TY - GEN
T1 - Revisiting revisits in trajectory recommendation
AU - Menon, Aditya Krishna
AU - Chen, Dawei
AU - Xie, Lexing
AU - Ong, Cheng Soon
N1 - Publisher Copyright:
© 2017 Association for Computing Machinery.
PY - 2017/8/31
Y1 - 2017/8/31
N2 - Trajectory recommendation is the problem of recommending a sequence of places in a city for a tourist to visit. It is strongly desirable for the recommended sequence to avoid loops, as tourists typically would not wish to revisit the same location. Given some learned model that scores sequences, how can we then find the highest-scoring sequence that is loop-free? This paper studies this problem, with three contributions. First, we detail three distinct approaches to the problem - graph-based heuristics, integer linear programming, and list extensions of the Viterbi algorithm - and qualitatively summarise their strengths and weaknesses. Second, we explicate how two ostensibly different approaches to the list Viterbi algorithm are in fact fundamentally identical. Third, we conduct experiments on real-world trajectory recommendation datasets to identify the tradeoffs imposed by each of the three approaches. Overall, our results indicate that a greedy graph-based heuristic offer excellent performance and runtime, leading us to recommend its use for removing loops at prediction time.
AB - Trajectory recommendation is the problem of recommending a sequence of places in a city for a tourist to visit. It is strongly desirable for the recommended sequence to avoid loops, as tourists typically would not wish to revisit the same location. Given some learned model that scores sequences, how can we then find the highest-scoring sequence that is loop-free? This paper studies this problem, with three contributions. First, we detail three distinct approaches to the problem - graph-based heuristics, integer linear programming, and list extensions of the Viterbi algorithm - and qualitatively summarise their strengths and weaknesses. Second, we explicate how two ostensibly different approaches to the list Viterbi algorithm are in fact fundamentally identical. Third, we conduct experiments on real-world trajectory recommendation datasets to identify the tradeoffs imposed by each of the three approaches. Overall, our results indicate that a greedy graph-based heuristic offer excellent performance and runtime, leading us to recommend its use for removing loops at prediction time.
UR - http://www.scopus.com/inward/record.url?scp=85044357137&partnerID=8YFLogxK
U2 - 10.1145/3127325.3127326
DO - 10.1145/3127325.3127326
M3 - Conference contribution
T3 - ACM International Conference Proceeding Series
BT - Proceedings of International Workshop on Citizens for Recommender Systems, CitRec 2017 - In Conjunction with ACMRecSys 2017
PB - Association for Computing Machinery
T2 - 2017 International Workshop on Citizens for Recommender Systems, CitRec 2017 - In Conjunction with ACMRecSys 2017
Y2 - 31 August 2017
ER -