Here is the original question: What bound can we get using $k$-th moment inequality under 3-wise independence? .Yury has given a 3-wise independent example that shows the upper bound is no better than $O(1/t)$.
There is another way to constructing 3-wise independent variables (see more details in http://www.wisdom.weizmann.ac.il/~oded/PS/RND/l03.ps). Are they essentially equal to each other, particularly on deriving the upper bound of $\Pr(|\sum_i(X_i)-\mu|\geq t)$?
Here is the main idea of the construction: We sample 3 random variables ${r_1,r_2,r_3}$ from $[m]$ uniformly and independently ($m$ is a prime). Then we construct a set $\Omega = \{r_1+r_2*i+r_3*i^2\mod m:i \in [m]\}$. The elements are 3-wise independent. Does the sum of these variables get a similar upper bound?