北京時間10月8日下午5點45分,瑞典皇家科學院宣布將2024年諾貝爾物理學獎授予:John J. Hopfield、Geoffrey E. Hinton。
獲獎理由
2024年諾貝爾物理學獎授予“在人工神經網絡機器學習方面的基礎性發現和發明”(for foundational discoveries and inventions that enable machine learning with artificial neural networks)。
使用物理學訓練人工神經網絡
This year’s two Nobel Laureates in Physics have used tools from physics to develop methods that are the foundation of today’s powerful machine learning. John Hopfield created an associative memory that can store and reconstruct images and other types of patterns in data. Geoffrey Hinton invented a method that can autonomously find properties in data, and so perform tasks such as identifying specific elements in pictures.
When we talk about artificial intelligence, we often mean machine learning using artificial neural networks. This technology was originally inspired by the structure of the brain. In an artificial neural network, the brain’s neurons are represented by nodes that have different values. These nodes influence each other through con-nections that can be likened to synapses and which can be made stronger or weaker. The network is trained, for example by developing stronger connections between nodes with simultaneously high values. This year’s laureates have conducted important work with artificial neural networks from the 1980s onward.
John Hopfield invented a network that uses a method for saving and recreating patterns. We can imagine the nodes as pixels. The Hopfield network utilises physics that describes a material’s characteristics due to its atomic spin – a property that makes each atom a tiny magnet. The network as a whole is described in a manner equivalent to the energy in the spin system found in physics, and is trained by finding values for the connections between the nodes so that the saved images have low energy. When the Hopfield network is fed a distorted or incomplete image, it methodically works through the nodes and updates their values so the network’s energy falls. The network thus works stepwise to find the saved image that is most like the imperfect one it was fed with.
John Hopfield發明了一種用來保存和重建模式的網絡。我們可以把這些節點想象成像素。Hopfield網絡利用物理學來描述一種材料由于其原子自旋而產生的特性——這種特性使每個原子成為一個微小的磁鐵。網絡作為一個整體被描述為相當于物理學中發現的自旋系統中的能量,并通過尋找節點之間的連接值來訓練,這樣保存的圖像具有較低的能量。當網絡被輸入一個扭曲或不完整的圖像時,它有條不紊地通過節點并更新它們的值,使網絡的能量下降。因此,網絡逐步找到保存的最像它所提供的不完美的圖像。
Geoffrey Hinton used the Hopfield network as the foundation for a new network that uses a different method: the Boltzmann machine. This can learn to recognise characteristic elements in a given type of data. Hinton used tools from statistical physics, the science of systems built from many similar components. The machine is trained by feeding it examples that are very likely to arise when the machine is run. The Boltzmann machine can be used to classify images or create new examples of the type of pattern on which it was trained. Hinton has built upon this work, helping initiate the current explosive development of machine learning.
“The laureates’ work has already been of the greatest benefit. In physics we use artificial neural networks in a vast range of areas, such as developing new materials with specific properties,” says Ellen Moons, Chair of the Nobel Committee for Physics.
“獲獎者的工作已經有了最大的好處。在物理學領域,我們在許多領域使用人工神經網絡,比如開發具有特定特性的新材料,”諾貝爾物理學委員會主席 Ellen Moons說。
獲獎人詳細信息
John J. Hopfield, 1933年出生于美國伊利諾伊州芝加哥。1958年畢業于美國紐約州伊薩卡康奈爾大學博士。美國新澤西州普林斯頓大學教授。
Geoffrey E. Hinton, 1947年出生于英國倫敦。1978年獲得英國愛丁堡大學博士學位。加拿大多倫多大學教授。