This study proposes a framework to impute travel mode for trips identified from cellphone traces by developing a deep neural network model. In our framework, we use the trips from a home interview survey and transit smartcard data, for which the travel mode is known, to create a set of artificial pseudo-cellphone traces. The generated artificial pseudo-cellphone traces with known mode are then used to train a deep neural network classifier. We further apply the trained model to infer travel modes for the cellphone traces from cellular network data. The empirical case study region is Montevideo, Uruguay, where high-quality data are available for all three types of data used in the analysis: a large dataset of cellphone traces, a large datase...
Inferring transportation mode of users in a network is of paramount importance in planning, designin...
AbstractMobile phone data have recently become an attractive source of information about mobility be...
In this study, with Singapore as an example, we demonstrate how we can use mobile phone call detail ...
This study proposes a framework to impute travel mode for trips identified from cellphone traces by ...
Recent advances in communication technologies have enabled researchers to collect travel data from l...
Comprehensive knowledge of travel patterns is crucial to enable planning for a more efficient traffi...
Cellular signaling data have become increasingly indispensable in analyzing residents’ travel charac...
Recent advances in communication technologies have enabled researchers to collect travel data based ...
Data on travel patterns and travel demand are an important input to today’s traffic models used for ...
The rapid development in telecommunication networks is producing a huge amount of information regard...
A novel methodology to infer transportation mode taken by mobile device users between regions of in...
Due to the ubiquity of mobile phones, mobile phone network data (e.g., Call Detail Records, CDR; and...
The collection of massive Global Positioning System (GPS) data from travel surveys has increased exp...
ABSTRACTCollection of travel data by traditional survey methods is costly, thus limiting the amount ...
As humans share an ever increasing amount of location information online through location enable...
Inferring transportation mode of users in a network is of paramount importance in planning, designin...
AbstractMobile phone data have recently become an attractive source of information about mobility be...
In this study, with Singapore as an example, we demonstrate how we can use mobile phone call detail ...
This study proposes a framework to impute travel mode for trips identified from cellphone traces by ...
Recent advances in communication technologies have enabled researchers to collect travel data from l...
Comprehensive knowledge of travel patterns is crucial to enable planning for a more efficient traffi...
Cellular signaling data have become increasingly indispensable in analyzing residents’ travel charac...
Recent advances in communication technologies have enabled researchers to collect travel data based ...
Data on travel patterns and travel demand are an important input to today’s traffic models used for ...
The rapid development in telecommunication networks is producing a huge amount of information regard...
A novel methodology to infer transportation mode taken by mobile device users between regions of in...
Due to the ubiquity of mobile phones, mobile phone network data (e.g., Call Detail Records, CDR; and...
The collection of massive Global Positioning System (GPS) data from travel surveys has increased exp...
ABSTRACTCollection of travel data by traditional survey methods is costly, thus limiting the amount ...
As humans share an ever increasing amount of location information online through location enable...
Inferring transportation mode of users in a network is of paramount importance in planning, designin...
AbstractMobile phone data have recently become an attractive source of information about mobility be...
In this study, with Singapore as an example, we demonstrate how we can use mobile phone call detail ...