Decision trees are interpretable models that are well-suited to non-line...
Interpretability of reinforcement learning policies is essential for man...
Explainable Artificial Intelligence (XAI) is a promising solution to imp...
NetFlow data is a well-known network log format used by many network ana...
State machines are popular models to model and visualize discrete system...
These days more companies are shifting towards using cloud environments ...
Sequence clustering in a streaming environment is challenging because it...
We present a method to learn automaton models that are more robust to in...
We present the efficient implementations of probabilistic deterministic
...
This paper reports on the first international competition on AI for the
...
Decision trees are a popular choice of explainable model, but just like
...
Attack graphs (AG) are used to assess pathways availed by cyber adversar...
Surrogate algorithms such as Bayesian optimisation are especially design...
In the present day we use machine learning for sensitive tasks that requ...
One method to solve expensive black-box optimization problems is to use ...
A challenging problem in both engineering and computer science is that o...
When a black-box optimization objective can only be evaluated with costl...
Imitation learning provides a way to automatically construct a controlle...
Malware family characterization is a challenging problem because ground-...
We present an interactive version of an evidence-driven state-merging (E...
This paper focuses on detecting anomalies in a digital video broadcastin...
Automaton models are often seen as interpretable models. Interpretabilit...
In a sequential auction with multiple bidding agents, it is highly
chall...