[1] |
Gehrke SR. 2020. Uber service area expansion in three major American cities. Journal of Transport Geography 86:102752 doi: 10.1016/j.jtrangeo.2020.102752 |
[2] |
Zhang C, Zhu F, Wang X, Sun L, Tang H, et al. 2020. Taxi demand prediction using parallel multi-task learning model. IEEE Transactions on Intelligent Transportation Systems 23(2):794−803 doi: 10.1109/TITS.2020.3015542 |
[3] |
Shaheen S, Totte H, Stocker A. 2018. Future of mobility white paper. UC Berkeley: Institute of Transportation Studies at UC Berkeley. http://dx.doi.org/10.7922/G2WH2N5D |
[4] |
Barrios JM, Hochberg YV, Yi H. 2023. The cost of convenience: Ridehailing and traffic fatalities. Journal of Operations Management 69:823−55 doi: 10.1002/joom.1221 |
[5] |
Clewlow RR, Mishra GS. 2017. Disruptive transportation: The adoption, utilization, and impacts of ride-hailing in the United States. Institute of Transportation Studies, Working Paper Series qt82w2z91j. Institute of Transportation Studies, UC Davis. |
[6] |
Botsman R. 2017. Who can you trust?: how technology brought us together–and why it could drive us apart. UK: Penguin. |
[7] |
Raut A, Bhosale R, Avhad K, Awari M, Jadhav S. 2020. A Survey on: Real time Smart Car Pooling and Ride Sharing System using Android application. International Journal of Research and Analytical Reviews 7(1):593−97 |
[8] |
Li Y, Chung SH. 2020. Ride-sharing under travel time uncertainty: Robust optimization and clustering approaches. Computers & Industrial Engineering 149:106601 doi: 10.1016/j.cie.2020.106601 |
[9] |
Du J, Rakha HA. 2020. COVID-19 impact on ride-hailing: The Chicago case study. Findings 00:1−7 doi: 10.32866/001c.17838 |
[10] |
Morris EA, Zhou Y, Brown AE, Khan SM, Derochers JL, et al. 2020. Are drivers cool with pool? Driver attitudes towards the shared TNC services UberPool and Lyft Shared Transport Policy 94:123−38 doi: 10.1016/j.tranpol.2020.04.019 |
[11] |
Shah D, Kumaran A, Sen R, Kumaraguru P. Travel Time Estimation Accuracy in Developing Regions: An Empirical Case Study with Uber Data in Delhi-NCR. WWW '19: Companion Proceedings of The 2019 World Wide Web Conference, San Francisco USA, May 13−17, 2019. New York, United States: Association for Computing Machinery. pp. 130−36. https://doi.org/10.1145/3308560.3317057 |
[12] |
Boyd D, Golder S, Lotan G. 2010. Tweet, tweet, retweet: Conversational aspects of retweeting on twitter. 2010 43rd Hawaii International Conference on System Sciences, Honolulu, HI, USA, 5-08 January 2010. USA: IEEE. pp. 1−10. https://doi.org/10.1109/HICSS.2010.412 |
[13] |
Pang B, Lee L. 2008. Opinion mining and sentiment analysis. Foundations and Trends® in Information Retrieval 2(1-2):1−135 doi: 10.1561/1500000011 |
[14] |
Jin L, Mo C, Zhang B, Yu B. 2018. What is the focus of structural reform in China?—comparison of the factor misallocation degree within the manufacturing industry with a unified model Sustainability 10(11):4051 doi: 10.3390/su10114051 |
[15] |
Monchambert G. 2020. Why do (or don’t) people carpool for long distance trips? A discrete choice experiment in France Transportation Research Part A: Policy and Practice 132:911−31 doi: 10.1016/j.tra.2019.12.033 |
[16] |
Ciari F, Axhausen KW. 2012. Choosing carpooling or car sharing as a mode: Swiss stated choice experiments. Proc. 91st Annual Meeting of the Transportation Research Board (TRB 2012), Washington D.C., 2012. Washington D.C.: Transportation Research Board (TRB). pp 1−23. https://doi.org/10.3929/ethz-b-000091515 |
[17] |
Agatz N, Erera A, Savelsbergh M, Wang X. 2012. Optimization for dynamic ride-sharing: A review. European Journal of Operational Research 223:295−303 doi: 10.1016/j.ejor.2012.05.028 |
[18] |
Adoma AF, Henry NM, Chen W. 2020. Comparative analyses of bert, roberta, distilbert, and xlnet for text-based emotion recognition. Proc. 2020 17th International Computer Conference on Wavelet Active Media Technology and Information Processing (ICCWAMTIP), Chengdu, China, 18−20 December 2020. USA: IEEE. pp. 117−21. https://doi.org/10.1109/ICCWAMTIP51612.2020.9317379 |
[19] |
Wang B, Shao Y, Miao M. 2022. A social welfare estimation of ride-sharing in China: evidence from transaction data analysis of a large online platform. Technological and Economic Development of Economy 28:419−41 doi: 10.3846/tede.2022.16284 |
[20] |
Mcauliffe J, Blei D. 2007. Supervised topic models. Advances in neural information processing systems 20, Princeton, 2007. Princeton: Princeton University. pp. 1−8. |
[21] |
Tufts C, Polsky D, Volpp KG, Groeneveld PW, Ungar L, et al. 2018. Characterizing tweet volume and content about common health conditions across Pennsylvania: retrospective analysis. JMIR Public Health and Surveillance 4:e10834 doi: 10.2196/10834 |
[22] |
Kaur H, Sharma, D, Ahuja V. 2020. An analysis of ridesharing in India: The case of Uber and Ola. Information and Communication Technology for Sustainable Development, New York, 2020. Florida: CRC Press. pp. 261−75. |
[23] |
Cramer J, Krueger M, Haruvy E. 2016. The Competitive Effects of the Sharing Economy: How is Uber Changing Taxis? Retrieved from SSRN: https://ssrn.com/abstract=2974894 |
[24] |
Hagen L. 2018. Content analysis of e-petitions with topic modeling: How to train and evaluate LDA models? Information Processing & Management 54:1292−307 doi: 10.1016/j.ipm.2018.05.006 |
[25] |
Karami A, Bennett LS, He X. 2018. Mining public opinion about economic issues: Twitter and the us presidential election. International Journal of Strategic Decision Sciences (IJSDS) 9:18−28 doi: 10.4018/ijsds.2018010102 |
[26] |
Karami A, Shaw G. 2019. An exploratory study of (#) exercise in the Twittersphere. iConference 2019 Proceedings, North Carolina, 2019. North Carolina: University of North Carolina at Charlotte. https://doi.org/10.21900/iconf.2019.103327 |
[27] |
Karami A, Webb F, Kitzie VL. 2018. Characterizing transgender health issues in twitter. Proceedings of the Association for Information Science and Technology 55:207−15 doi: 10.1002/pra2.2018.14505501023 |
[28] |
Pournarakis DE, Sotiropoulos DN, Giaglis GM. 2017. A computational model for mining consumer perceptions in social media. Decision Support Systems 93:98−110 doi: 10.1016/j.dss.2016.09.018 |
[29] |
Collins M, Karami A. 2018. Social Media Analysis for Organizations: US Northeastern Public And State Libraries Case Study. Proceedings of the Southern Association for Information Systems Conference, Atlanta, GA, USA, 23–24 March, 2018. https://aiselaisnet.org/sais2018/30, www.semanticscholar.org/reader/3e893eb31105f0fdaee485ed11de8a0b87aff9c6 |
[30] |
Sun C, Huang L, Qiu X. 2019. Utilizing BERT for aspect-based sentiment analysis via constructing auxiliary sentence. Proceedings of the 2019 Conference of the North American Chapter of the Association for Computational Linguistics: Human Language Technologies, Minneapolis, Minnesota, 2019. USA: Association for Computational Linguistics. pp. 380–85. https://doi.org/10.18653/v1/N19-1035 |
[31] |
Blei DM, Ng AY, Jordan MI. 2003. Latent dirichlet allocation. Journal of Machine Learning Research 3:993−1022 |
[32] |
Aqlan WMM, Ali GA, Rajab K, Rajab A, Shaikh A, et al. 2023. Thalassemia screening by sentiment analysis on social media platform Twitter. Computers, Materials & Continua 76:665−86 doi: 10.32604/cmc.2023.039228 |
[33] |
Qi Y, Shabrina Z. 2023. Sentiment analysis using Twitter data: a comparative application of lexicon-and machine-learning-based approach. Social Network Analysis and Mining 13:31 doi: 10.1007/s13278-023-01030-x |