The document is an email from {tookubo,msassano}@yahoo-corp.jp discussing two sections. Section 1 proposes a new text summarization method that creates summaries by extracting sentences using five criteria: importance, coverage, position, coherence and non-redundancy. Section 2.2.1 discusses evaluating the method using the IREX corpus from 2008, which contains 1,498 Chinese documents and their human-written summaries in English.
The key to the uniqueness of this group is in its composition. These are photographers and artists who live Russia, Russian artists living in the United States who, while having been assimilated into her culture, maintain cultural artistic ties to Russia, and also American artists, born and raised here. This cultural interplay allows for a wider dialog and cultural exchange and does not pass unnoticed by artistically interested people in both countries. The Russian resident members are selfless in their efforts at organizing the exhibitions there and acquainting the Russian audience with the work of contemporary American artists. It is interesting to note that these exhibitions take place not only in big cities, but also in provincial settings where they evoke a live response and gratitude from the viewers.
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2022/3/24に開催した「オンプレML基盤 on Kubernetes」の資料です。機械学習モデルの開発者が、よりモデルの開発にのみ集中できるようにすることを目指して開発している「LakeTahoe(レイクタホ)」について紹介します。
https://ml-kubernetes.connpass.com/event/239859/
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[1] B.J. Jansen, A. Spink, and T. Saracevic. Real life,
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