SUPERVISED LEARNING ALGORITHMS CLASSIFICATION AND REGRESSION ALGORITHMS

·
· Xoffencerpublication
Libër elektronik
210
Faqe
Vlerësimet dhe komentet nuk janë të verifikuara  Mëso më shumë

Rreth këtij libri elektronik

The branch of computer science known as machine learning is one of the subfields that is increasing at one of the fastest rates now and has various potential applications. The technique of automatically locating meaningful patterns in vast volumes of data is referred to as pattern recognition. It is possible to provide computer programs the ability to learn and adapt in response to changes in their surroundings via the use of tools for machine learning. As a consequence of machine learning being one of the most essential components of information technology, it has therefore become a highly vital, though not always visible, component of our day-to-day life. As the amount of data that is becoming available continues to expand at an exponential pace, there is good reason to believe that intelligent data analysis will become even more common as a critical component for the advancement of technological innovation. This is because there is solid grounds to believe that this will occur. Despite the fact that data mining is one of the most significant applications for machine learning (ML), there are other uses as well. People are prone to make mistakes while doing studies or even when seeking to uncover linkages between a lot of distinct aspects. This is especially true when the analyses include a large number of components. Data Mining and Machine Learning are like Siamese twins; from each of them, one may get a variety of distinct insights by using the right learning methodologies. As a direct result of the development of smart and nanotechnology, which enhanced people's excitement in discovering hidden patterns in data in order to extract value, a great deal of progress has been achieved in the field of data mining and machine learning. These advancements have been very beneficial. There are a number of probable explanations for this phenomenon, one of which is that people are currently more inquisitive than ever before about identifying hidden patterns in data. As the fields of statistics, machine learning, information retrieval, and computers have grown increasingly interconnected, we have seen an increase in the led to the development of a robust field that is built on a solid mathematical basis and is equipped with extremely powerful tools. This field is known as information theory and statistics. The anticipated outcomes of the many different machine learning algorithms are culled together into a taxonomy that is used to classify the many different machine learning algorithms. The method of supervised learning may be used to produce a function that generates a mapping between inputs and desired outputs. The production of previously unimaginable quantities of data has led to a rise in the degree of complexity shown across a variety of machine learning strategies. Because of this, the use of a great number of methods for both supervised and unsupervised machine learning has become obligatory. Because the objective of many classification challenges is to train the computer to learn a classification system that we are already familiar with, supervised learning is often used in order to find solutions to problems of this kind. The goal of unearthing the accessibility hidden within large amounts of data is well suited for the use of machine learning. The ability of machine learning to derive meaning from vast quantities of data derived from a variety of sources is one of its most alluring prospects. Because data drives machine learning and it works on a large scale, this goal will be achieved by decreasing the amount of dependence that is put on individual tracks. Machine learning functions on data. Machine learning is best suited towards the complexity of managing through many data sources, the huge diversity of variables, and the amount of data involved, since ML thrives on larger datasets. This is because machine learning is ideally suited towards managing via multiple data sources. This is possible as a result of the capacity of machine learning to process ever-increasing volumes of data. The more data that is introduced into a framework for machine learning, the more it will be able to be trained, and the more the outcomes will entail a better quality of insights. Because it is not bound by the limitations of individual level thinking and study, ML is intelligent enough to unearth and present patterns that are hidden in the data.

Rreth autorit

Dr. Aadam Quraishi, MD, MBA has research and development roles involving some combination of NLP, deep learning, reinforcement learning, computer vision, predictive modeling. He is actively leading team of data scientists, ML researchers and engineers, taking research across full machine learning life cycle - data access, infrastructure, model R&D, systems design and deployment.

ANIL WURITY, working as an Assistant Professor in the Department of Information Technology JNTU Gurajada Vizianagaram College of Engineering, has about 10 years of teaching experience. He received his B.Tech degree in Information Technology and M.Tech degree in Computer Science and Technology from Gitam University, Visakhapatnam. His areas of research include Machine Learning, Network Security, IoT Security.

Vlerëso këtë libër elektronik

Na trego se çfarë mendon.

Informacione për leximin

Telefona inteligjentë dhe tabletë
Instalo aplikacionin "Librat e Google Play" për Android dhe iPad/iPhone. Ai sinkronizohet automatikisht me llogarinë tënde dhe të lejon të lexosh online dhe offline kudo që të ndodhesh.
Laptopë dhe kompjuterë
Mund të dëgjosh librat me audio të blerë në Google Play duke përdorur shfletuesin e uebit të kompjuterit.
Lexuesit elektronikë dhe pajisjet e tjera
Për të lexuar në pajisjet me bojë elektronike si p.sh. lexuesit e librave elektronikë Kobo, do të të duhet të shkarkosh një skedar dhe ta transferosh atë te pajisja jote. Ndiq udhëzimet e detajuara në Qendrën e ndihmës për të transferuar skedarët te lexuesit e mbështetur të librave elektronikë.