* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project
Download Intelligent Systems
Artificial intelligence in video games wikipedia , lookup
Neural modeling fields wikipedia , lookup
Technological singularity wikipedia , lookup
Agent-based model wikipedia , lookup
Computer vision wikipedia , lookup
Personal knowledge base wikipedia , lookup
Human–computer interaction wikipedia , lookup
Embodied cognitive science wikipedia , lookup
Wizard of Oz experiment wikipedia , lookup
Computer Go wikipedia , lookup
Ecological interface design wikipedia , lookup
Incomplete Nature wikipedia , lookup
Intelligence explosion wikipedia , lookup
Knowledge representation and reasoning wikipedia , lookup
Existential risk from artificial general intelligence wikipedia , lookup
Philosophy of artificial intelligence wikipedia , lookup
INTELLIGENT SYSTEMS ARTIFICIAL INTELLIGENCE APPLICATIONS IN BUSINESS LEARNING OBJECTIVES  Describe decision models and the benefits of computer supported decision making and experimentation  Describe artificial intelligence (AI)  Compare capabilities for natural (human) intelligence versus artificial intelligence  Define an expert system and identify its components  Discuss intelligent system examples that illustrate various forms of problem representation and reasoning  Identify intelligent systems applications in business functional areas DECISION MODELS  Data + models = decisions  Models are representations of problems that vary by degree of abstraction  Examples include:  Iconic (scale) models – least abstract   Analog models   Linear programs, statistical models Mental models – most abstract   Organizational charts, blueprints Mathematical (quantitative) models   Car or house scale model Consumer behavior models Other examples include visualization methods, geographic information systems, and virtual reality BENEFITS OF COMPUTER SUPPORTED DECISION SYSTEMS  Cost of virtual experimentation is lower  Compresses time  Manipulations are easier  Cost of mistakes is lower  Can evaluate risk and uncertainty  Can compare a large number of alternatives  Can be used for training INTELLIGENT SYSTEMS  Intelligent systems is a term that best describes the various commercial applications of artificial intelligence  Artificial intelligence (AI) is a subfield of computer science that is concerned with studying the thought processes of humans and re-creating the effects of those processes via machines, such as computers and robots  AI’s ultimate goal is to build machines that will mimic human intelligence  An interesting test to determine whether a computer exhibits intelligent behavior was designed by Alan Turing (the Turing test) COMPARISON OF THE CAPABILITIES OF NATURAL VERSUS ARTIFICIAL INTELLIGENCE Capabilities Natural Intelligence Artificial Intelligence Preservation of knowledge Perishable Permanent Duplication and sharing of knowledge Difficult, expensive, takes time Easy, fast, and cheap when in the right format Total cost of knowledge Can be erratic and inconsistent Consistent and thorough Documentability of knowledge Difficult, expensive Fairly easy, inexpensive Creativity Can be very high Low, uninspired Use of sensory experiences Direct and rich in possibilities Limited Recognizing patterns and relationships Fast, easy to explain Getting better, but not as good as humans Reasoning Makes use of a wide range of experiences Good only in narrow, focused, stable domains EXPERT SYSTEMS  When an organization has a complex decision to make or problem to solve, it often turns to experts for advice  Expert systems (ESs) are computer systems that attempt to mimic human experts by applying expertise in a specific domain  The transfer of expertise from an expert to a computer and then to the user involves four activities:  Knowledge acquisition  Knowledge representation  Knowledge inferencing  Knowledge transfer EXPERT SYSTEM STRUCTURE QUESTION?  What makes a system “intelligent”? ANSWER  Intelligent systems include one, or more, of the following capabilities:   Reasoning  Deductive  Inductive  Analogical (extremely difficult to implement in AI systems) Rationality   Efficient search for answers Learning  Incorporate knowledge learned from past experience to improve decision making over time INTELLIGENT SYSTEM EXAMPLES  Machine (concept) learning  Case-based reasoning  Decision trees  Other examples:  Rule-based expert systems   Natural language processing (NLP)   For example, a bird classification expert system NLP involves the largest knowledge base and most complex inference processes How could intelligent systems be used in:  Accounting?  Marketing?  Manufacturing?  Computer network management?
 
									 
									 
									 
									 
									 
									 
									 
									 
									 
									 
									 
                                             
                                             
                                             
                                             
                                             
                                             
                                             
                                             
                                             
                                             
                                            