3min chapter

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One Shot and Metric Learning - Quadruplet Loss (Machine Learning Dojo)

Machine Learning Street Talk (MLST)

CHAPTER

Axav - Beyond Triplet Loss

In the simplest classification architectures, i would argue that there's not a great deal of sensitivity to hypoprimetism. But when you start to introduce these complexities into your network architecture, all of a sudden it's become more complicated. We have this alpha hyper prameter. We now have to do the mining strategy and so on. What? What do we get for it? Because one thing that worries me is there is a sensitivity to hypeparameters, as you well know. If you set them to the wrong level or scale, your agrathm won't converge. It just makes everything have this propensity to go wrong. Yes? Well, athing more complex your

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