Ensemble Relational Learning based on Selective Propositionalization
نویسندگان
چکیده
Dealing with structured data needs the use of expressive representation formalisms that, however, puts the problem to deal with the computational complexity of the machine learning process. Furthermore, real world domains require tools able to manage their typical uncertainty. Many statistical relational learning approaches try to deal with these problems by combining the construction of relevant relational features with a probabilistic tool. When the combination is static (static propositionalization), the constructed features are considered as boolean features and used offline as input to a statistical learner; while, when the combination is dynamic (dynamic propositionalization), the feature construction and probabilistic tool are combined into a single process. In this paper we propose a selective propositionalization method that search the optimal set of relational features to be used by a probabilistic learner in order to minimize a loss function. The new propositionalization approach has been combined with the random subspace ensemble method. Experiments on real-world datasets shows the validity of the proposed method.
منابع مشابه
Relational Random Forests Based on Random Relational Rules
Random Forests have been shown to perform very well in propositional learning. FORF is an upgrade of Random Forests for relational data. In this paper we investigate shortcomings of FORF and propose an alternative algorithm, RF, for generating Random Forests over relational data. RF employs randomly generated relational rules as fully self-contained Boolean tests inside each node in a tree and ...
متن کاملStatistical relational learning : Structure learning for Markov logic networks. (Apprentissage statistique relationnel : apprentissage de structures de réseaux de Markov logiques)
A Markov Logic Network is composed of a set of weighted first-order logic formulas. In this dis-sertation we propose several methods to learn a MLN structure from a relational dataset. Thesemethods are of two kinds: methods based on propositionalization and methods based on Graphof Predicates. The methods based on propositionalization are based on the idea of building aset o...
متن کاملOn propositionalization for knowledge discovery in relational databases
Propositionalization is a process that leads from relational data and background knowledge to a single-table representation thereof, which serves as the input to widespread systems for knowledge discovery in databases. Systems for propositionalization thus support the analyst during the usually costly phase of data preparation for data mining. Such systems have been applied for more than 15 yea...
متن کاملA Link-Based Method for Propositionalization
Propositionalization, a popular technique in Inductive Logic Programming, aims at converting a relational problem into an attributevalue one. An important facet of propositionalization consists in building a set of relevant features. To this end we propose a new method, based on a synthetic representation of the database, modeling the links between connected ground atoms. Comparing it to two st...
متن کاملPropositionalization of Relational Learning: An Information Extraction Case Study
This paper develops a new propositionalization approach for relational learning which allows for efficient representation and learning of relational information using propositional means. We develop a relational representation language, along with a relation generation function that produces features in this language in a data driven way; together, these allow efficient representation of the re...
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:
- CoRR
دوره abs/1311.3735 شماره
صفحات -
تاریخ انتشار 2013