Advancing Household Robotics: Deep Interactive Reinforcement Learning for Efficient Training and Enhanced Performance
Arpita Soni, Sujatha Alla, Suresh Dodda, Hemanth Volikatla

TL;DR
This paper introduces a novel Deep Interactive Reinforcement Learning method with a persistent rule-based system to improve training efficiency and performance of household robots in performing chores.
Contribution
It presents a new approach that preserves and reuses guidance information, reducing repetitive training and accelerating learning in household robotics.
Findings
Faster training times for household robots.
Reduced need for repeated guidance from instructors.
Enhanced robot performance in domestic tasks.
Abstract
The market for domestic robots made to perform household chores is growing as these robots relieve people of everyday responsibilities. Domestic robots are generally welcomed for their role in easing human labor, in contrast to industrial robots, which are frequently criticized for displacing human workers. But before these robots can carry out domestic chores, they need to become proficient in several minor activities, such as recognizing their surroundings, making decisions, and picking up on human behaviors. Reinforcement learning, or RL, has emerged as a key robotics technology that enables robots to interact with their environment and learn how to optimize their actions to maximize rewards. However, the goal of Deep Reinforcement Learning is to address more complicated, continuous action-state spaces in real-world settings by combining RL with Neural Networks. The efficacy of…
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