Institution
Alibaba Group
Company•Hangzhou, China•
About: Alibaba Group is a company organization based out in Hangzhou, China. It is known for research contribution in the topics: Computer science & Terminal (electronics). The organization has 6810 authors who have published 7389 publications receiving 55653 citations. The organization is also known as: Alibaba Group Holding Limited & Alibaba Group (Cayman Islands).
Topics: Computer science, Terminal (electronics), Graph (abstract data type), Node (networking), Deep learning
Papers published on a yearly basis
Papers
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TL;DR: This paper takes the first step to give a formal problem definition, and innovatively reduce it to Maximum Clique Optimization based on graph, and proposes Graph Attention Networks with a Multi-head Self-attention encoder and a decoder with attention mechanism for exact-K recommendation.
Abstract: This paper targets to a novel but practical recommendation problem named exact-K recommendation. It is different from traditional top-K recommendation, as it focuses more on (constrained) combinatorial optimization which will optimize to recommend a whole set of K items called card, rather than ranking optimization which assumes that "better" items should be put into top positions. Thus we take the first step to give a formal problem definition, and innovatively reduce it to Maximum Clique Optimization based on graph. To tackle this specific combinatorial optimization problem which is NP-hard, we propose Graph Attention Networks (GAttN) with a Multi-head Self-attention encoder and a decoder with attention mechanism. It can end-to-end learn the joint distribution of the K items and generate an optimal card rather than rank individual items by prediction scores. Then we propose Reinforcement Learning from Demonstrations (RLfD) which combines the advantages in behavior cloning and reinforcement learning, making it sufficient- and-efficient to train the model. Extensive experiments on three datasets demonstrate the effectiveness of our proposed GAttN with RLfD method, it outperforms several strong baselines with a relative improvement of 7.7% and 4.7% on average in Precision and Hit Ratio respectively, and achieves state-of-the-art (SOTA) performance for the exact-K recommendation problem.
28 citations
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14 Aug 2021TL;DR: The authors use generated text to inversely predict the prompt during beam search, which enhances the relevance between the prompt and the generated text and thus improves controllability, and demonstrate that their proposed method substantially outperforms the baselines.
Abstract: Large-scale pre-trained language models have demonstrated strong capabilities of generating realistic texts. However, it remains challenging to control the generation results. Previous approaches such as prompting are far from sufficient, and lack of controllability limits the usage of language models. To tackle this challenge, we propose an innovative method, inverse prompting, to better control text generation. The core idea of inverse prompting is to use generated text to inversely predict the prompt during beam search, which enhances the relevance between the prompt and the generated text and thus improves controllability. Empirically, we pre-train a large-scale Chinese language model to perform a systematic study using human evaluation on the tasks of open-domain poem generation and open-domain long-form question answering. Results demonstrate that our proposed method substantially outperforms the baselines and that our generation quality is close to human performance on some of the tasks.
28 citations
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09 Dec 2009TL;DR: In this article, a plurality of target data tables based on a source data table in which data to be synchronized is stored is stored, determining a current target data table from the plurality of data tables, synchronizing the source table and the current target table, and directing an application server to access the current data table upon successful completion of synchronization.
Abstract: Data synchronization includes establishing a plurality of target data tables based on a source data table in which data to be synchronized is stored, determining a current target data table from the plurality of target data tables, synchronizing the source data table and the current target data table, and directing an application server to access the current target data table upon successful completion of synchronization.
28 citations
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19 Oct 2020
TL;DR: A novel deep learning framework STP-TrellisNets is proposed, which for the first time augments the newly-emerged temporal convolutional framework TrellisNet for spatial-temporal prediction and outperforms the state-of-the-art baselines.
Abstract: Recent years have witnessed a drastic increase in the number of urban metro passengers, which inevitably causes the overcrowdedness in the metro systems of many cities. Clearly, an accurate prediction of passenger flows at metro stations is critical for a variety of metro system management operations, such as line scheduling and staff preallocation, that help alleviate such overcrowdedness. Thus, in this paper, we aim to address the problem of accurately predicting metro station passenger (MSP) flows. Similar to other traffic data, such as road traffic volume and highway speed, MSP flows are also spatial-temporal in nature. However, existing methods for other traffic prediction tasks are usually suboptimal to predict MSP flows due to MSP flows' unique spatial-temporal characteristics. As a result, we propose a novel deep learning framework STP-TrellisNets, which for the first time augments the newly-emerged temporal convolutional framework TrellisNet for spatial-temporal prediction. The temporal module of STP-TrellisNets (named CP-TrellisNets) employs two TrellisNets in serial to jointly capture the short- and long-term temporal correlation of MSP flows. In parallel to CP-TrellisNets, its spatial module (named GC-TrellisNet) adopts a novel transfer flow-based metric to characterize the spatial correlation among MSP flows, and implements multiple diffusion graph convolutional networks (DGCNs) in time-series order with their outputs connected to a TrellisNet to capture the dynamics of such spatial correlation. Clearly, GC-TrellisNet essentially integrates TrellisNet with graph convolution, and empowers TrellisNet with the ability to capture dynamic graph-structured correlation. We conduct extensive experiments with two large-scale real-world automated fare collection datasets, which contain respectively about 1.5 billion records in Shenzhen, China and 70 million records in Hangzhou, China. The experimental results demonstrate that STP-TrellisNets outperforms the state-of-the-art baselines.
28 citations
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24 Mar 2010TL;DR: In this paper, the authors present a method for implementing picture search and a website server thereof, which enables the user to search pictures of similar shapes according to the shape types, thereby satisfying the user's search demands.
Abstract: The present application relates to a method for implementing picture search and a website server thereof. A method for implementing picture search includes: classifying, according to keywords in advance in a picture database, corresponding pictures by shape of objects in the pictures, and determining a sample picture for each shape type; wherein, after a server receives a picture search request sent from a client, the method includes: searching, by the server, in the picture database for the sample picture of several shape types classified in advance corresponding to the keywords in said search request, and returning, to the client, the searched sample picture of the several shape types; receiving, by the server, the sample picture of a certain shape type determined by the client, and searching, in the picture database for the pictures which correspond to said keywords and satisfy a predetermined request with the characteristic value of said determined sample pictures; returning, by the server, said found pictures to the client. The present application enables the user to search pictures of similar shapes according to the shape types, thereby satisfying the user's search demands.
28 citations
Authors
Showing all 6829 results
Name | H-index | Papers | Citations |
---|---|---|---|
Philip S. Yu | 148 | 1914 | 107374 |
Lei Zhang | 130 | 2312 | 86950 |
Jian Xu | 94 | 1366 | 52057 |
Wei Chu | 80 | 670 | 28771 |
Le Song | 76 | 345 | 21382 |
Yuan Xie | 76 | 739 | 24155 |
Narendra Ahuja | 76 | 474 | 29517 |
Rong Jin | 75 | 449 | 19456 |
Beng Chin Ooi | 73 | 408 | 19174 |
Wotao Yin | 72 | 303 | 27233 |
Deng Cai | 70 | 326 | 24524 |
Xiaofei He | 70 | 260 | 28215 |
Irwin King | 67 | 476 | 19056 |
Gang Wang | 65 | 373 | 21579 |
Xiaodan Liang | 61 | 318 | 14121 |