I do not think you should evaluate your matched samples solely on the basis of one pair of graphs, but this pair of graphs does suggest that the balance is worse after matching. That is not so surprising. There is no guarantee that matching improves balance. As Sekhon (2011) writes:
For an example where matching worsens balance, see p. 11.
Sekhon, J. 2011. Matching: Multivariate Matching with Automated Balance Optimization in R. Journal of Statistical Software 42(7):1-52.
A significant shortcoming of common matching methods such as Mahalanobis distance and propensity score matching is that they may (and in practice, frequently do) make balance worse across measured potential confounders. These methods may make balance worse, in practice, even if covariates are distributed ellipsoidally because in a given finite sample there may be departures from an ellipsoidal distribution.
Sekhon, J. 2011. Matching: Multivariate Matching with Automated Balance Optimization in R. Journal of Statistical Software 42(7):1-52.
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