Sequential Decision-Making in Musical Intelligence
暫譯: 音樂智能中的序列決策制定

Liebman, Elad

  • 出版商: Springer
  • 出版日期: 2019-10-15
  • 售價: $4,480
  • 貴賓價: 9.5$4,256
  • 語言: 英文
  • 頁數: 206
  • 裝訂: Hardcover - also called cloth, retail trade, or trade
  • ISBN: 303030518X
  • ISBN-13: 9783030305185
  • 海外代購書籍(需單獨結帳)

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商品描述

Over the past 60 years, artificial intelligence has grown from an academic field of research to a ubiquitous array of tools used in everyday technology. Despite its many recent successes, certain meaningful facets of computational intelligence have yet to be thoroughly explored, such as a wide array of complex mental tasks that humans carry out easily, yet are difficult for computers to mimic. A prime example of a domain in which human intelligence thrives, but machine understanding is still fairly limited, is music. Over recent decades, many researchers have used computational tools to perform tasks like genre identification, music summarization, music database querying, and melodic segmentation. While these are all useful algorithmic solutions, we are still a long way from constructing complete music agents able to mimic (at least partially) the complexity with which humans approach music. One key aspect that hasn't been sufficiently studied is that of sequential decision-making in musical intelligence. Addressing this gap, the book focuses on two aspects of musical intelligence: music recommendation and multi-agent interaction in the context of music. Though motivated primarily by music-related tasks, and focusing largely on people's musical preferences, the work presented in this book also establishes that insights from music-specific case studies can also be applicable in other concrete social domains, such as content recommendation.Showing the generality of insights from musical data in other contexts provides evidence for the utility of music domains as testbeds for the development of general artificial intelligence techniques.Ultimately, this thesis demonstrates the overall value of taking a sequential decision-making approach in settings previously unexplored from this perspective.

商品描述(中文翻譯)

在過去的60年中,人工智慧從一個學術研究領域發展成為日常技術中無處不在的工具。儘管最近取得了許多成功,但某些計算智慧的重要面向仍未被徹底探索,例如人類輕鬆執行的各種複雜心理任務,卻對電腦來說難以模仿。音樂是一個典型的例子,在這個領域中,人類智慧蓬勃發展,但機器理解仍然相對有限。在過去幾十年中,許多研究者使用計算工具執行如音樂類型識別、音樂摘要、音樂資料庫查詢和旋律分段等任務。雖然這些都是有用的演算法解決方案,但我們距離構建能夠(至少部分)模仿人類處理音樂複雜性的完整音樂代理仍有很長的路要走。一個尚未充分研究的關鍵方面是音樂智慧中的序列決策制定。為了解決這一空白,本書專注於音樂智慧的兩個方面:音樂推薦和音樂背景下的多代理互動。雖然主要受到音樂相關任務的驅動,並且主要集中於人們的音樂偏好,但本書中提出的工作也確立了音樂特定案例研究的見解在其他具體社會領域(如內容推薦)中的適用性。在其他背景中展示音樂數據見解的普遍性,為音樂領域作為發展通用人工智慧技術的測試平台提供了證據。最終,本論文展示了在以往未從這一視角探索的環境中採取序列決策制定方法的整體價值。