2020
DOI: 10.3390/su12010349
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LSTM-Based Deep Learning Model for Predicting Individual Mobility Traces of Short-Term Foreign Tourists

Abstract: The increasing availability of trajectory recordings has led to the mining of a massive amount of historical track data, allowing for a better understanding of travel behaviors by revealing meaningful motion patterns. In the context of human mobility analysis, the problem of motion prediction assumes a central role and is beneficial for a wide range of applications, including for touristic purposes, such as personalized services or targeted recommendations, and sustainability studies related to crowd managemen… Show more

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Cited by 47 publications
(27 citation statements)
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References 75 publications
(90 reference statements)
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“…Recurrent neural networks (RNN) are effective tools for processing sequential data and can be applied to path prediction as well [ 31 , 32 ]. Crivellari et al propose a series of methods to analyze call detail records related to tourists’ behavior in Italy, such as geo-embedding [ 33 , 34 ], predicting individual mobility traces [ 35 ], trajectory translation [ 36 ], and urban traffic forecasting [ 37 ]. Similar to natural language processing, these methods have three significant components [ 38 ]: 1.…”
Section: Related Workmentioning
confidence: 99%
“…Recurrent neural networks (RNN) are effective tools for processing sequential data and can be applied to path prediction as well [ 31 , 32 ]. Crivellari et al propose a series of methods to analyze call detail records related to tourists’ behavior in Italy, such as geo-embedding [ 33 , 34 ], predicting individual mobility traces [ 35 ], trajectory translation [ 36 ], and urban traffic forecasting [ 37 ]. Similar to natural language processing, these methods have three significant components [ 38 ]: 1.…”
Section: Related Workmentioning
confidence: 99%
“…LSTM [40] is a complex recurrent module, composed of four distinctive neural networks interacting between each other. Due to the characteristic capability of handling sequential data, it has been utilized in a variety of applications dealing with motion trajectory prediction [41][42][43] and mobility-related time series forecasting [44][45][46]. A few adoptions to studies on traffic analysis are also present, but has been mainly modeled for singularly predicting flows on a selected target location [47][48][49][50].…”
Section: Lstm Blockmentioning
confidence: 99%
“…Therefore, the statistical data should be collected so that the tourist arrivals are differentiated as individual or group visits, which is not the case now. Or, even better, by their arrival status, e.g., whether they arrived independently or in a group and whether a group was organised by a third party [73,74]. It is of enormous importance to have such data to study the effects and the relationships between variables.…”
Section: Introductionmentioning
confidence: 99%