This paper concerns a convex, stochastic zeroth-order optimization (S-ZOO) problem, where the objective is to minimize the expectation of a cost function and its gradient is not accessible directly. To solve this problem, traditional optimization techniques mostly yield query complexities that grow polynomially with dimensionality, i.e., the number of function evaluations is a polynomial function of the number of decision variables. Consequently, these methods may not perform well in solving massive-dimensional problems arising in many modern applications. Although more recent methods can be provably dimension-insensitive, almost all of them work with arguably more stringent conditions such as everywhere sparse or compressible gradient. Thus, prior to this research, it was unknown whether dimension-insensitive S-ZOO is possible without such conditions. In this paper, we give an affirmative answer to this question by proposing a sparsity-inducing stochastic gradient-free (SI-SGF) algorithm. It is proved to achieve dimension-insensitive query complexity in both convex and strongly convex cases when neither gradient sparsity nor gradient compressibility is satisfied. Our numerical results demonstrate the strong potential of the proposed SI-SGF compared with existing alternatives.