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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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