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Fashion plays a pivotal role in society. Combining garments appropriately is essential for people to communicate their personality and style. Also different events require outfits to be thoroughly chosen to comply with underlying social clothing rules. Therefore, combining garments appropriately might not be trivial. The fashion industry has turned this into a massive source of income, relying on complex recommendation systems to retrieve and suggest appropriate clothing items for customers. To perform better recommendations, personalized suggestions can be performed, taking into account user preferences or purchase histories. In this paper, we propose a garment recommendation system to pair different clothing items, namely tops and bottoms, exploiting a Memory Augmented Neural Network (MANN). By training a memory writing controller, we are able to store a non-redundant subset of samples, which is then used to retrieve a ranked list of suitable bottoms to complement a given top. In particular, we aim at retrieving a variety of modalities in which a certain garment can be combined. To refine our recommendations, we then include user preferences via Matrix Factorization. We experiment on IQON3000, a dataset collected from an online fashion community, reporting state of the art results.

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神(shen)(shen)(shen)經(jing)(jing)(jing)網(wang)(wang)(wang)絡(luo)(luo)(luo)(Neural Networks)是世(shi)界上(shang)三(san)個最(zui)古(gu)老的(de)(de)神(shen)(shen)(shen)經(jing)(jing)(jing)建(jian)模學(xue)(xue)(xue)會(hui)(hui)的(de)(de)檔案(an)期(qi)刊:國(guo)(guo)際神(shen)(shen)(shen)經(jing)(jing)(jing)網(wang)(wang)(wang)絡(luo)(luo)(luo)學(xue)(xue)(xue)會(hui)(hui)(INNS)、歐洲神(shen)(shen)(shen)經(jing)(jing)(jing)網(wang)(wang)(wang)絡(luo)(luo)(luo)學(xue)(xue)(xue)會(hui)(hui)(ENNS)和(he)(he)(he)日本神(shen)(shen)(shen)經(jing)(jing)(jing)網(wang)(wang)(wang)絡(luo)(luo)(luo)學(xue)(xue)(xue)會(hui)(hui)(JNNS)。神(shen)(shen)(shen)經(jing)(jing)(jing)網(wang)(wang)(wang)絡(luo)(luo)(luo)提(ti)供了一(yi)個論(lun)壇(tan),以發(fa)(fa)(fa)展和(he)(he)(he)培育(yu)一(yi)個國(guo)(guo)際社(she)會(hui)(hui)的(de)(de)學(xue)(xue)(xue)者和(he)(he)(he)實踐(jian)者感興趣(qu)的(de)(de)所有(you)方面的(de)(de)神(shen)(shen)(shen)經(jing)(jing)(jing)網(wang)(wang)(wang)絡(luo)(luo)(luo)和(he)(he)(he)相關方法(fa)的(de)(de)計(ji)算智(zhi)能。神(shen)(shen)(shen)經(jing)(jing)(jing)網(wang)(wang)(wang)絡(luo)(luo)(luo)歡迎高質量(liang)(liang)論(lun)文的(de)(de)提(ti)交(jiao),有(you)助于全面的(de)(de)神(shen)(shen)(shen)經(jing)(jing)(jing)網(wang)(wang)(wang)絡(luo)(luo)(luo)研究(jiu),從(cong)行為和(he)(he)(he)大腦建(jian)模,學(xue)(xue)(xue)習(xi)算法(fa),通過(guo)數學(xue)(xue)(xue)和(he)(he)(he)計(ji)算分析,系統的(de)(de)工程和(he)(he)(he)技(ji)(ji)術(shu)應(ying)(ying)用,大量(liang)(liang)使用神(shen)(shen)(shen)經(jing)(jing)(jing)網(wang)(wang)(wang)絡(luo)(luo)(luo)的(de)(de)概念和(he)(he)(he)技(ji)(ji)術(shu)。這一(yi)獨特而廣泛的(de)(de)范圍促進(jin)了生(sheng)物(wu)(wu)和(he)(he)(he)技(ji)(ji)術(shu)研究(jiu)之間(jian)的(de)(de)思(si)想交(jiao)流(liu),并有(you)助于促進(jin)對生(sheng)物(wu)(wu)啟發(fa)(fa)(fa)的(de)(de)計(ji)算智(zhi)能感興趣(qu)的(de)(de)跨學(xue)(xue)(xue)科(ke)(ke)社(she)區的(de)(de)發(fa)(fa)(fa)展。因(yin)此,神(shen)(shen)(shen)經(jing)(jing)(jing)網(wang)(wang)(wang)絡(luo)(luo)(luo)編委(wei)會(hui)(hui)代表(biao)的(de)(de)專家領域包括心理學(xue)(xue)(xue),神(shen)(shen)(shen)經(jing)(jing)(jing)生(sheng)物(wu)(wu)學(xue)(xue)(xue),計(ji)算機(ji)科(ke)(ke)學(xue)(xue)(xue),工程,數學(xue)(xue)(xue),物(wu)(wu)理。該(gai)雜志發(fa)(fa)(fa)表(biao)文章、信件(jian)和(he)(he)(he)評論(lun)以及給(gei)編輯的(de)(de)信件(jian)、社(she)論(lun)、時(shi)事(shi)、軟件(jian)調(diao)查和(he)(he)(he)專利信息。文章發(fa)(fa)(fa)表(biao)在(zai)五(wu)個部分之一(yi):認知科(ke)(ke)學(xue)(xue)(xue),神(shen)(shen)(shen)經(jing)(jing)(jing)科(ke)(ke)學(xue)(xue)(xue),學(xue)(xue)(xue)習(xi)系統,數學(xue)(xue)(xue)和(he)(he)(he)計(ji)算分析、工程和(he)(he)(he)應(ying)(ying)用。 官網(wang)(wang)(wang)地址(zhi):

Sequential recommendation (SR) is to accurately recommend a list of items for a user based on her current accessed ones. While new-coming users continuously arrive in the real world, one crucial task is to have inductive SR that can produce embeddings of users and items without re-training. Given user-item interactions can be extremely sparse, another critical task is to have transferable SR that can transfer the knowledge derived from one domain with rich data to another domain. In this work, we aim to present the holistic SR that simultaneously accommodates conventional, inductive, and transferable settings. We propose a novel deep learning-based model, Relational Temporal Attentive Graph Neural Networks (RetaGNN), for holistic SR. The main idea of RetaGNN is three-fold. First, to have inductive and transferable capabilities, we train a relational attentive GNN on the local subgraph extracted from a user-item pair, in which the learnable weight matrices are on various relations among users, items, and attributes, rather than nodes or edges. Second, long-term and short-term temporal patterns of user preferences are encoded by a proposed sequential self-attention mechanism. Third, a relation-aware regularization term is devised for better training of RetaGNN. Experiments conducted on MovieLens, Instagram, and Book-Crossing datasets exhibit that RetaGNN can outperform state-of-the-art methods under conventional, inductive, and transferable settings. The derived attention weights also bring model explainability.

Recently, neural networks have been widely used in e-commerce recommender systems, owing to the rapid development of deep learning. We formalize the recommender system as a sequential recommendation problem, intending to predict the next items that the user might be interacted with. Recent works usually give an overall embedding from a user's behavior sequence. However, a unified user embedding cannot reflect the user's multiple interests during a period. In this paper, we propose a novel controllable multi-interest framework for the sequential recommendation, called ComiRec. Our multi-interest module captures multiple interests from user behavior sequences, which can be exploited for retrieving candidate items from the large-scale item pool. These items are then fed into an aggregation module to obtain the overall recommendation. The aggregation module leverages a controllable factor to balance the recommendation accuracy and diversity. We conduct experiments for the sequential recommendation on two real-world datasets, Amazon and Taobao. Experimental results demonstrate that our framework achieves significant improvements over state-of-the-art models. Our framework has also been successfully deployed on the offline Alibaba distributed cloud platform.

The chronological order of user-item interactions can reveal time-evolving and sequential user behaviors in many recommender systems. The items that users will interact with may depend on the items accessed in the past. However, the substantial increase of users and items makes sequential recommender systems still face non-trivial challenges: (1) the hardness of modeling the short-term user interests; (2) the difficulty of capturing the long-term user interests; (3) the effective modeling of item co-occurrence patterns. To tackle these challenges, we propose a memory augmented graph neural network (MA-GNN) to capture both the long- and short-term user interests. Specifically, we apply a graph neural network to model the item contextual information within a short-term period and utilize a shared memory network to capture the long-range dependencies between items. In addition to the modeling of user interests, we employ a bilinear function to capture the co-occurrence patterns of related items. We extensively evaluate our model on five real-world datasets, comparing with several state-of-the-art methods and using a variety of performance metrics. The experimental results demonstrate the effectiveness of our model for the task of Top-K sequential recommendation.

Knowledge graphs capture structured information and relations between a set of entities or items. As such they represent an attractive source of information that could help improve recommender systems. However existing approaches in this domain rely on manual feature engineering and do not allow for end-to-end training. Here we propose knowledge-aware graph neural networks with label smoothness regularization to provide better recommendations. Conceptually, our approach computes user-specific item embeddings by first applying a trainable function that identifies important knowledge graph relationships for a given user. This way we transform the knowledge graph into a user-specific weighted graph and then applies a graph neural network to compute personalized item embeddings. To provide better inductive bias, we use label smoothness, which assumes that adjacent items in the knowledge graph are likely to have similar user relevance labels/scores. Label smoothness provides regularization over edge weights and we prove that it is equivalent to a label propagation scheme on a graph. Finally, we combine knowledge-aware graph neural networks and label smoothness and present the unified model. Experiment results show that our method outperforms strong baselines in four datasets. It also achieves strong performance in the scenario where user-item interactions are sparse.

Recent progress in deep learning is revolutionizing the healthcare domain including providing solutions to medication recommendations, especially recommending medication combination for patients with complex health conditions. Existing approaches either do not customize based on patient health history, or ignore existing knowledge on drug-drug interactions (DDI) that might lead to adverse outcomes. To fill this gap, we propose the Graph Augmented Memory Networks (GAMENet), which integrates the drug-drug interactions knowledge graph by a memory module implemented as a graph convolutional networks, and models longitudinal patient records as the query. It is trained end-to-end to provide safe and personalized recommendation of medication combination. We demonstrate the effectiveness and safety of GAMENet by comparing with several state-of-the-art methods on real EHR data. GAMENet outperformed all baselines in all effectiveness measures, and also achieved 3.60% DDI rate reduction from existing EHR data.

In this paper, we propose a novel sequence-aware recommendation model. Our model utilizes self-attention mechanism to infer the item-item relationship from user's historical interactions. With self-attention, it is able to estimate the relative weights of each item in user interaction trajectories to learn better representations for user's transient interests. The model is finally trained in a metric learning framework, taking both short-term and long-term intentions into consideration. Experiments on a wide range of datasets on different domains demonstrate that our approach outperforms the state-of-the-art by a wide margin.

Sentence simplification aims to simplify the content and structure of complex sentences, and thus make them easier to interpret for human readers, and easier to process for downstream NLP applications. Recent advances in neural machine translation have paved the way for novel approaches to the task. In this paper, we adapt an architecture with augmented memory capacities called Neural Semantic Encoders (Munkhdalai and Yu, 2017) for sentence simplification. Our experiments demonstrate the effectiveness of our approach on different simplification datasets, both in terms of automatic evaluation measures and human judgments.

Many recent state-of-the-art recommender systems such as D-ATT, TransNet and DeepCoNN exploit reviews for representation learning. This paper proposes a new neural architecture for recommendation with reviews. Our model operates on a multi-hierarchical paradigm and is based on the intuition that not all reviews are created equal, i.e., only a select few are important. The importance, however, should be dynamically inferred depending on the current target. To this end, we propose a review-by-review pointer-based learning scheme that extracts important reviews, subsequently matching them in a word-by-word fashion. This enables not only the most informative reviews to be utilized for prediction but also a deeper word-level interaction. Our pointer-based method operates with a novel gumbel-softmax based pointer mechanism that enables the incorporation of discrete vectors within differentiable neural architectures. Our pointer mechanism is co-attentive in nature, learning pointers which are co-dependent on user-item relationships. Finally, we propose a multi-pointer learning scheme that learns to combine multiple views of interactions between user and item. Overall, we demonstrate the effectiveness of our proposed model via extensive experiments on \textbf{24} benchmark datasets from Amazon and Yelp. Empirical results show that our approach significantly outperforms existing state-of-the-art, with up to 19% and 71% relative improvement when compared to TransNet and DeepCoNN respectively. We study the behavior of our multi-pointer learning mechanism, shedding light on evidence aggregation patterns in review-based recommender systems.

We propose a novel recommendation method based on tree. With user behavior data, the tree based model can capture user interests from coarse to fine, by traversing nodes top down and make decisions whether to pick up each node to user. Compared to traditional model-based methods like matrix factorization (MF), our tree based model does not have to fetch and estimate each item in the entire set. Instead, candidates are drawn from subsets corresponding to user's high-level interests, which is defined by the tree structure. Meanwhile, finding candidates from the entire corpus brings more novelty than content-based approaches like item-based collaborative filtering.Moreover, in this paper, we show that the tree structure can also act to refine user interests distribution, to benefit both training and prediction. The experimental results in both open dataset and Taobao display advertising dataset indicate that the proposed method outperforms existing methods.

Recommendation system is a common demand in daily life and matrix completion is a widely adopted technique for this task. However, most matrix completion methods lack semantic interpretation and usually result in weak-semantic recommendations. To this end, this paper proposes a $S$emantic $A$nalysis approach for $R$ecommendation systems $(SAR)$, which applies a two-level hierarchical generative process that assigns semantic properties and categories for user and item. $SAR$ learns semantic representations of users/items merely from user ratings on items, which offers a new path to recommendation by semantic matching with the learned representations. Extensive experiments demonstrate $SAR$ outperforms other state-of-the-art baselines substantially.

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