GrAM: Reasoning with Grounded Action Models by Combining Knowledge Representation and Data Mining
نویسندگان
چکیده
This paper proposes GrAM (Grounded Action Models), a novel integration of actions and action models into the knowledge representation and inference mechanisms of agents. In GrAM action models accord to agent behavior and can be specified explicitly and implicitly. The explicit representation is an action class specific set of Markov logic rules that predict action properties. Stated implicitly an action model defines a data mining problem that, when executed, computes the model’s explicit representation. When inferred from an implicit representation the prediction rules predict typical behavior and are learned from a set of training examples, or, in other words, grounded in the respective experience of the agents. Therefore, GrAM allows for the functional and thus adaptive specification of concepts such as the class of situations in which a special action is typically executed successfully or the concept of agents that tend to execute certain kinds of actions. GrAM represents actions and their models using an upgrading of the representation language OWL and equips the Java Theorem Prover (JTP), a hybrid reasoner for OWL, with additional mechanisms that allow for the automatic acquisition of action models and solving a variety of inference tasks for actions, action models and functional descriptions.
منابع مشابه
Towards Practical and Grounded Knowledge Representation Systems for Autonomous Household Robots
Mobile household robots need much knowledge about objects, places and actions when performing more and more complex tasks. They must be able to recognize objects, know what they are and how they can be used. This knowledge can often be specified more easily in terms of actionrelated concepts than by giving declarative descriptions of the appearance of objects. Defining chairs as objects to sit ...
متن کاملA novel model of clinical reasoning: Cognitive zipper model
Introduction: Clinical reasoning is a vital aspect of physiciancompetence. It has been the subject of academic research fordecades, and various models of clinical reasoning have beenproposed. The aim of the present study was to develop a theoreticalmodel of clinical reasoning.Methods: To conduct our study, we applied the process of theorysynthesis in accordan...
متن کاملOn-Line Cumulative Learning of Hierarchical Sparse n-grams
We present a system for on-line, cumulative learning of hierarchical collections of frequent patterns from unsegmented data streams. Such learning is critical for long-lived intelligent agents in complex worlds. Learned patterns enable prediction of unseen data and serve as building blocks for higher-level knowledge representation. We introduce a novel sparse n-gram model that, unlike pruned n-...
متن کاملIncluding Qualitative Spatial Knowledge in the Sense-Plan-Act Loop
In this paper we present ongoing work on integrating qualitative and metric spatial reasoning into planning for robots. We propose a knowledge representation and reasoning technique, grounded on well-established constraint-based spatial calculi, for combining qualitative and metric knowledge and obtaining plans expressed in actionable metric terms.
متن کاملA New Algorithm for Optimization of Fuzzy Decision Tree in Data Mining
Decision-tree algorithms provide one of the most popular methodologies for symbolic knowledge acquisition. The resulting knowledge, a symbolic decision tree along with a simple inference mechanism, has been praised for comprehensibility. The most comprehensible decision trees have been designed for perfect symbolic data. Classical crisp decision trees (DT) are widely applied to classification t...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
دوره شماره
صفحات -
تاریخ انتشار 2006