LOFAって最強! 影響最大化アルゴリズムの話✨
タイトル & 超要約 LOFAで影響力爆上げ! オンラインで効率よく"いいね"を増やす方法だよ💖
ギャル的キラキラポイント✨ ● オンライン環境(ネット上) で、影響力を最大化するアルゴリズムってスゴくない?✨ ● 口コミ (クチコミ) 効果を狙う、マーケティングとかに使えるってことね! ● 賢く (かしこく) 選択して、無駄をなくすって、まさに"コスパ最強"じゃん?💸
詳細解説
リアルでの使いみちアイデア💡
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We study the problem of influence maximization (IM) in an online setting, where the goal is to select a subset of nodes$\unicode{x2014}$called the seed set$\unicode{x2014}$at each time step over a fixed time horizon, subject to a cardinality budget constraint, to maximize the expected cumulative influence. We operate under a full-bandit feedback model, where only the influence of the chosen seed set at each time step is observed, with no additional structural information about the network or diffusion process. It is well-established that the influence function is submodular, and existing algorithms exploit this property to achieve low regret. In this work, we leverage this property further and propose the Lazy Online Forward Algorithm (LOFA), which achieves a lower empirical regret. We conduct experiments on a real-world social network to demonstrate that LOFA achieves superior performance compared to existing bandit algorithms in terms of cumulative regret and instantaneous reward.