Classroom Companion: Business
Download 5.51 Mb. Pdf ko'rish
|
Introduction to Digital Economics
Chapter 20 · Big Data Economics 311 20 Box 20.1 Artificial Intelligence, Machine Learning, Expert Systems, and Data Mining Big data analytics often requires com- plex computational methods and draws on methods developed in other fields of computer science. Artificial intelligence (AI) is “defined as a system’s ability to correctly interpret external data, to learn from such data, and to use those learnings to achieve specific goals and tasks through flexible adapta- tion” (Kaplan & Haenline, 2019 ). Big data analysis is not a subfield of AI but may apply methods and tools developed for AI, for example, advanced search algorithms to identify hidden information, image analysis for face recognition, learning algo- rithms predicting customer behavior that can be used for targeting advertisements and individual pricing, trading algorithms for the stock market, trend predictions, and several other technologies. Machine learning uses computer algorithms that are automatically updated and modified as new informa- tion and experience is gathered about the family of problems to be solved. Machine learning is an efficient method in cases where the algorithms are too complex or infeasible for standard algo- rithm design, for example, for spam fil- ters for emails and navigators for trucks in automated warehouses. Expert systems consist of a knowl- edge base and a set of inference algorithms. The knowledge base is con- tinuously updated by external input and by internal machine learning algo- rithms where results of earlier predic- tions are fed back to the knowledge base. The inference algorithms consist of if-then rules to estimate the conse- quences of a decision (scenario analy- sis and decisions under uncertainty). Expert system technology may be used to manage business operations and cus- tomer relations. Data mining refers to large-scale data analysis methods to discover pat- terns and dependencies in complex data sets, in particular, unknown patterns and dependencies. Among the meth- ods used are AI, machine learning, statistics, mathematical inference, and database management. One particu- larly challenging problem in statistical analysis of complex data sets is causal- ity. The purpose of causality analysis is threefold (Pearl, 2009 ): 5 To determine if two variables actually depend on each other and, if so, to determine which of them is the cause and which is the effect 5 To determine if two independent variables are correlated because there is a common cause that the two variables are correlated 5 To determine if the variables are independent and the correlation between them is accidental To make things even worse, correlation implies that the two variables are lin- early related. If this is not the case, the variables may by strongly related, but the correlation between them is zero; for example, if one of the variables increases as the square of the other variable, then the variable are strongly related but the correlation between them is zero! Download 5.51 Mb. Do'stlaringiz bilan baham: |
Ma'lumotlar bazasi mualliflik huquqi bilan himoyalangan ©fayllar.org 2024
ma'muriyatiga murojaat qiling
ma'muriyatiga murojaat qiling