Search filters

List of works by Annalisa Appice

A Business Intelligence Solution for Monitoring Efficiency of Photovoltaic Power Plants

article

A Grid-Based Multi-relational Approach to Process Mining

A Sliding Window Algorithm for Relational Frequent Patterns Mining from Data Streams

article

A parallel, distributed algorithm for relational frequent pattern discovery from very large data sets

article

A relational approach to probabilistic classification in a transductive setting

An Integrated Platform for Spatial Data Mining within a GIS Environment

An Intelligent System for Real Time Fault Detection in PV Plants

article

An Intelligent Technique for Forecasting Spatially Correlated Time Series

article

An Iterative Learning Algorithm for Within-Network Regression in the Transductive Setting

article

Approximate Frequent Itemset Discovery from Data Stream

article

Collective Inference for Handling Autocorrelation in Network Regression

article

Collective regression for handling autocorrelation of network data in a transductive setting

article by Corrado Loglisci et al published 20 May 2015 in Journal of Intelligent Information Systems

Complex objects ranking

Continuously Mining Sliding Window Trend Clusters in a Sensor Network

Dealing with Spatial Autocorrelation in Gene Flow Modeling

article

Dealing with spatial autocorrelation when learning predictive clustering trees

article published in 2013

Dealing with temporal and spatial correlations to classify outliers in geophysical data streams

article

Discovering Emerging Patterns for Anomaly Detection in Network Connection Data

Discovering process models through relational disjunctive patterns mining

Emerging Pattern Based Classification in Relational Data Mining

Empowering a GIS with inductive learning capabilities: the case of INGENS

Enhancing Regression Models with Spatio-temporal Indicator Additions

article

Geographic Knowledge Discovery in INGENS: An Inductive Database Perspective

Global and Local Spatial Autocorrelation in Predictive Clustering Trees

Integrating Cluster Analysis to the ARIMA Model for Forecasting Geosensor Data

article

Learning and Transferring Geographically Weighted Regression Trees across Time

Leveraging the power of local spatial autocorrelation in geophysical interpolative clustering

MBlab: Molecular Biodiversity Laboratory

Mining Model Trees from Spatial Data

article

Mining Relational Association Rules for Propositional Classification

Mining geospatial data in a transductive setting

Novelty Detection from Evolving Complex Data Streams with Time Windows

Online and Offline Trend Cluster Discovery in Spatially Distributed Data Streams

Predictive Regional Trees to Supplement Geo-Physical Random Fields

Process Mining to Forecast the Future of Running Cases

article

Relational Frequent Patterns Mining for Novelty Detection from Data Streams

article

Relational Mining in Spatial Domains: Accomplishments and Challenges

STARDUST: A Novel Process Mining approach to Discover Evolving Models From trace Streams

scientific article published in 2022

Space-Time Roll-up and Drill-down into Geo-Trend Stream Cubes

Stepwise Induction of Logistic Model Trees

Summarization for Geographically Distributed Data Streams

article

Summarizing numeric spatial data streams by trend cluster discovery

Top-Down Induction of Relational Model Trees in Multi-instance Learning

article published in Lecture Notes in Computer Science

Top-down induction of model trees with regression and splitting nodes

article

Transductive Learning for Spatial Data Classification

article

Transductive Relational Classification in the Co-training Paradigm

article

Transductive learning for spatial regression with co-training

Trend Cluster Based Kriging Interpolation in Sensor Data Networks

article

Trend cluster based compression of geographically distributed data streams

Trend cluster based interpolation everywhere in a sensor network

Using Geographic Cost Functions to Discover Vessel Itineraries from AIS Messages

Using trend clusters for spatiotemporal interpolation of missing data in a sensor network