scsk
Trader Sumitomo to acquire IT service firm SCSK
Sumitomo President Shingo Ueno says the evolution of generative artificial intelligence is transforming business operations across various fields. Trading house Sumitomo has announced its plan to make Tokyo-based major information technology service provider SCSK a wholly owned subsidiary through a takeover bid valued at some ¥882 billion ($5.77 billion). Sumitomo already holds a 50.6% equity stake in SCSK. The purchase price is set at ¥5,700 per share, according to the announcement on Wednesday, about 30% higher than SCSK's closing price of ¥4,334 on the same day. By fully acquiring SCSK, Sumitomo aims to improve management efficiency and strengthen its artificial intelligence business.
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Submodular Optimization with Submodular Cover and Submodular Knapsack Constraints
Iyer, Rishabh K., Bilmes, Jeff A.
We investigate two new optimization problems -- minimizing a submodular function subject to a submodular lower bound constraint (submodular cover) and maximizing a submodular function subject to a submodular upper bound constraint (submodular knapsack). We are motivated by a number of real-world applications in machine learning including sensor placement and data subset selection, which require maximizing a certain submodular function (like coverage or diversity) while simultaneously minimizing another (like cooperative cost). These problems are often posed as minimizing the difference between submodular functions [9, 25] which is in the worst case inapproximable. We show, however, that by phrasing these problems as constrained optimization, which is more natural for many applications, we achieve a number of bounded approximation guarantees. We also show that both these problems are closely related and an approximation algorithm solving one can be used to obtain an approximation guarantee for the other. We provide hardness results for both problems thus showing that our approximation factors are tight up to log-factors. Finally, we empirically demonstrate the performance and good scalability properties of our algorithms.
Submodular Optimization with Submodular Cover and Submodular Knapsack Constraints
We investigate two new optimization problems -- minimizing a submodular function subject to a submodular lower bound constraint (submodular cover) and maximizing a submodular function subject to a submodular upper bound constraint (submodular knapsack). We are motivated by a number of real-world applications in machine learning including sensor placement and data subset selection, which require maximizing a certain submodular function (like coverage or diversity) while simultaneously minimizing another (like cooperative cost). These problems are often posed as minimizing the difference between submodular functions [14, 37] which is in the worst case inapproximable. We show, however, that by phrasing these problems as constrained optimization, which is more natural for many applications, we achieve a number of bounded approximation guarantees. We also show that both these problems are closely related and an approximation algorithm solving one can be used to obtain an approximation guarantee for the other. We provide hardness results for both problems thus showing that our approximation factors are tight up to log-factors. Finally, we empirically demonstrate the performance and good scalability properties of our algorithms.
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