As on the picture:

enter image description here

Could someone help me understand what exactly what delta means in the gradient descent algorithm?

  • If my intuition is correct, you sort of take a small step in the direction of the gradient. The gradient is a vector, consisting of all the partial derivatives, and points in the direction that the function grows the most... sort of... – Per Alexandersson Oct 27 '11 at 19:30
  • You should refresh your basics in multivariate calculus before attempting to understand gradient decent algorithm, as this (the partial derivative) is a very fundamental operator. – Chris says Reinstate Monica Oct 27 '11 at 19:31
  • Yes, i should. Thank You for informations. – Cadilac Oct 27 '11 at 19:33

The term is a derivative with respect to the theta 0.

  • Mark theta as coordinate on X-axis (let it be A)
  • Find corresponding coordinate on Y-axis (let it be B) so the point belongs to the function J
  • Draw tangent line to that function at the point (A, B)
  • The derivative is the slope of this tangent line.

enter image description here

The derivative is used to control two aspects of the cost function (J function) minimization:

  • direction - sign of the slope tells you in which direction you should move along the X-axis in order to converge J
  • rate - magnitude of the slope tells you how fast you should move
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    Thank You for that explanation. I will try to built in this knowledge to my mind. – Cadilac Oct 27 '11 at 19:42
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    "of the theta", or "with respect with theta_0"? – Eric O Lebigot Nov 13 '11 at 10:13

This is a partial derivative with respect to theta_0.

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  • Thank You for that. I will take this information and start to calculating math. – Cadilac Oct 27 '11 at 19:33

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