This is EXTREMELY related to the nature of the dataset. There are several meta-learning approaches that will tell you which classifier to use, but generaly there isn't a golden rule.
If you're data is easily separable (easy to distinguish entries from different classes), perhaps decision-trees or SVMs (with a linear kernel) are good enough. However, if your data needs to be transformed into other [higher] dimensional spaces, kernel-based classifiers might work well, such as RBF SVMs. SVMs also work better with non-redundant, independent features. When combinations between features are needed, artificial neural networks and bayesian classifiers work good as well.
Yet again, this is highly subjective and strongly depends on your feature set. For instance, having a single feature that is highly correlated with the class might determine which classifier works best. That said, overall, the no-free-lunch theorem says that no classifier is better for everything, but SVMs are generally regarded as the current best bet on binary classification.