Hypothesis Space
The hypothesis space is 2 2 4 65536 because for each set of features of the input space two outcomes 0 and 1 are possible.
Hypothesis space. It is typically defined by a hypothesis language possibly in conjunction with a language bias. But this space of possible solutions may be highly constrained by the linear functions in classical statistical analysis and machine learning techniques. One example is the perceptron which only examines functions that map all points on one side of a hyperplane to 0 and all other points to 1.
The hypothesis space used by a machine learning system is the set of all hypotheses that might possibly be returned by it. Hypothesis space is the set of all the possible legal hypothesis. Functions from your inputs to your outputs that can be returned by a model.
The hypothesis space is the set of all possible hypotheses i e. This is the set from which the machine learning algorithm would determine the best possible only one which would best describe the target function or the outputs.