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www rspsciencehub com volume 02 issue 07 july 2020 machine learning amalgamation of mathematics statistics and electronics 1 2 3 4 trupti s gaikwad snehal a jadhav ruta r vaidya ...

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          www.rspsciencehub.com                                                              Volume 02  Issue 07 July 2020 
                                                                                                                          
          Machine learning amalgamation of Mathematics, Statistics and Electronics 
                             1                  2                 3                     4
          Trupti S. Gaikwad , Snehal A. Jadhav , Ruta R. Vaidya , Snehal H. Kulkarni  
          1,2,3,4  Trupti  S.  Gaikwad,  Dept.  of  Computer  Science,  Vishwakarma  College    of  Arts,  Commerce  and 
          Science, Maharashtra, India 
                                      1
          trupti08jadhav@gmail.com  
          Abstract 
           
          Interdisciplinary research is a manner of research carried out by an individual or group of persons. The 
          knowledge, data, techniques, concepts are incorporated from two or more disciplines. In this paper we 
          tried to throw light on this concept. Machine learning is a branch of computer science which uses the 
          information,  tools  for  collection  of  data,  methods  for  analysis  from  the  subjects  like  Electronics, 
          Mathematics and Statistics.  Why we use machine learning? Because it plays an influential role in 
          prediction of data. Machine learning is used to find hidden patterns and essential ideas from data as 
          well as it solve complex problems. In today’s world, many applications have large volume of data like 
          structured, unstructured and semi structured. This unexploited resource of knowledge can be used to 
          improve business decisions. As data diversifies many are adapting to machine learning tool for analysis 
          of data, so that, they can exploit intelligence and benefit from that data at most. Machine learning 
          adopts different algorithms and each algorithm performs different functionality. In this paper, we tried 
          to  explain  through  example,  how  Electronics  is  used  for  collection  of  data  while  Mathematics  and 
          Statistics are used for analysis and finally using Machine learning results can be predicted. 
          Keywords: Machine learning, Analysis, Statistics, Electronics, Mathematics  
                                                                    science. In conventional programming, algorithms 
             1.  Introduction                                       are explicitly written for problem solving used by 
          Machine learning is intersection of Mathematics, 
          Statistics, probabilistic, Electronics, and Computer      computer.  On  other  hand  machine  learning  is  a 
          Science. Machine learning uses algorithm to learn         concept  that  a  machine  can  learn  from  past 
          iteratively from data and using positive feedback         experience  and  previously  solved  examples, 
          can  build  an  intelligent  application.  Though         without    being   explicitly   programmed.      For 
          machine     learning   differs   from     traditional     example,  biometric  attendance,  fraud  detection, 
          computational  access,  it  is  part  of  computer        face recognition, text recognition etc. 
                                                                                                                    
       International Research Journal on Advanced Science Hub (IRJASH)                                               100 
           
          www.rspsciencehub.com                                                                  Volume 02  Issue 07 July 2020 
          1.1 What is Machine Learning?                                    estimate the mapping function so that for new 
          Machine  learning  is  the  study  of  computer                  input  data  (X),  the  algorithm  can  predict  the 
          algorithms  that  improve  automatically  through                output variable (Y) for that data. 
          experience  [1-4].  It  provides  ability  to  system,               The  process  of  learning  of  the  algorithm 
          learn  and  improve  using  previous  experience                     from  the  training  data  set,  it  can  be 
          without  being  explicitly  programmed.  It  mainly                  considered  as  a  teacher  supervising  the 
          focuses on the development of a program so that                      learning  process  so  that  it  is  called 
          they can access data and learn it for themselves.                    supervised  learning.  It  can  be  further 
                                                                               grouped into  regression  and  classification 
                                Electronics                                    problem. 
                                                                               Examples of supervised learning algorithm 
                                                                               are 
               Maths                                                               1.  For      classification     problems- 
                                 Machine             Statistics                        Support vector machines 
                                  learning
                                                                                   2.  For  regression  problem-  Linear 
                                                                                       regression 
          Fig.1. Interdisciplinary Machine Learning                                3.  For  classification  and  regression 
          How machine learning works?                                                  problem- Radom forest. 
          The  learning  process  starts  with  observations  or              Unsupervised          machine        learning- 
          data, like direct experience, example or instruction,                Unsupervised  machine  learning  has  only 
          so that it will find patterns for data and make better               input  data  (X).  It  does  not  have  related 
          determination     about    future   based  examples                  output  variable  (Y).  To  acquire  more 
          provided. The main goal is to allow the system to                    knowledge  about  the  data  underlying 
          learn  automatically  without  human  intervention                   structure is designed or distribution in the 
          and  modify  actions  accordingly.  It  has  different               data  is  done.  It  is  called  unsupervised 
          types  of  algorithm.  Machine  learning  algorithms                 learning  because  it  does  not  have  correct 
          are classified as:                                                   answer and teacher. Algorithms itself can 
             Supervised  machine  learning-  In  supervised                   discover    and  present  the  interesting 
              machine learning input variable (X) use by an                    structure  in  the  data.  It  can  further  group 
              algorithm to give an output variable (Y). Here                   into clustering and association problems. 
              the algorithm learns the mapping function from                   Unsupervised  learning  algorithm  uses 
              input to the output. The mapping function is Y                   following algorithms  
              =  f(X).  The  main  aim  of  an  algorithm  is  to                 1.  For clustering problem-k means 
                                                                                                                          
       International Research Journal on Advanced Science Hub (IRJASH)                                                     101 
           
             www.rspsciencehub.com                                                                                        Volume 02  Issue 07 July 2020 
                                   2.  For  association  rule  mining-                         
                                        Apriori algorithm                                         
                      Semi supervised machine learning-                                                                                            Regression
                       In semi supervised machine learning only                                                           Supervised 
                       for  some  of  input  variable(X),  an  output                                                      Learning
                                                                                                                                                   Classification
                       variable (Y) is present. It is a composite of 
                       supervised          machine          learning         and                                                                     Clustering
                                                                                                Machine                 Unsupervised 
                       unsupervised machine algorithm. Here we                                  Learning                   Learrning
                                                                                                Algorihm                                            Association 
                       can use both                                                                                                                  Problems
                       i)   Supervised  learning  technique  where                                                     Semi-supervised 
                                                                                                                           Learning
                            we want best prediction for unlabeled 
                                                                                                                        Reinforcement 
                            data, so that we can feed that data back                                                       Learning
                            to  supervised  learning  algorithm  as                                                                                                  
                            training  data  and  use  that  model  to                         Fig.2. Classification of Machine Learning 
                                                                                                                     Algorithm 
                            make prediction for new unseen data.                              
                                                                                              
                       ii)  Unsupervised  learning  technique  to                         1.2  Electronics:  Elementary  component  of 
                            find and learn the structure in the input                     machine learning 
                            variables.                                                     
                            Most of today's real world problems are                       Electronics is primary element whenever we talk 
                            from  this  type  as  problems  can  be                       about  automated  or  intelligent  or  smart  systems. 
                            expensive or cheap. For expensive label                       Electronics  and  different  branches  of  computer 
                            problems domain experts are required                          science like machine learning, artificial intelligence 
                            and cheap unlabeled problems are easy                         are  blended  together  to  invent  new  applications. 
                            to collect and store data.                                    The use of machine learning in engineering field is 
                                                                                          very vital for signal processing. Due to this, there is 
                      Reinforcement  Learning-  The  machine  is                         increase  in  accuracy  and  quality  when  sound, 
                       exposed to environment and it learns itself                        images, and other inputs are transmitted. Machine 
                       by  using  positive  feedback  and  negative                       learning  algorithms  are  helpful  to model  signals, 
                       feedback.    The  machine  learns  from  past                      for    pattern      detection,       to    draw  meaningful 
                       experience. It is directed to make specific                        inferences, and make precise adjustments to signal 
                       decisions.  It  tries  to  capture  the  best                      output.[5-8] 
                       possible  knowledge  to  make  accurate                            To feed the data in machine learning systems signal 
                       business decisions.                                                processing techniques are useful. 
                                                                                                                                                         
         International Research Journal on Advanced Science Hub (IRJASH)                                                                                   102 
              
          www.rspsciencehub.com                                                                Volume 02  Issue 07 July 2020 
           Digital  signal  processing  and  digital  image          Singular Value Decomposition (SVD) etc.  
          processing these two are used in many applications         Natural  language  processing  on  tabular  datasets, 
          along with machine learning.                               data  files  such  as  encoding  and  dimensionality 
                                                                     reduction,  images  etc  is  applications  of  Linear 
          Smart sensors  are  also  used  along  with  machine       Algebra in machine learning. 
          learning for developing number of applications like        Multivariate  Calculus:  The  most  of  machine 
          weather forecast system, in healthcare instruments,        learning  algorithms  are  trained  on  multiple 
          in smart home systems etc.                                 variables. It helps to better quantify and predict the 
          1.3 Mathematics behind machine learning                    information  accurately.  Laplacian  and  Lagragian 
                                                                     Distribution, Vector-Values Functions, Directional 
          Mathematics is main part of machine learning as it         Gradient,  Differential  and  Integral  Calculus, 
          is used at backend. Machine learning acquires data         Partial  Derivatives,  Jacobian  are  the  methods  of 
          through algorithms and then uses this data to make         Multivariate  Calculus  use  in  machine  learning. 
          predictions.     Machine       Learning      requires      Examples  of  Multivariate  Calculus  include 
          mathematical  knowledge.  It  includes  linear             calculation of monthly rain fall, temperature and 
          Algebra,  Calculus,  Statistics,  Discrete  Maths,         wind speed and so on. 
          Probability and Optimization which help to create          Graph  theory:  Graphs  represent  flow  of 
          algorithms.  It  includes  accuracy,  training  time,      computation. Graph learning models can be used 
          model complexity, choosing parameter setting and           to  learn  machine  learning  algorithms.  Graphs 
          validation strategies. Importance of Math’s topics         represent  computationally  various  matrices  while 
          needed for machine learning is:                            matrix provides different types of information. The 
          Linear Algebra: It is  the  backbone  of  machine          machine  learning  models    having  graph  like 
          learning. To find the values of variables X and Y          structure  are  K-mean,  K-nearest  neighbours, 
          matrix  operations  are  used  which  are  parts  of       Decision trees, Random forest, neural networks. 
          linear  algebra.  Due  to  this,  linear  algebra  is       
          necessary  in  machine  learning.  Not  only  all  the     1.4 Statistics: Prerequisite of machine learning 
          operations in Linear Algebra are systematic rules          Statistics plays important role in machine learning. 
          but also structural representation of the knowledge        Definitely  statistical  knowledge  is  applied  to 
          that  a  computer  can  understand  easily.  Topics        machine  learning  through  predictive  analysis. 
          needed for understanding the methods of machine            Following are the examples where Statistics can be 
          learning in Linear Algebra are LU decomposition,           applied in machine learning. 
          orthogonalization,  matrix  operations,  projections,             Problem Designing 
          Eigen  values,  Eigen  vectors,  Vector  spaces,                  Sympathize Data 
                                                                                                                       
       International Research Journal on Advanced Science Hub (IRJASH)                                                  103 
           
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...Www rspsciencehub com volume issue july machine learning amalgamation of mathematics statistics and electronics trupti s gaikwad snehal a jadhav ruta r vaidya h kulkarni dept computer science vishwakarma college arts commerce maharashtra india truptijadhav gmail abstract interdisciplinary research is manner carried out by an individual or group persons the knowledge data techniques concepts are incorporated from two more disciplines in this paper we tried to throw light on concept branch which uses information tools for collection methods analysis subjects like why use because it plays influential role prediction used find hidden patterns essential ideas as well solve complex problems today world many applications have large structured unstructured semi unexploited resource can be improve business decisions diversifies adapting tool so that they exploit intelligence benefit at most adopts different algorithms each algorithm performs functionality explain through example how while final...

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