Sigh. Computation of the determinant to determine singularity is a ridiculous thing to do, utterly so. Especially so for a large matrix. Sorry, but it is. Why? Yes, some books tell you to do it. Maybe even your instructor.
Analytical singularity is one thing. But how about numerical determination of singularity? Unless you are using a symbolic tool, MATLAB uses floating point arithmetic. This means it stores numbers as floating point, double precision values. Those numbers cannot be smaller in magnitude than
(Actually, MATLAB goes a bit lower than that, in terms of denormalized numbers, which can go down to approximately 1e-323.) See that when I try to store a number smaller than that, MATLAB thinks it is zero.
>> A = 1e-323
>> A = 1e-324
What happens with a large matrix? For example, is this matrix singular:
M = eye(1000);
Since M is an identity matrix, it is fairly clearly non-singular. In fact, det does suggest that it is non-singular.
But, multiply it by some constant. Does that make it non-singular? NO!!!!!!!!!!!!!!!!!!!!!!!! Of course not. But try it anyway.
Hmm. Thats is odd. MATLAB tells me the determinant is zero. But we know that the determinant is 1e-1000. Oh, yes. Gosh, 1e-1000 is smaller, by a considerable amount than the smallest number that I just showed you that MATLAB can store as a double. So the determinant underflows, even though it is obviously non-zero. Is the matrix singular? Of course not. But does the use of det fail here? Of course it will, and this is completely expected.
Instead, use a good tool for the determination of singularity. Use a tool like cond, or rank. For example, can we fool rank?
See that rank knows this is a full rank matrix, regardless of whether we scale it or not. The same is true of cond, computing the condition number of M.
Welcome to the world of floating point arithmetic. And oh, by the way, forget about det as a tool for almost any computation using floating point arithmetic. It is a poor choice almost always.