Below are the two ensemble models:1. E1(M1, M2, M3) and2. E2(M4, M5, M6)Above, Mx is the individual base models.Which of the following are more likely to choose if following conditions for E1 and E2 are given?E1: Individual Models accuracies are high but models are of the same type or in another term less diverseE2: Individual Models accuracies are high but they are of different types in another term high diverse in nature

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Machine learning (ML) is a branch of artificial intelligence that leverages data to improve computer performance by giving machines the ability to "learn", or improve performance — based on the data.

There are four basic approaches to machine learning: supervised learning, unsupervised learning, semi-supervised learning and reinforcement learning.


Below are the two ensemble models:<br>1. E1(M1, M2, M3) and<br>2. E2(M4, M5, M6)<br>Above, Mx is the individual base models.<br>Which of the following are more likely to choose if following conditions for E1 and E2 are given?<br>E1: Individual Models accuracies are high but models are of the same type or in another term less diverse<br>E2: Individual Models accuracies are high but they are of different types in another term high diverse in nature