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What is Machine Learning?Machine Learning is a branch of Artificial Intelligence(AI), in which we make our machines learn as humans learn from past data, gradually surpassing humans in predictions.
Machine Learning has gradually seen a massive increase and its applications are seen in the day-to-day things we use like Netflix.
The term ‘Machine Learning’ originally was invented based on a model of ‘Brain Cell Infection’.
The model was created in 1949 by Donald Hebb in a book titled ‘The Organisation of Behaviour’, which presents Hebb’s theories on neuron excitement and communication between neurons.
Later, an American Pioneer Arthur Samuel coined the term ‘Machine Learning in 1959.
Arthur Samuel defined Machine Learning as “ a field of study that gives computers the ability to learn without being explicitly programmed”.
Artificial Intelligence is a string software tool that eliminates repetitive tasks in the workforce and elevates human intelligence with creativity and innovation.
Here are potential reasons to prove the legitimacy of AI and ML.
Driven by increased adoption of mobile channels, financial service players are constantly evolving every interaction: from innovative customer touchpoints to integrated journeys via the application, developing consistency of experience across digital and human channels.Rethinking customer conversationsChatbots continue their disruptions in various forms of customer engagement where the customer needs for enhanced UX - user experience is constantly bettered through a combination of Ai-NLP.
To better customer communication, chatbots utilise a combination of NLP or natural language processing and artificial intelligence (AI) to provide relevant information to customers.
Financial Service players have adopted them in various ways.Read more: click here
Resolving the problem of bias and variation is only about coping with over-fitting and under-fitting.
Bias is minimized, and the variance concerning the complexity of the model is increased.Read Full Article: https://bit.ly/2NsIaF4