Future Data Intelligence Limited

Future Data Intelligence Limited FutureData.AI

Our founder (Chow, Chi Yin Ted) is being listed as the Top 2% of the world's most highly cited scientists on the latest ...
03/04/2021

Our founder (Chow, Chi Yin Ted) is being listed as the Top 2% of the world's most highly cited scientists on the latest report by the Stanford University.

Home News and Media NewsCentre CityU excels on global top scientists list About CityU , Research News , Academics CityU excels on global top scientists list Helen Mok 22 Feb 2021 Share this article As one of the most progressive universities in the world, City University of Hong Kong (CityU) has a w...

Our research paper has been accepted by the 43rd International ACM SIGIR Conference on Research and Development in Infor...
08/07/2020

Our research paper has been accepted by the 43rd International ACM SIGIR Conference on Research and Development in Information Retrieval (ACM SIGIR 2020) for oral presentation and publication.

“GAME: Learning Graphical and Attentive Multi-view Embeddings for Occasional Group Recommendation” by Z. He, C.-Y. Chow, and J.-D. Zhang

Group recommendation aims to suggest preferred items to a group of users rather than to an individual user. Most existing methods on group recommendation directly learn the inherent interests of groups and users or inherent features of items, i.e., independently modeling the inherent embeddings of groups, users or items. However, the independent view severely suffers from the cold-start problem when making recommendations for occasional groups that are temporally formed by a set of users and have few interactions on items. Actually, the groups, users and items are interdependent because they interact with one another. The interdependencies constitute an interaction graph that provides multiple views to model the embeddings of groups, users and items from their interacting counterparts to improve recommendation for occasional groups. To this end, we propose a model, named GAME to learn the Graphical and Attentive Multi-view Embeddings (i.e., representations) for the groups, users and items from the independent view and counterpart views based on the interaction graph. In the counterpart views, the embedding of a group, user or item is aggregated from the interacting counterparts based on an attention mechanism that derives the adaptive weight for each counterpart. For instance, a user’s embedding may be aggregated from her interacting items or groups. Further, GAME applies neural collaborative filtering to investigate the interactions between the multi-view embeddings of groups (or users) and items for group recommendation. Finally, we conduct extensive experiments on two real datasets. The experimental results show that GAME outperforms other state-of-the-art models, especially on both cold-start groups (i.e., occasional groups) and cold-start items.

Our research paper has been accepted by IEEE Transactions on Intelligent Transportation Systems for publication.“STNN: A...
08/07/2020

Our research paper has been accepted by IEEE Transactions on Intelligent Transportation Systems for publication.

“STNN: A Spatio-Temporal Neural Network for Traffic Predictions” by Z. He, C.-Y. Chow, and J.-D. Zhang

A new traffic prediction model, the spatio-temporal neural network (STNN) based on an encoder-decoder architecture, is proposed. It can model the complex factors in the road network, including dynamic spatio-temporal dependencies and external factors (e.g., road type and nearby points of interest). STNN first develops two spatial models into LSTM as the encoder to learn the dynamic spatio-temporal dependencies from three perspectives of the links, regions and road network. Then STNN integrates a temporal attention model into LSTM as the decoder to capture the long-term dependencies and fuses external factors in the road network to improve network-wide traffic predictions. Experimental results show the effectiveness of the proposed STNN in traffic predictions.

We (Future Data Intelligence Limited, Reference No.: SP-237-801) have got listed in the D-Biz IT Service Providers Refer...
17/05/2020

We (Future Data Intelligence Limited, Reference No.: SP-237-801) have got listed in the D-Biz IT Service Providers Reference List (https://www.hkpc.org/en/dbp-providers-list) for the following services:
- Online business
- Cloud-based business support systems
- Online customer services and engagement
- Social media promotion
- Cloud storage and hosting

https://www.d-biz.hk/

在第二輪防疫抗疫基金下,推出為期六個月、為數五億元的「遙距營商計劃」(D-Biz),透過特快批核,資助企業利用創新與科技,在疫情期間開拓遙距業務,創造新的價值、新的能力、新的機遇,轉危為機。

Li Ning, a PhD student, together with his supervisor Dr Ted Chow Chi-yin, Associate Professor at CS, and Dr Zhang Jiadon...
31/12/2019

Li Ning, a PhD student, together with his supervisor Dr Ted Chow Chi-yin, Associate Professor at CS, and Dr Zhang Jiadong, CityU PhD graduate, received the Best Paper Award for their co-authored paper titled “Seeded-BTM: Enabling Biterm Topic Model with Seeds for Product Aspect Mining” at the Institute of Electrical and Electronics Engineers (IEEE) 5th International Conference on Data Science and Systems 2019 in Zhangjiajie in August.

(From left) Dr Zhang Jiadong, Mr Li Ning and Dr Ted Chow with the Best Paper Award from IEEE’s International Conference on Data Science

04/02/2019
It is my pleasure to be invited to give a technology keynote and join a discussion panel to share my experiences and vie...
17/12/2018

It is my pleasure to be invited to give a technology keynote and join a discussion panel to share my experiences and views on AI and machine learning applications in business and new technology trends at the 9th CIO Leadership Forum 2019 on 6 March 2019.

Gave a two-hour talk "How AI and Big Data are Transforming HR" and shared my practical experience to 50 HR professionals...
16/11/2018

Gave a two-hour talk "How AI and Big Data are Transforming HR" and shared my practical experience to 50 HR professionals for a big company. Thank you very much for the invitation.

Presented my proposed smart logistics system for e-commerce (will be launched in 2019) in the International Conference o...
09/11/2018

Presented my proposed smart logistics system for e-commerce (will be launched in 2019) in the International Conference on Smart Mobility and Logistics in Future Cities at Hong Kong Convention and Exhibition Centre

Address

Room 31, 5/F, Thriving Industrial Centre, Tsuen Wan, New Territories
Hong Kong

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