SHENZHEN, China, May 2, 2025
/PRNewswire/ -- MicroAlgo Inc. (the "Company" or "MicroAlgo")
(NASDAQ: MLGO) announced today
the launch of their latest classifier auto-optimization technology
based on Variational Quantum Algorithms (VQA). This technology
significantly reduces the complexity of parameter updates during
training through deep optimization of the core circuit, markedly
improving computational efficiency. Compared to other quantum
classifiers, this optimized model has lower complexity and
incorporates advanced regularization techniques, effectively
preventing model overfitting and enhancing the classifier's
generalization capability. The introduction of this technology
marks a significant step forward in the practical application of
quantum machine learning.
Traditional quantum classifiers can theoretically leverage the
advantages of quantum computing to accelerate machine learning
tasks, but they still face numerous challenges in practical
applications. Firstly, current mainstream quantum classifiers often
require deep quantum circuits to achieve efficient feature mapping,
which results in high optimization complexity for quantum
parameters during training. Additionally, as the volume of training
data increases, the computational load for parameter updates grows
rapidly, leading to prolonged training times and impacting the
model's practicality.
MicroAlgo's classifier auto-optimization technology
significantly reduces computational complexity through deep
optimization of the core circuit. This approach improves upon two
key aspects: circuit design and optimization algorithms. In terms
of circuit design, the technology adopts a streamlined quantum
circuit structure, reducing the number of quantum gates and thereby
lowering the consumption of computational resources. On the
optimization algorithm front, this classifier auto-optimization
model employs an innovative parameter update strategy, making
parameter adjustments more efficient and substantially accelerating
training speed.
In the training process of classifiers based on variational
quantum algorithms (VQA), parameter optimization is one of the most
critical steps. Generally, VQA classifiers rely on Parameterized
Quantum Circuits (PQC), where updating each parameter requires
computing gradients to adjust the circuit structure and minimize
the loss function. However, the deeper the quantum circuit, the
more complex the parameter space becomes, requiring optimization
algorithms to perform more iterations to achieve convergence.
Furthermore, uncertainties and noise in quantum measurements can
also affect the training process, making it difficult for the model
to optimize stably.
Traditional optimization methods often employ strategies such as
Stochastic Gradient Descent (SGD) or Variational Quantum Natural
Gradient (VQNG) to find optimal parameters. However, these methods
still face challenges such as high computational complexity, slow
convergence rates, and a tendency to get trapped in local optima.
Therefore, reducing the computational burden of parameter updates
and improving training stability have become key factors in
enhancing the performance of VQA classifiers.
MicroAlgo's classifier auto-optimization technology, based on
variational quantum algorithms, significantly reduces the
computational complexity of parameter updates through deep
optimization of the core circuit. It also incorporates innovative
regularization techniques to enhance the stability and
generalization capability of the training process. The core
breakthroughs of this technology include the following aspects:
Depth Optimization of Quantum Circuits to Reduce Computational
Complexity: In traditional VQA classifier designs, the number of
layers in the quantum circuit directly impacts computational
complexity. To lower computational costs, MicroAlgo employs an
Adaptive Circuit Pruning (ACP) method during optimization. This
approach dynamically adjusts the circuit structure, eliminating
redundant parameters while preserving the classifier's expressive
power. As a result, the number of parameters required during
training is significantly reduced, leading to a substantial
decrease in computational complexity.
Hamiltonian Transformation Optimization (HTO): Additionally,
MicroAlgo introduces an optimization method based on Hamiltonian
transformations. By altering the Hamiltonian representation of the
variational quantum circuit, this technique shortens the search
path within the parameter space, thereby improving optimization
efficiency. Experimental results demonstrate that this method can
reduce computational complexity by at least an order of magnitude
while maintaining classification accuracy.
Novel Regularization Strategy to Enhance Training Stability and
Generalization Capability: In classical machine learning,
regularization methods are widely used to prevent model
overfitting. In the realm of quantum machine learning, MicroAlgo
introduces a novel quantum regularization strategy called Quantum
Entanglement Regularization (QER). This method dynamically adjusts
the strength of quantum entanglement during training, preventing
the model from overfitting the training data and thereby improving
the classifier's generalization ability on unseen data.
Additionally, an optimization strategy based on the Energy
Landscape is incorporated, which adjusts the shape of the loss
function during training. This enables the optimization algorithm
to more quickly identify the global optimum, reducing the impact of
local optima.
Enhanced Noise Robustness for Real Quantum Computing
Environments: Given that current Noisy Intermediate-Scale Quantum
(NISQ) devices still exhibit significant noise levels, a model's
noise resilience is critical. To improve the classifier's
robustness, MicroAlgo proposes a technique based on Variational
Quantum Error Correction (VQEC). This method actively learns noise
patterns during training and adjusts circuit parameters to mitigate
noise effects. This strategy markedly enhances the classifier's
stability in noisy environments, making its performance on real
quantum devices more reliable.
MicroAlgo's classifier auto-optimization technology, based on
variational quantum algorithms, successfully reduces the
computational complexity of parameter updates through deep
optimization of the core circuit and the introduction of novel
regularization methods. This approach significantly boosts training
speed and generalization capability. This breakthrough technology
not only demonstrates its effectiveness in theory but also exhibits
superior performance in simulation experiments, laying a crucial
foundation for the advancement of quantum machine learning.
As quantum computing hardware continues to advance, this
technology will further expand its application domains in the
future, accelerating the practical implementation of quantum
intelligent computing and propelling quantum computing into a new
stage of real-world utility. In an era where quantum computing and
artificial intelligence converge, this innovation will undoubtedly
serve as a significant milestone in advancing the frontiers of
technology.
About MicroAlgo Inc.
MicroAlgo Inc. (the "MicroAlgo"), a Cayman
Islands exempted company, is dedicated to the development and
application of bespoke central processing algorithms. MicroAlgo
provides comprehensive solutions to customers by integrating
central processing algorithms with software or hardware, or both,
thereby helping them to increase the number of customers, improve
end-user satisfaction, achieve direct cost savings, reduce power
consumption, and achieve technical goals. The range of
MicroAlgo's services includes algorithm optimization,
accelerating computing power without the need for hardware
upgrades, lightweight data processing, and data intelligence
services. MicroAlgo's ability to efficiently deliver software and
hardware optimization to customers through bespoke central
processing algorithms serves as a driving force for MicroAlgo's
long-term development.
Forward-Looking Statements
This press release contains statements that may constitute
"forward-looking statements." Forward-looking statements are
subject to numerous conditions, many of which are beyond the
control of MicroAlgo, including those set forth in the Risk Factors
section of MicroAlgo's periodic reports on
Forms 10-K and 8-K filed with the SEC. Copies are
available on the SEC's website, www.sec.gov. Words such as
"expect," "estimate," "project," "budget," "forecast,"
"anticipate," "intend," "plan," "may," "will," "could," "should,"
"believes," "predicts," "potential," "continue," and similar
expressions are intended to identify such forward-looking
statements. These forward-looking statements include, without
limitation, MicroAlgo's expectations with respect to future
performance and anticipated financial impacts of the business
transaction.
MicroAlgo undertakes no obligation to update these statements
for revisions or changes after the date of this release, except as
may be required by law.
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SOURCE Microalgo.INC