Page 188 - Data Science Algorithms in a Week
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172               Luis Rabelo, Edgar Gutierrez, Sayli Bhide et al.

                       techniques have opened doors that increase the level of complexity in problem solving.
                       This has provided the environment for the renaissance of a new analytics paradigm that is
                       trying to deal with continuously changing environments. This new paradigm focuses on
                       the ability to recognize change and react quickly. For example, advanced analytics uses
                       continuous  data  sampling  to  provide  additional  insights  that  further  enhance  strategic
                       decisions  and  may  assist  decision  makers  in  identifying  new  business  opportunities
                       and/or new relationships, which may also support innovation and creativity (Legarra et
                       al.,  2016).  One  very  important  aspect  is  the  ability  to  forecast  future  perceptions  and
                       calculate the risk of potential outcomes. The incorporation of big data capabilities can
                       further enhance such approaches through rich data sources and computational capabilities
                       that provide additional insights across a value network and/or life cycle along with real
                       time identification and tracking of key factors. Although big data technologies currently
                       exist, consensus on tools and techniques for managing and using big data to extracting
                       valuable  insights  is  not  well  established  (Gobble,  2013).  Organizations  are  currently
                       trying  to  gain  a  better  understanding  of  the  new paradigm  and  the  associated benefits
                       from the viewpoint of big data and advanced analytics. Complexity is always the issue.
                          Predictive  analytics  is  one  form  of  advanced  analytics.  Predictive  analytics  uses  a
                       combination of data which may include historical, auxiliary, structured, and unstructured
                       data to forecast potential actions, performance, and developments. This form of advanced
                       analytics  is  considered  more  involved  and  technologically  demanding  than  visual  and
                       descriptive analytics. This is because predictive analytics involves statistical techniques,
                       AI techniques, OR/MS modeling, simulation, and/or hybrids of them to create predictive
                       models that quantify the likelihood of a particular outcome occurring in the future. In
                       addition, predictive analytics are part of systems which try to tame complexity.
                          Predictive analytics uses statistical techniques, AI and OR/MS modeling, simulation,
                       and/or hybrids. AI includes a large diverse universe of different types of techniques. The
                       traditional side of AI involve ontologies, semantics, expert systems, and reasoning. On
                       the other hand, the machine learning side of AI includes supervised, unsupervised and
                       reinforcement  learning,  including  artificial  neural  networks,  support  vector  machines,
                       deep  learning,  evolutionary  algorithms  (EAs)  and  other  metaheuristics,  and  regression
                       trees.
                          Evolutionary algorithms is a family of techniques for optimization inspired by natural
                       evolution. Blum et al. (2012) stated that EA “is an algorithm that simulates – at some
                       level  of  abstraction  –  a  Darwinian  evolutionary  system.”  The  most  popular  EAs  are
                       Genetic Algorithms (GAs), Genetic Programming (GP), Evolutionary Strategies (ES) and
                       Evolutionary  Programming  (EP).  GP  is  a  very  useful  technique  that  has  become
                       dominant and well developed in the last twenty years. GP is generally applicable to a
                       wide range of predictive analytics problems
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