ability of neural networks to with the objective of defining and using a financial ontology ‘learn’ from the past and produce a generalized model to where several financial data will be stored. This storage is used forecast future prices, freedom to incorporate fundamental with the intention of reusing the ontology in future systems and and technical analysis into a forecasting model and the of knowledge sharing. The second objective is the application ability to adapt according to market conditions (Majhi et al. of the inference capabilities that semantic technologies offer. 2009). Their approach basically employs case-based reason- ing approach, i.e., it tries to find a similar case from the past to a given situation (Lee et al. 2010). 3 FAST: Calculations, internals and architecture Recently, in the first decade of the 21st century, various studies using Artificial Neural Networks (ANN) have been FAST is based on semantic technologies. Taking full developed in the fields of forecasting stock indexes (e.g. advantage of these technologies, FASTallows the generation Chavarnakul and Enke 2008; Majhi et al. 2009). Most of of investments for a set of companies, using some financial the work is the combination of soft computing technology information stored in an ontology format. The development and technical analysis in stock analysis (Wen et al. 2010; of the system is based in the reutilization and the Chen et al. 2009; Fernandez Garcia et al. 2010). Although improvement of SONAR (Gomez et al. 2009) bringing a technical analysis is the most popular area of research, complementary approach to CAST (Rodríguez-González et fundamental analysis is mostly for long-term investment al. 2011). Therefore, the ontology developed in SONAR has decision (Quah 2009), due to the fact that most fundamental been used for the storage of the financial information variables are available inamonthlyorannualbasis necessary to execute part of the system. SONAR is also (Anastasakis and Mort 2009). However, as reported in (Quah present given that new knowledge is provided by this 2009) it is feasible to complement fundamental and technical system and for hence, new financial information is provided analysis in an expert system. In the work of Vanstone and by SONAR. However, the purpose of that ontology was not Finnie (Vanstone and Finnie 2009), a deep literature review only to save the minimum information required for the about the applications of ANN to both fundamental and inference of the system, but also to save a lot of other technical analysis can be found. One of the recent and financial information (e.g. older share values, news about promising works devoted to the use of fundamental analysis the company…), which is not required in FAST. is the work by Quah (2009), in this work, author suggest the FAST is based in the use of concrete financial data, use soft-computing models which focus on applying which is stored in a repository, in order to make long term fundamental analysis for equities screening. predictions for a concrete company in a concrete market 2 (Markowitz 1952; Roy 1952; Sharpe 1966; Mullins 1982). format. In what follows the main components and features Figure 1 shows the main architecture of the FAST system of FAST are depicted. and the connections among their components. The workflow of the system is as follows. The user queries

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