Title
A Multimodal Approach to Relevance and Pertinence of Documents.
Abstract
Automated document classification process extracts information with a systematical analysis of the content of documents. This is an active research field of growing importance due to the large amount of electronic documents produced in the world wide web and made readily available thanks to diffused technologies including mobile ones. Several application areas benefit from automated document classification, including document archiving, invoice processing in business environments, press releases and search engines. Current tools classify or "tag" either text or images separately. In this paper we show how, by linking image and text-based contents together, a technology improves fundamental document management tasks like retrieving information from a database or automatically routing documents. We present a formal definition of pertinence and relevance concepts, that apply to those documents types we name "multimodal". These are based on a model of conceptual spaces we believe compulsory for document investigation while using joint information sources coming from text and images forming complex documents.
Year
DOI
Venue
2016
10.1007/978-3-319-42007-3_14
Lecture Notes in Artificial Intelligence
Field
DocType
Volume
Bag-of-words model,Document classification,Search engine,Information retrieval,Computer science,Document management system,Invoice processing,Support vector machine,Image retrieval,Probabilistic latent semantic analysis
Conference
9799
ISSN
Citations 
PageRank 
0302-9743
2
0.36
References 
Authors
20
2
Name
Order
Citations
PageRank
Matteo Cristani125934.75
Claudio Tomazzoli22511.36