MicroAlgo Inc. Announces a Quantum Entanglement-Based Novel Training Algorithm — Entanglement-Assisted Training Algorithm for Supervised Quantum Classifiers
May 16 2025 - 8:00AM
Shenzhen, May. 16, 2025––MicroAlgo Inc. (the "Company" or
"MicroAlgo") (NASDAQ: MLGO), today announced the development
of a novel quantum entanglement-based training algorithm — the
Entanglement-Assisted Training Algorithm for Supervised Quantum
Classifiers. They also introduced a cost function based on Bell
inequalities, enabling the simultaneous encoding of errors from
multiple training samples. This breakthrough surpasses the
capability limits of traditional algorithms, offering an efficient
and widely applicable solution for supervised quantum
classifiers.The core of MicroAlgo's entanglement-assisted training
algorithm for supervised quantum classifiers lies in leveraging
quantum entanglement to construct a model capable of simultaneously
operating on multiple training samples and their corresponding
labels. Unlike traditional machine learning methods, quantum
classifiers can not only process information from individual
samples but also perform parallel processing of multiple samples in
quantum states, thereby significantly enhancing training
efficiency.The algorithm represents multiple training samples as
qubit vectors using quantum superposition, and encodes their label
information into quantum states through quantum gate operations.
Due to the entangled relationships between qubits, the classifier
can simultaneously operate on multiple samples at once. This
characteristic breaks away from the conventional sample-by-sample
processing paradigm, greatly improving both training speed and
classification performance.Furthermore, the algorithm introduces a
cost function based on Bell inequalities—an important theorem in
quantum mechanics that highlights the distinction between quantum
entanglement and classical information processing. By encoding
classification errors of multiple samples simultaneously into the
cost function, the optimization process is no longer limited to
individual sample errors but instead considers the collective
performance of multiple samples. This approach overcomes the local
optimization issues common in traditional algorithms and
significantly enhances classification accuracy.The implementation
of MicroAlgo's entanglement-assisted training algorithm for
supervised quantum classifiers relies on several core components of
current quantum computing technology: qubits, quantum gate
operations, and quantum measurement. With these fundamental
building blocks, the algorithm can efficiently process input data
on a quantum computer.Representation and Initialization of
Qubits: at the initial stage of the algorithm, the input
training samples are transformed into qubits. Each training sample
corresponds to one or more qubits, which are initialized into
specific quantum states. To enable entanglement, entangling
operations are performed between multiple qubits so that they can
collaboratively process sample data in the subsequent
steps.Construction of Quantum Entanglement: quantum
entanglement is one of the core features of quantum computing. In
this algorithm, training samples are arranged into an entangled
state, meaning that information between samples is shared and
processed through entanglement. This not only improves data
processing efficiency but also accelerates convergence during the
training process.Application of Bell Inequalities and Cost Function
Optimization: a key application of quantum entanglement
is in the use of Bell inequalities. In the algorithm, Bell
inequalities are employed to construct the cost function, with the
objective of minimizing classification errors. Unlike traditional
methods, this cost function simultaneously accounts for errors from
multiple samples, allowing the optimization process to focus on the
collective performance of all samples rather than optimizing on a
per-sample basis. Through rapid quantum algorithmic computation,
the cost function can be efficiently minimized to achieve optimal
classification results.Interpretation and Output of Classification
Results: finally, the algorithm outputs the classification
results through quantum measurement. In binary classification
tasks, the input training samples are divided into two categories,
while in multi-class tasks, they are assigned to multiple classes.
The advantage of quantum computing lies in its parallel processing
capability, enabling the system to complete complex classification
tasks in a significantly shorter amount of time.The greatest
advantage of this technology lies in its ability to leverage the
unique properties of quantum entanglement to parallelize the
training process across multiple training samples. This not only
accelerates the training speed but also effectively enhances
classification accuracy. Especially in problems involving large
datasets, traditional methods often face computational bottlenecks,
whereas quantum computing can easily overcome these limitations.In
addition, the cost function based on Bell's inequality is
theoretically more robust than traditional error minimization
methods. It can simultaneously handle the errors of multiple
training samples, thereby avoiding the local optimum problems that
may occur in conventional approaches. This makes the supervised
quantum classifier particularly effective in complex classification
tasks.However, quantum computing still faces many challenges. For
instance, the stability and computational scale of quantum
computers remain limiting factors. The number of qubits and their
error rates can both impact the practical performance of the
algorithms. Therefore, how to implement efficient algorithms on
existing quantum computing platforms remains a technical hurdle
that needs further breakthroughs.With the continuous advancement of
quantum computing technology, quantum machine learning is bound to
become a key direction for future technological innovation. The
entanglement-assisted training algorithm of the MicroAlgo
supervised quantum classifier opens up new possibilities in this
field. By integrating quantum entanglement with traditional
classification algorithms, this technology demonstrates great
potential in improving training efficiency and enhancing
classification accuracy. Although quantum computing still faces
numerous challenges, with ongoing progress in hardware and
deepening theoretical research, we have every reason to believe
that quantum computing will bring about a revolution in the field
of machine learning. In the future, quantum classifiers may not be
limited to traditional binary classification tasks—they could
potentially exhibit unparalleled advantages in even more complex
domains.
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.
Contact
MicroAlgo Inc.
Investor Relations
Email: ir@microalgor.com
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