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Cross-lingual Entity Alignment with Incidental Supervision

机译:与偶然监督的交叉单调实体对齐

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Much research effort has been put to multilingual knowledge graph (KG) embedding methods to address the entity alignment task, which seeks to match entities in different language-specific KGs that refer to the same real-world object. Such methods are often hindered by the insufficiency of seed alignment provided between KGs. Therefore, we propose an incidentally supervised model, JEANS, which jointly represents multilingual KGs and text corpora in a shared embedding scheme, and seeks to improve entity alignment with incidental supervision signals from text. JEANS first deploys an entity grounding process to combine each KG with the monolingual text corpus. Then, two learning processes are conducted: (ⅰ) an embedding learning process to encode the KG and text of each language in one embedding space, and (ⅱ) a self-learning based alignment learning process to iteratively induce the matching of entities and that of lexemes between embeddings. Experiments on benchmark datasets show that JEANS leads to promising improvement on entity alignment with incidental supervision, and significantly outperforms state-of-the-art methods that solely rely on internal information of KGs.
机译:已经提出了多语言知识图(kg)嵌入方法来解决实体对齐任务的研究,该方法旨在匹配引用同一真实世界对象的不同语言特定kg的实体。这些方法通常受到在kgs之间提供的种子比对的不足的阻碍。因此,我们提出了一项偶然的监督模型,牛仔裤,其中共同嵌入方案中共同代表了多语种KGS和Text Corpora,并寻求将实体对齐与文本的附带监督信号改进。牛仔裤首先部署一个实体接地过程,以将每个kg与单语文本语料库组合。然后,进行了两个学习过程:(Ⅰ)嵌入学习过程,用于在一个嵌入空间中编码每种语言的KG和文本,(Ⅱ)基于自学习的对齐学习过程,以迭代地诱导实体的匹配嵌入之间的lexemes。基准数据集的实验表明,牛仔裤与偶然监督的实体对齐有望,明显优于依靠公斤的内部信息的最先进方法。

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