A survey of contrastive and counterfactual explanation generation methods for explainable artificial intelligence

I Stepin, JM Alonso, A Catala, M Pereira-Fariña - IEEE Access, 2021 - ieeexplore.ieee.org
A number of algorithms in the field of artificial intelligence offer poorly interpretable
decisions. To disclose the reasoning behind such algorithms, their output can be explained …

The emerging landscape of explainable ai planning and decision making

T Chakraborti, S Sreedharan… - arXiv preprint arXiv …, 2020 - arxiv.org
In this paper, we provide a comprehensive outline of the different threads of work in
Explainable AI Planning (XAIP) that has emerged as a focus area in the last couple of years …

Reinforcement learning with knowledge representation and reasoning: A brief survey

C Yu, X Zheng, HH Zhuo, H Wan, W Luo - arXiv preprint arXiv:2304.12090, 2023 - arxiv.org
Reinforcement Learning (RL) has achieved tremendous development in recent years, but
still faces significant obstacles in addressing complex real-life problems due to the issues of …

A logic-based explanation generation framework for classical and hybrid planning problems

SL Vasileiou, W Yeoh, TC Son, A Kumar… - Journal of Artificial …, 2022 - jair.org
In human-aware planning systems, a planning agent might need to explain its plan to a
human user when that plan appears to be non-feasible or sub-optimal. A popular approach …

Grounding complex natural language commands for temporal tasks in unseen environments

JX Liu, Z Yang, I Idrees, S Liang… - … on Robot Learning, 2023 - proceedings.mlr.press
Grounding navigational commands to linear temporal logic (LTL) leverages its unambiguous
semantics for reasoning about long-horizon tasks and verifying the satisfaction of temporal …

The quest of parsimonious XAI: A human-agent architecture for explanation formulation

Y Mualla, I Tchappi, T Kampik, A Najjar, D Calvaresi… - Artificial intelligence, 2022 - Elsevier
With the widespread use of Artificial Intelligence (AI), understanding the behavior of
intelligent agents and robots is crucial to guarantee successful human-agent collaboration …

Scalable anytime algorithms for learning fragments of linear temporal logic

R Raha, R Roy, N Fijalkow, D Neider - … on Tools and Algorithms for the …, 2022 - Springer
Linear temporal logic (LTL) is a specification language for finite sequences (called traces)
widely used in program verification, motion planning in robotics, process mining, and many …

Learning linear temporal properties from noisy data: A maxsat-based approach

JR Gaglione, D Neider, R Roy, U Topcu… - Automated Technology for …, 2021 - Springer
We address the problem of inferring descriptions of system behavior using Linear Temporal
Logic (LTL) from a finite set of positive and negative examples. Most of the existing …

[PDF][PDF] Evaluating the role of interactivity on improving transparency in autonomous agents

P Qian, V Unhelkar - … of the 21st International Conference on …, 2022 - aamas.csc.liv.ac.uk
Autonomous agents are increasingly being deployed amongst human end-users. Yet,
human users often have little knowledge of how these agents work or what they will do next …

Tradeoff-focused contrastive explanation for mdp planning

R Sukkerd, R Simmons, D Garlan - 2020 29th IEEE …, 2020 - ieeexplore.ieee.org
End-users' trust in automated agents is important as automated decision-making and
planning is increasingly used in many aspects of people's lives. In real-world applications of …