We present Structural Logistic Regression, an extension of logistic regression to modeling relational data. It is an integrated approach to building regression models from data stored in relational databases in which potential predictors, both boolean and real-valued, are generated by structured search in the space of queries to the database, and then tested with statistical information criteria for inclusion in a logistic regression. Using statistics and relational representation allows modeling in noisy domains with complex structure. Link prediction is a task of high interest with exactly such characteristics. Be it in the domain of scientific citations, social networks or hypertext, the underlying data are extremely noisy and the featur...
Abstract—This work introduces a link analysis procedure for discovering relationships in a relationa...
This research evaluates a model for probabilistic text and document retrieval; the model utilizes th...
The world around us is composed of entities, each having various properties and participating in rel...
We present Structural Logistic Regression, an extension of logistic regression to modeling relationa...
We present Structural Logistic Regression, an extension of logistic regression to modeling relationa...
ide powerful modeling component but are often limited to a "flat" file propositional domai...
A major obstacle to fully integrated deployment of many data mining algorithms is the assumption tha...
In social network analysis, link prediction is a problem of fundamental importance. How to conduct a...
To simplify modeling procedures, traditional statistical machine learning methods always assume that...
One fundamental limitation of classical statistical modeling is the assumption that data is represen...
Many real-world domains are relational in nature, consisting of a set of objects related to each oth...
Link prediction is a fundamental task in such areas as social network analysis, information retrieva...
The aim of statistical relational learning is to learn statistical models from relational or graph-s...
Many data sets routinely captured by organizations are relational in nature---from marketing and sal...
We use clustering to derive new relations which augment database schema used in automatic generation...
Abstract—This work introduces a link analysis procedure for discovering relationships in a relationa...
This research evaluates a model for probabilistic text and document retrieval; the model utilizes th...
The world around us is composed of entities, each having various properties and participating in rel...
We present Structural Logistic Regression, an extension of logistic regression to modeling relationa...
We present Structural Logistic Regression, an extension of logistic regression to modeling relationa...
ide powerful modeling component but are often limited to a "flat" file propositional domai...
A major obstacle to fully integrated deployment of many data mining algorithms is the assumption tha...
In social network analysis, link prediction is a problem of fundamental importance. How to conduct a...
To simplify modeling procedures, traditional statistical machine learning methods always assume that...
One fundamental limitation of classical statistical modeling is the assumption that data is represen...
Many real-world domains are relational in nature, consisting of a set of objects related to each oth...
Link prediction is a fundamental task in such areas as social network analysis, information retrieva...
The aim of statistical relational learning is to learn statistical models from relational or graph-s...
Many data sets routinely captured by organizations are relational in nature---from marketing and sal...
We use clustering to derive new relations which augment database schema used in automatic generation...
Abstract—This work introduces a link analysis procedure for discovering relationships in a relationa...
This research evaluates a model for probabilistic text and document retrieval; the model utilizes th...
The world around us is composed of entities, each having various properties and participating in rel...