In linear or logistic regression if we find a hypothesis function which fits the training set perfectly then it should be a good thing because in that case we have used 100 % of the information given to predict new information.
While it is called to be overfitting and said to be bad thing.
By making the hypothesis function simpler we may be actually increasing the noise instead of decreasing it.
Why is it so?
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Overfitting occures when you try "too hard" to make the examples in the training set fit the classification rule. It is considered bad thing for 2 reasons main reasons:
Example: According to Occam's razor, you should tolerate the misclassified sample, and assume it is noise or insegnificant, and adopt the simple solution (green line) in this data set: 


Because you actually didn't "learn" anything from your training set, you've just fitted to your data. Imagine, you have a onedimensional regression
The function, defined this way
will give you perfect fit, but it's actually useless. Hope, this helped a bit:) 


Assuming that your regression accounts for all source of deviation in your data, then you might argue that your regression perfectly fits the data. However, if you know all (and I mean all) of the influences in your system, then you probably don't need a regression. You likely have an analytic solution that perfectly predicts new information. In actuality, the information you possess will fall short of this perfect level. Noise (measurement error, partial observability, etc) will cause deviation in your data. In response, a regression (or other fitting mechanism) should seek the general trend of the data while minimizing the influence of noise. 


Actually, the statement is not quite correct as written. It is perfectly fine to match 100% of your data if your hypothesis function is linear. Every continuous nonlinear function may be approximated locally by a linear function which gives important information on it's local behavior. It is also fine to match 100 points of data to a quadratic curve if that data matches 100%. You can have high confidence that you are not overfitting your data, since the data consistently shows quadratic behavior. However, one can always get 100% fit by using a polynomial function of high enough degree. Even without the noise that others have pointed out, though, you shouldn't assume your data has some high degree polynomial behavior without having some kind of theoretical or experimental confirmation of that hypothesis. Two good indicators that polynomial behavior is indicated are:
Notice, though, that even though exponential and reciprocal relationships may have data that fits a polynomial of high enough degree, they don't tend to obey eith of the two conditions above. The point is that your data fit needs to be useful to prediction. You always know that a linear fit will give information locally, but that information becomes more useful the more points are fit. Even if there are only two points and noise, a linear fit still gives the best theoretical look at the data collected so far, and establishes the first expectations of the data. Beyond that, though, using a quadratic fit for three points or a cubic fit for four is not validly giving more information, as it assumes both local and asymptotic behavior information with the addition of one point. You need justification for your hypothesis function. That justification can come from more points or from theory. (A third reason that sometimes comes up is
This is typically used in understanding data to build theoretical models without having a good starting point for theory. You should still strive to use the smallest polynomial degree possible, and look to substitute out patterns in the coefficients with what they may indicate (reciprocal, exponential, gaussian, etc.) in infinite series.) 


Try imagining it this way. You have a function from which you pick
But, since you want to build a robust model, you want to add a little noise to your training set, so you actually add a little noise when generating the data:
where by And then you draw, let's say, 10 points to be your training set. If there was no noise, they would all be lying on a line If you consider, by just using an estimation of the information from the training set, you would probably get a simpler function than the 10th order polynomial function, and it would have been closer to the real function. Consider further that your real function can have values outside the 

